def chapter_augmenters_allchannelshistogramequalization():
    fn_start = "contrast/allchannelshistogramequalization"

    aug = iaa.AllChannelsHistogramEqualization()
    run_and_save_augseq(fn_start + ".jpg",
                        aug,
                        [ia.quokka(size=(128, 128)) for _ in range(4 * 1)],
                        cols=4,
                        rows=1)

    aug = iaa.Alpha((0.0, 1.0), iaa.AllChannelsHistogramEqualization())
    run_and_save_augseq(fn_start + "_alpha.jpg",
                        aug,
                        [ia.quokka(size=(128, 128)) for _ in range(4 * 4)],
                        cols=4,
                        rows=4)
Ejemplo n.º 2
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    def __call__(self, sample):
        img, annot = sample.image, sample.annotation
        unique_labels = np.unique(
            annot[:, 4].astype('int').astype('str')).tolist()

        bbs = BoundingBoxesOnImage([
            BoundingBox(x1=ann[0],
                        y1=ann[1],
                        x2=ann[2],
                        y2=ann[3],
                        label=str(int(ann[4]))) for ann in annot
        ],
                                   shape=img.shape)
        aug = iaa.BlendAlphaBoundingBoxes(
            labels=unique_labels,
            foreground=iaa.AllChannelsHistogramEqualization())
        img_aug, bbs_aug = aug(image=(img * 255.).astype('uint8'),
                               bounding_boxes=bbs)
        img_aug = img_aug.astype('float32') / 255.
        annot_aug = np.array(
            [[bb.x1, bb.y1, bb.x2, bb.y2,
              np.float32(bb.label)] for bb in bbs_aug])
        # the shape has to be at least (0,5)
        if len(annot_aug) == 0:
            annot_aug = np.zeros((0, 5))
        sample.image = img_aug
        sample.annotation = annot_aug
 def build_augmentation_pipeline(self,
                                 height=None,
                                 width=None,
                                 apply_prob=0.5):
     sometimes = lambda aug: iaa.Sometimes(apply_prob, aug)
     pipeline = iaa.Sequential(random_order=False)
     cfg = self.cfg
     if cfg.get("fliplr", False):
         opt = cfg.get("fliplr", False)
         if type(opt) == int:
             pipeline.add(sometimes(iaa.Fliplr(opt)))
         else:
             pipeline.add(sometimes(iaa.Fliplr(0.5)))
     if cfg.get("rotation", False):
         opt = cfg.get("rotation", False)
         if type(opt) == int:
             pipeline.add(sometimes(iaa.Affine(rotate=(-opt, opt))))
         else:
             pipeline.add(sometimes(iaa.Affine(rotate=(-10, 10))))
     if cfg.get("hist_eq", False):
         pipeline.add(sometimes(iaa.AllChannelsHistogramEqualization()))
     if cfg.get("motion_blur", False):
         opts = cfg.get("motion_blur", False)
         if type(opts) == list:
             opts = dict(opts)
             pipeline.add(sometimes(iaa.MotionBlur(**opts)))
         else:
             pipeline.add(sometimes(iaa.MotionBlur(k=7, angle=(-90, 90))))
     if cfg.get("covering", False):
         pipeline.add(
             sometimes(
                 iaa.CoarseDropout(
                     (0, 0.02),
                     size_percent=(0.01, 0.05))))  # , per_channel=0.5)))
     if cfg.get("elastic_transform", False):
         pipeline.add(sometimes(iaa.ElasticTransformation(sigma=5)))
     if cfg.get("gaussian_noise", False):
         opt = cfg.get("gaussian_noise", False)
         if type(opt) == int or type(opt) == float:
             pipeline.add(
                 sometimes(
                     iaa.AdditiveGaussianNoise(loc=0,
                                               scale=(0.0, opt),
                                               per_channel=0.5)))
         else:
             pipeline.add(
                 sometimes(
                     iaa.AdditiveGaussianNoise(loc=0,
                                               scale=(0.0, 0.05 * 255),
                                               per_channel=0.5)))
     if height is not None and width is not None:
         pipeline.add(
             iaa.Sometimes(
                 cfg["cropratio"],
                 iaa.CropAndPad(percent=(-0.3, 0.1), keep_size=False),
             ))
         pipeline.add(iaa.Resize({"height": height, "width": width}))
     return pipeline
Ejemplo n.º 4
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def sub_policy_5():
    seq = Sequential_add_bbs_only([
        # 0 probability, do nothing
        iaa.Sometimes(0, iaa.Affine(
            translate_px={'x': -50, 'y': 0}
        )),
        # 0 probability, do nothing
        iaa.Sometimes(0, iaa.AllChannelsHistogramEqualization())
    ], bbox_only=[0, 0])
    return seq
Ejemplo n.º 5
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def equalise(_: int) -> iaa.AllChannelsHistogramEqualization:
    """
    Apply auto histogram equalisation to the image

    Tensorflow Policy Equivalent: equalize

    :type _: int
    :param _: unused magnitude
    :rtype: iaa.AllChannelsHistogramEqualization
    :return: Method to equalise image
    """
    return iaa.AllChannelsHistogramEqualization()
Ejemplo n.º 6
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 def __init__(self, dir_path, batch_size, img_set, shuffle=True):
     self.dir_path = dir_path
     self.batch_size = batch_size
     self.img_set = img_set
     self.shuffle = shuffle
     self.seq = iaa.Sequential([
         iaa.Fliplr(0.5),
         iaa.Flipud(0.5),
         iaa.Rot90(k=[0, 1, 2, 3]),
         # iaa.CropAndPad(percent=(-0.2, 0.2))
         iaa.AllChannelsHistogramEqualization()
     ])
     if self.shuffle == True:
         np.random.shuffle(self.img_set)
Ejemplo n.º 7
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    def build_augmentation_pipeline(self,
                                    height=None,
                                    width=None,
                                    apply_prob=0.5
                                   ):
        sometimes = lambda aug: iaa.Sometimes(apply_prob, aug)
        pipeline = iaa.Sequential(random_order=False)
        cfg = self.cfg
        if cfg.get('fliplr', False):
            opt = cfg.get('fliplr',False)
            if type(opt) == int:
                pipeline.add(sometimes(iaa.Fliplr(opt)))
            else:
                pipeline.add(sometimes(iaa.Fliplr(0.5)))
        if cfg.get('rotation', False):
            opt = cfg.get('rotation',False)
            if type(opt) == int:
                pipeline.add(sometimes(iaa.Affine(rotate=(-opt,opt))))
            else:
                pipeline.add(sometimes(iaa.Affine(rotate=(-10,10))))
        if cfg.get('motion_blur', False):
            opts = cfg.get('motion_blur', False)
            if type(opts) == list:
                opts = dict(opts)
                pipeline.add(sometimes(iaa.MotionBlur(**opts)))
            else:
                pipeline.add(sometimes(iaa.MotionBlur(k=7, angle=(-90, 90))))
        if cfg.get('covering', False):
            pipeline.add(sometimes(iaa.CoarseDropout(0.02, size_percent=0.3, per_channel=0.5)))
        if cfg.get('elastic_transform', False):
            pipeline.add(sometimes(iaa.ElasticTransformation(sigma=5)))
        if cfg.get('gaussian_noise', False):
            opt = cfg.get('gaussian_noise', False)
            if type(opt) == int or type(opt)==float:
                pipeline.add(sometimes(iaa.AdditiveGaussianNoise(loc=0, scale=(0.0, opt), per_channel=0.5)))
            else:
                pipeline.add(sometimes(iaa.AdditiveGaussianNoise(loc=0, scale=(0.0, 0.05*255), per_channel=0.5)))
        if cfg.get('grayscale', False):
            pipeline.add(sometimes(iaa.Grayscale(alpha=(0.5, 1.0))))

        if cfg.get('hist_eq', False):
            pipeline.add(sometimes(iaa.AllChannelsHistogramEqualization()))
        if height is not None and width is not None:
            if not cfg.get('crop_by', False):
                crop_by = 0.15
            else:
                crop_by = cfg.get('crop_by', False)
            pipeline.add(iaa.Sometimes(cfg.cropratio,iaa.CropAndPad(percent=(-crop_by, crop_by),keep_size=False)))
            pipeline.add(iaa.Resize({"height": height, "width": width}))
        return pipeline
Ejemplo n.º 8
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def main():
    parser = argparse.ArgumentParser(description="Contrast check script")
    parser.add_argument("--per_channel", dest="per_channel", action="store_true")
    args = parser.parse_args()

    augs = []
    for p in [0.25, 0.5, 1.0, 2.0, (0.5, 1.5), [0.5, 1.0, 1.5]]:
        augs.append(("GammaContrast " + str(p), iaa.GammaContrast(p, per_channel=args.per_channel)))

    for cutoff in [0.25, 0.5, 0.75]:
        for gain in [5, 10, 15, 20, 25]:
            augs.append(("SigmoidContrast " + str(cutoff) + " " + str(gain), iaa.SigmoidContrast(gain, cutoff, per_channel=args.per_channel)))

    for gain in [0.0, 0.25, 0.5, 1.0, 2.0, (0.5, 1.5), [0.5, 1.0, 1.5]]:
        augs.append(("LogContrast " + str(gain), iaa.LogContrast(gain, per_channel=args.per_channel)))

    for alpha in [-1.0, 0.5, 0, 0.5, 1.0, 2.0, (0.5, 1.5), [0.5, 1.0, 1.5]]:
        augs.append(("LinearContrast " + str(alpha), iaa.LinearContrast(alpha, per_channel=args.per_channel)))

    augs.append(("AllChannelsHistogramEqualization", iaa.AllChannelsHistogramEqualization()))
    augs.append(("HistogramEqualization (Lab)", iaa.HistogramEqualization(to_colorspace=iaa.HistogramEqualization.Lab)))
    augs.append(("HistogramEqualization (HSV)", iaa.HistogramEqualization(to_colorspace=iaa.HistogramEqualization.HSV)))
    augs.append(("HistogramEqualization (HLS)", iaa.HistogramEqualization(to_colorspace=iaa.HistogramEqualization.HLS)))

    for clip_limit in [0.1, 1, 5, 10]:
        for tile_grid_size_px in [3, 7]:
            augs.append(("AllChannelsCLAHE %d %dx%d" % (clip_limit, tile_grid_size_px, tile_grid_size_px),
                         iaa.AllChannelsCLAHE(clip_limit=clip_limit, tile_grid_size_px=tile_grid_size_px,
                                              per_channel=args.per_channel)))

    for clip_limit in [1, 5, 10, 100, 200]:
        for tile_grid_size_px in [3, 7, 15]:
            augs.append(("CLAHE %d %dx%d" % (clip_limit, tile_grid_size_px, tile_grid_size_px),
                         iaa.CLAHE(clip_limit=clip_limit, tile_grid_size_px=tile_grid_size_px)))

    images = [data.astronaut()] * 16
    images = ia.imresize_many_images(np.uint8(images), (128, 128))
    for name, aug in augs:
        print("-----------")
        print(name)
        print("-----------")
        images_aug = aug.augment_images(images)
        images_aug[0] = images[0]
        grid = ia.draw_grid(images_aug, rows=4, cols=4)
        ia.imshow(grid)
Ejemplo n.º 9
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    def random_aug(self, us_img, dpl_img):
        seq1 = iaa.Sequential([
            # apply the following augmenters to most images
            iaa.Fliplr(0.5),  # horizontally flip 50% of all images
        ])
        # iaa.Crop(px=(0, 16)),  # crop images from each side by 0 to 16px (randomly chosen)
        num1 = random.uniform(-0.1, 0.1)
        num1 = round(num1, 2)
        num2 = random.uniform(-0.1, 0.1)
        num2 = round(num2, 2)
        num3 = random.uniform(-0.1, 0.1)
        num3 = round(num3, 2)
        num4 = random.uniform(-0.1, 0.1)
        num4 = round(num4, 2)
        seq2 = iaa.Sequential(
            [iaa.CropAndPad(percent=(num1, num2, num3, num4), pad_cval=0)])
        seq3 = iaa.Sequential([
            # iaa.GaussianBlur(sigma=(0, 1.0)),  # blur images with a sigma of 0 to 3.0
            iaa.AllChannelsHistogramEqualization()
        ])

        seq4 = iaa.Sequential([
            iaa.Noop()
            # iaa.AllChannelsHistogramEqualization()
        ])

        seq5 = iaa.Sequential([
            iaa.Affine(
                rotate=(-45, 45),  # rotate by -45 to +45 degrees
            )
        ])

        seq6 = iaa.Sequential([
            iaa.AdditiveGaussianNoise(loc=0,
                                      scale=(0.0, 0.05 * 255),
                                      per_channel=0.5)
        ])

        seq_list = [seq1, seq4, seq5]
        seqs = random.sample(seq_list, 1)
        for seq in seqs:
            us_img = seq.augment_image(us_img)
            dpl_img = seq.augment_image(dpl_img)
        return us_img, dpl_img
Ejemplo n.º 10
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 def __init__(self):
     self.transform = iaa.Sequential(
         [
             iaa.Sometimes(
                 0.5,
                 iaa.SomeOf((1, 2), [
                     iaa.Fliplr(1.0),
                     iaa.Flipud(1.0),
                 ])),
             iaa.OneOf([
                 iaa.Sometimes(
                     0.3,
                     [
                         iaa.OneOf([
                             iaa.Multiply((0.7, 1.2)),
                             iaa.MultiplyElementwise((0.7, 1.2)),
                         ]),
                         iaa.OneOf([
                             iaa.MultiplySaturation((5.0, 10.0)),  # good
                             iaa.MultiplyHue((1.5, 3.0)),
                             iaa.LinearContrast((0.8, 2.0)),
                             iaa.AllChannelsHistogramEqualization(),
                         ]),
                     ]),
                 iaa.Sometimes(0.3, [
                     iaa.SomeOf((1, 2), [
                         iaa.pillike.EnhanceColor((1.1, 1.6)),
                         iaa.pillike.EnhanceSharpness((0.7, 1.6)),
                         iaa.pillike.Autocontrast(cutoff=(4, 8)),
                         iaa.MultiplySaturation((1.2, 5.1)),
                     ])
                 ])
             ]),
             iaa.Sometimes(0.3, [
                 iaa.Dropout(p=(0.01, 0.09)),
                 iaa.GaussianBlur((0.4, 1.5)),
             ]),
         ],
         random_order=True  # apply the augmentations in random order
     )
Ejemplo n.º 11
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    def __call__(self, sample):
        img, annot = sample['img'], sample['annot']

        bbs = BoundingBoxesOnImage([
            BoundingBox(x1=ann[0],
                        y1=ann[1],
                        x2=ann[2],
                        y2=ann[3],
                        label=str(int(ann[4]))) for ann in annot
        ],
                                   shape=img.shape)
        aug = iaa.AllChannelsHistogramEqualization()
        img_aug, bbs_aug = aug(image=(img * 255.).astype('uint8'),
                               bounding_boxes=bbs)
        img_aug = img_aug.astype('float32') / 255.
        annot_aug = np.array(
            [[bb.x1, bb.y1, bb.x2, bb.y2,
              np.float32(bb.label)] for bb in bbs_aug])
        # the shape has to be at least (0,5)
        if len(annot_aug) == 0:
            annot_aug = np.zeros((0, 5))
        return {'img': img_aug, 'annot': annot_aug}
class AugmentationScheme:

    # Dictionary containing all possible augmentation functions
    Augmentations = {

        # Convert images to HSV, then increase each pixel's Hue (H), Saturation (S) or Value/lightness (V) [0, 1, 2]
        # value by an amount in between lo and hi:
        "HSV":
        lambda channel, lo, hi: iaa.WithColorspace(
            to_colorspace="HSV",
            from_colorspace="RGB",
            children=iaa.WithChannels(channel, iaa.Add((lo, hi)))),

        # The augmenter first transforms images to HSV color space, then adds random values (lo to hi)
        # to the H and S channels and afterwards converts back to RGB.
        # (independently per channel and the same value for all pixels within that channel)
        "Add_To_Hue_And_Saturation":
        lambda lo, hi: iaa.AddToHueAndSaturation((lo, hi), per_channel=True),

        # Increase each pixel’s channel-value (redness/greenness/blueness) [0, 1, 2] by value in between lo and hi:
        "Increase_Channel":
        lambda channel, lo, hi: iaa.WithChannels(channel, iaa.Add((lo, hi))),
        # Rotate each image’s channel [R=0, G=1, B=2] by value in between lo and hi degrees:
        "Rotate_Channel":
        lambda channel, lo, hi: iaa.WithChannels(channel,
                                                 iaa.Affine(rotate=(lo, hi))),

        # Augmenter that never changes input images (“no operation”).
        "No_Operation":
        iaa.Noop(),

        # Pads images, i.e. adds columns/rows to them. Pads image by value in between lo and hi
        # percent relative to its original size (only accepts positive values in range[0, 1]):
        # If s_i is false, The value will be sampled once per image and used for all sides
        # (i.e. all sides gain/lose the same number of rows/columns)
        # NOTE: automatically resizes images back to their original size after it has augmented them.
        "Pad_Percent":
        lambda lo, hi, s_i: iaa.Pad(
            percent=(lo, hi), keep_size=True, sample_independently=s_i),

        # Pads images by a number of pixels between lo and hi
        # If s_i is false, The value will be sampled once per image and used for all sides
        # (i.e. all sides gain/lose the same number of rows/columns)
        "Pad_Pixels":
        lambda lo, hi, s_i: iaa.Pad(
            px=(lo, hi), keep_size=True, sample_independently=s_i),

        # Crops/cuts away pixels at the sides of the image.
        # Crops images by value in between lo and hi (only accepts positive values in range[0, 1]):
        # If s_i is false, The value will be sampled once per image and used for all sides
        # (i.e. all sides gain/lose the same number of rows/columns)
        # NOTE: automatically resizes images back to their original size after it has augmented them.
        "Crop_Percent":
        lambda lo, hi, s_i: iaa.Crop(
            percent=(lo, hi), keep_size=True, sample_independently=s_i),

        # Crops images by a number of pixels between lo and hi
        # If s_i is false, The value will be sampled once per image and used for all sides
        # (i.e. all sides gain/lose the same number of rows/columns)
        "Crop_Pixels":
        lambda lo, hi, s_i: iaa.Crop(
            px=(lo, hi), keep_size=True, sample_independently=s_i),

        # Flip/mirror percent (i.e 0.5) of the input images horizontally
        # The default probability is 0, so to flip all images, percent=1
        "Flip_lr":
        iaa.Fliplr(1),

        # Flip/mirror percent (i.e 0.5) of the input images vertically
        # The default probability is 0, so to flip all images, percent=1
        "Flip_ud":
        iaa.Flipud(1),

        # Completely or partially transform images to their superpixel representation.
        # Generate s_pix_lo to s_pix_hi superpixels per image. Replace each superpixel with a probability between
        # prob_lo and prob_hi with range[0, 1] (sampled once per image) by its average pixel color.
        "Superpixels":
        lambda prob_lo, prob_hi, s_pix_lo, s_pix_hi: iaa.Superpixels(
            p_replace=(prob_lo, prob_hi), n_segments=(s_pix_lo, s_pix_hi)),

        # Change images to grayscale and overlay them with the original image by varying strengths,
        # effectively removing alpha_lo to alpha_hi of the color:
        "Grayscale":
        lambda alpha_lo, alpha_hi: iaa.Grayscale(alpha=(alpha_lo, alpha_hi)),

        # Blur each image with a gaussian kernel with a sigma between sigma_lo and sigma_hi:
        "Gaussian_Blur":
        lambda sigma_lo, sigma_hi: iaa.GaussianBlur(sigma=(sigma_lo, sigma_hi)
                                                    ),

        # Blur each image using a mean over neighbourhoods that have random sizes,
        # which can vary between h_lo and h_hi in height and w_lo and w_hi in width:
        "Average_Blur":
        lambda h_lo, h_hi, w_lo, w_hi: iaa.AverageBlur(k=((h_lo, h_hi),
                                                          (w_lo, w_hi))),

        # Blur each image using a median over neighbourhoods that have a random size between lo x lo and hi x hi:
        "Median_Blur":
        lambda lo, hi: iaa.MedianBlur(k=(lo, hi)),

        # Sharpen an image, then overlay the results with the original using an alpha between alpha_lo and alpha_hi:
        "Sharpen":
        lambda alpha_lo, alpha_hi, lightness_lo, lightness_hi: iaa.
        Sharpen(alpha=(alpha_lo, alpha_hi),
                lightness=(lightness_lo, lightness_hi)),

        # Emboss an image, then overlay the results with the original using an alpha between alpha_lo and alpha_hi:
        "Emboss":
        lambda alpha_lo, alpha_hi, strength_lo, strength_hi: iaa.Emboss(
            alpha=(alpha_lo, alpha_hi), strength=(strength_lo, strength_hi)),

        # Detect edges in images, turning them into black and white images and
        # then overlay these with the original images using random alphas between alpha_lo and alpha_hi:
        "Detect_Edges":
        lambda alpha_lo, alpha_hi: iaa.EdgeDetect(alpha=(alpha_lo, alpha_hi)),

        # Detect edges having random directions between dir_lo and dir_hi (i.e (0.0, 1.0) = 0 to 360 degrees) in
        # images, turning the images into black and white versions and then overlay these with the original images
        # using random alphas between alpha_lo and alpha_hi:
        "Directed_edge_Detect":
        lambda alpha_lo, alpha_hi, dir_lo, dir_hi: iaa.DirectedEdgeDetect(
            alpha=(alpha_lo, alpha_hi), direction=(dir_lo, dir_hi)),

        # Add random values between lo and hi to images. In percent of all images the values differ per channel
        # (3 sampled value). In the rest of the images the value is the same for all channels:
        "Add":
        lambda lo, hi, percent: iaa.Add((lo, hi), per_channel=percent),

        # Adds random values between lo and hi to images, with each value being sampled per pixel.
        # In percent of all images the values differ per channel (3 sampled value). In the rest of the images
        # the value is the same for all channels:
        "Add_Element_Wise":
        lambda lo, hi, percent: iaa.AddElementwise(
            (lo, hi), per_channel=percent),

        # Add gaussian noise (aka white noise) to an image, sampled once per pixel from a normal
        # distribution N(0, s), where s is sampled per image and varies between lo and hi*255 for percent of all
        # images (sampled once for all channels) and sampled three (RGB) times (channel-wise)
        # for the rest from the same normal distribution:
        "Additive_Gaussian_Noise":
        lambda lo, hi, percent: iaa.AdditiveGaussianNoise(scale=(lo, hi),
                                                          per_channel=percent),

        # Multiply in percent of all images each pixel with random values between lo and hi and multiply
        # the pixels in the rest of the images channel-wise,
        # i.e. sample one multiplier independently per channel and pixel:
        "Multiply":
        lambda lo, hi, percent: iaa.Multiply((lo, hi), per_channel=percent),

        # Multiply values of pixels with possibly different values for neighbouring pixels,
        # making each pixel darker or brighter. Multiply each pixel with a random value between lo and hi:
        "Multiply_Element_Wise":
        lambda lo, hi, percent: iaa.MultiplyElementwise(
            (0.5, 1.5), per_channel=0.5),

        # Augmenter that sets a certain fraction of pixels in images to zero.
        # Sample per image a value p from the range lo<=p<=hi and then drop p percent of all pixels in the image
        # (i.e. convert them to black pixels), but do this independently per channel in percent of all images
        "Dropout":
        lambda lo, hi, percent: iaa.Dropout(p=(lo, hi), per_channel=percent),

        # Augmenter that sets rectangular areas within images to zero.
        # Drop d_lo to d_hi percent of all pixels by converting them to black pixels,
        # but do that on a lower-resolution version of the image that has s_lo to s_hi percent of the original size,
        # Also do this in percent of all images channel-wise, so that only the information of some
        # channels is set to 0 while others remain untouched:
        "Coarse_Dropout":
        lambda d_lo, d_hi, s_lo, s_hi, percent: iaa.CoarseDropout(
            (d_lo, d_hi), size_percent=(s_hi, s_hi), per_channel=percent),

        # Augmenter that inverts all values in images, i.e. sets a pixel from value v to 255-v.
        # For c_percent of all images, invert all pixels in these images channel-wise with probability=i_percent
        # (per image). In the rest of the images, invert i_percent of all channels:
        "Invert":
        lambda i_percent, c_percent: iaa.Invert(i_percent,
                                                per_channel=c_percent),

        # Augmenter that changes the contrast of images.
        # Normalize contrast by a factor of lo to hi, sampled randomly per image
        # and for percent of all images also independently per channel:
        "Contrast_Normalisation":
        lambda lo, hi, percent: iaa.ContrastNormalization(
            (lo, hi), per_channel=percent),

        # Scale images to a value of lo to hi percent of their original size but do this independently per axis:
        "Scale":
        lambda x_lo, x_hi, y_lo, y_hi: iaa.Affine(scale={
            "x": (x_lo, x_hi),
            "y": (y_lo, y_hi)
        }),

        # Translate images by lo to hi percent on x-axis and y-axis independently:
        "Translate_Percent":
        lambda x_lo, x_hi, y_lo, y_hi: iaa.Affine(translate_percent={
            "x": (x_lo, x_hi),
            "y": (y_lo, y_hi)
        }),

        # Translate images by lo to hi pixels on x-axis and y-axis independently:
        "Translate_Pixels":
        lambda x_lo, x_hi, y_lo, y_hi: iaa.Affine(translate_px={
            "x": (x_lo, x_hi),
            "y": (y_lo, y_hi)
        }),

        # Rotate images by lo to hi degrees:
        "Rotate":
        lambda lo, hi: iaa.Affine(rotate=(lo, hi)),

        # Shear images by lo to hi degrees:
        "Shear":
        lambda lo, hi: iaa.Affine(shear=(lo, hi)),

        # Augmenter that places a regular grid of points on an image and randomly moves the neighbourhood of
        # these point around via affine transformations. This leads to local distortions.
        # Distort images locally by moving points around, each with a distance v (percent relative to image size),
        # where v is sampled per point from N(0, z) z is sampled per image from the range lo to hi:
        "Piecewise_Affine":
        lambda lo, hi: iaa.PiecewiseAffine(scale=(lo, hi)),

        # Augmenter to transform images by moving pixels locally around using displacement fields.
        # Distort images locally by moving individual pixels around following a distortions field with
        # strength sigma_lo to sigma_hi. The strength of the movement is sampled per pixel from the range
        # alpha_lo to alpha_hi:
        "Elastic_Transformation":
        lambda alpha_lo, alpha_hi, sigma_lo, sigma_hi: iaa.
        ElasticTransformation(alpha=(alpha_lo, alpha_hi),
                              sigma=(sigma_lo, sigma_hi)),

        # Weather augmenters are computationally expensive and will not work effectively on certain data sets

        # Augmenter to draw clouds in images.
        "Clouds":
        iaa.Clouds(),

        # Augmenter to draw fog in images.
        "Fog":
        iaa.Fog(),

        # Augmenter to add falling snowflakes to images.
        "Snowflakes":
        iaa.Snowflakes(),

        # Replaces percent of all pixels in an image by either x or y
        "Replace_Element_Wise":
        lambda percent, x, y: iaa.ReplaceElementwise(percent, [x, y]),

        # Adds laplace noise (somewhere between gaussian and salt and peeper noise) to an image, sampled once per pixel
        # from a laplace distribution Laplace(0, s), where s is sampled per image and varies between lo and hi*255 for
        # percent of all images (sampled once for all channels) and sampled three (RGB) times (channel-wise)
        # for the rest from the same laplace distribution:
        "Additive_Laplace_Noise":
        lambda lo, hi, percent: iaa.AdditiveLaplaceNoise(scale=(lo, hi),
                                                         per_channel=percent),

        # Adds poisson noise (similar to gaussian but different distribution) to an image, sampled once per pixel from
        # a poisson distribution Poisson(s), where s is sampled per image and varies between lo and hi for percent of
        # all images (sampled once for all channels) and sampled three (RGB) times (channel-wise)
        # for the rest from the same poisson distribution:
        "Additive_Poisson_Noise":
        lambda lo, hi, percent: iaa.AdditivePoissonNoise(lam=(lo, hi),
                                                         per_channel=percent),

        # Adds salt and pepper noise to an image, i.e. some white-ish and black-ish pixels.
        # Replaces percent of all pixels with salt and pepper noise
        "Salt_And_Pepper":
        lambda percent: iaa.SaltAndPepper(percent),

        # Adds coarse salt and pepper noise to image, i.e. rectangles that contain noisy white-ish and black-ish pixels
        # Replaces percent of all pixels with salt/pepper in an image that has lo to hi percent of the input image size,
        # then upscales the results to the input image size, leading to large rectangular areas being replaced.
        "Coarse_Salt_And_Pepper":
        lambda percent, lo, hi: iaa.CoarseSaltAndPepper(percent,
                                                        size_percent=(lo, hi)),

        # Adds salt noise to an image, i.e white-ish pixels
        # Replaces percent of all pixels with salt noise
        "Salt":
        lambda percent: iaa.Salt(percent),

        # Adds coarse salt noise to image, i.e. rectangles that contain noisy white-ish pixels
        # Replaces percent of all pixels with salt in an image that has lo to hi percent of the input image size,
        # then upscales the results to the input image size, leading to large rectangular areas being replaced.
        "Coarse_Salt":
        lambda percent, lo, hi: iaa.CoarseSalt(percent, size_percent=(lo, hi)),

        # Adds Pepper noise to an image, i.e Black-ish pixels
        # Replaces percent of all pixels with Pepper noise
        "Pepper":
        lambda percent: iaa.Pepper(percent),

        # Adds coarse pepper noise to image, i.e. rectangles that contain noisy black-ish pixels
        # Replaces percent of all pixels with salt in an image that has lo to hi percent of the input image size,
        # then upscales the results to the input image size, leading to large rectangular areas being replaced.
        "Coarse_Pepper":
        lambda percent, lo, hi: iaa.CoarsePepper(percent,
                                                 size_percent=(lo, hi)),

        # In an alpha blending, two images are naively mixed. E.g. Let A be the foreground image, B be the background
        # image and a is the alpha value. Each pixel intensity is then computed as a * A_ij + (1-a) * B_ij.
        # Images passed in must be a numpy array of type (height, width, channel)
        "Blend_Alpha":
        lambda image_fg, image_bg, alpha: iaa.blend_alpha(
            image_fg, image_bg, alpha),

        # Blur/Denoise an image using a bilateral filter.
        # Bilateral filters blur homogeneous and textured areas, while trying to preserve edges.
        # Blurs all images using a bilateral filter with max distance d_lo to d_hi with ranges for sigma_colour
        # and sigma space being define by sc_lo/sc_hi and ss_lo/ss_hi
        "Bilateral_Blur":
        lambda d_lo, d_hi, sc_lo, sc_hi, ss_lo, ss_hi: iaa.BilateralBlur(
            d=(d_lo, d_hi),
            sigma_color=(sc_lo, sc_hi),
            sigma_space=(ss_lo, ss_hi)),

        # Augmenter that sharpens images and overlays the result with the original image.
        # Create a motion blur augmenter with kernel size of (kernel x kernel) and a blur angle of either x or y degrees
        # (randomly picked per image).
        "Motion_Blur":
        lambda kernel, x, y: iaa.MotionBlur(k=kernel, angle=[x, y]),

        # Augmenter to apply standard histogram equalization to images (similar to CLAHE)
        "Histogram_Equalization":
        iaa.HistogramEqualization(),

        # Augmenter to perform standard histogram equalization on images, applied to all channels of each input image
        "All_Channels_Histogram_Equalization":
        iaa.AllChannelsHistogramEqualization(),

        # Contrast Limited Adaptive Histogram Equalization (CLAHE). This augmenter applies CLAHE to images, a form of
        # histogram equalization that normalizes within local image patches.
        # Creates a CLAHE augmenter with clip limit uniformly sampled from [cl_lo..cl_hi], i.e. 1 is rather low contrast
        # and 50 is rather high contrast. Kernel sizes of SxS, where S is uniformly sampled from [t_lo..t_hi].
        # Sampling happens once per image. (Note: more parameters are available for further specification)
        "CLAHE":
        lambda cl_lo, cl_hi, t_lo, t_hi: iaa.CLAHE(
            clip_limit=(cl_lo, cl_hi), tile_grid_size_px=(t_lo, t_hi)),

        # Contrast Limited Adaptive Histogram Equalization (refer above), applied to all channels of the input images.
        # CLAHE performs histogram equalization within image patches, i.e. over local neighbourhoods
        "All_Channels_CLAHE":
        lambda cl_lo, cl_hi, t_lo, t_hi: iaa.AllChannelsCLAHE(
            clip_limit=(cl_lo, cl_hi), tile_grid_size_px=(t_lo, t_hi)),

        # Augmenter that changes the contrast of images using a unique formula (using gamma).
        # Multiplier for gamma function is between lo and hi,, sampled randomly per image (higher values darken image)
        # For percent of all images values are sampled independently per channel.
        "Gamma_Contrast":
        lambda lo, hi, percent: iaa.GammaContrast(
            (lo, hi), per_channel=percent),

        # Augmenter that changes the contrast of images using a unique formula (linear).
        # Multiplier for linear function is between lo and hi, sampled randomly per image
        # For percent of all images values are sampled independently per channel.
        "Linear_Contrast":
        lambda lo, hi, percent: iaa.LinearContrast(
            (lo, hi), per_channel=percent),

        # Augmenter that changes the contrast of images using a unique formula (using log).
        # Multiplier for log function is between lo and hi, sampled randomly per image.
        # For percent of all images values are sampled independently per channel.
        # Values around 1.0 lead to a contrast-adjusted images. Values above 1.0 quickly lead to partially broken
        # images due to exceeding the datatype’s value range.
        "Log_Contrast":
        lambda lo, hi, percent: iaa.LogContrast((lo, hi), per_channel=percent),

        # Augmenter that changes the contrast of images using a unique formula (sigmoid).
        # Multiplier for sigmoid function is between lo and hi, sampled randomly per image. c_lo and c_hi decide the
        # cutoff value that shifts the sigmoid function in horizontal direction (Higher values mean that the switch
        # from dark to light pixels happens later, i.e. the pixels will remain darker).
        # For percent of all images values are sampled independently per channel:
        "Sigmoid_Contrast":
        lambda lo, hi, c_lo, c_hi, percent: iaa.SigmoidContrast(
            (lo, hi), (c_lo, c_hi), per_channel=percent),

        # Augmenter that calls a custom (lambda) function for each batch of input image.
        # Extracts Canny Edges from images (refer to description in CO)
        # Good default values for min and max are 100 and 200
        'Custom_Canny_Edges':
        lambda min_val, max_val: iaa.Lambda(func_images=CO.Edges(
            min_value=min_val, max_value=max_val)),
    }

    # AugmentationScheme objects require images and labels.
    # 'augs' is a list that contains all data augmentations in the scheme
    def __init__(self):
        self.augs = [iaa.Flipud(1)]

    def __call__(self, image):
        image = np.array(image)
        aug_scheme = iaa.Sometimes(
            0.5,
            iaa.SomeOf(random.randrange(1,
                                        len(self.augs) + 1),
                       self.augs,
                       random_order=True))
        aug_img = self.aug_scheme.augment_image(image)
        # fixes negative strides
        aug_img = aug_img[..., ::1] - np.zeros_like(aug_img)
        return aug_img
Ejemplo n.º 13
0
 def __init__(self):
     self.imgaug_transform = iaa.AllChannelsHistogramEqualization()
     self.augmentor_op = Operations.HistogramEqualisation(probability=1)
Ejemplo n.º 14
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    def build_augmentation_pipeline(self,
                                    height=None,
                                    width=None,
                                    apply_prob=0.5):
        sometimes = lambda aug: iaa.Sometimes(apply_prob, aug)
        pipeline = iaa.Sequential(random_order=False)

        cfg = self.cfg
        if cfg["mirror"]:
            opt = cfg["mirror"]  # fliplr
            if type(opt) == int:
                pipeline.add(sometimes(iaa.Fliplr(opt)))
            else:
                pipeline.add(sometimes(iaa.Fliplr(0.5)))

        if cfg["rotation"] > 0:
            pipeline.add(
                iaa.Sometimes(
                    cfg["rotratio"],
                    iaa.Affine(rotate=(-cfg["rotation"], cfg["rotation"])),
                ))

        if cfg["motion_blur"]:
            opts = cfg["motion_blur_params"]
            pipeline.add(sometimes(iaa.MotionBlur(**opts)))

        if cfg["covering"]:
            pipeline.add(
                sometimes(
                    iaa.CoarseDropout(0.02, size_percent=0.3,
                                      per_channel=0.5)))

        if cfg["elastic_transform"]:
            pipeline.add(sometimes(iaa.ElasticTransformation(sigma=5)))

        if cfg.get("gaussian_noise", False):
            opt = cfg.get("gaussian_noise", False)
            if type(opt) == int or type(opt) == float:
                pipeline.add(
                    sometimes(
                        iaa.AdditiveGaussianNoise(loc=0,
                                                  scale=(0.0, opt),
                                                  per_channel=0.5)))
            else:
                pipeline.add(
                    sometimes(
                        iaa.AdditiveGaussianNoise(loc=0,
                                                  scale=(0.0, 0.05 * 255),
                                                  per_channel=0.5)))
        if cfg.get("grayscale", False):
            pipeline.add(sometimes(iaa.Grayscale(alpha=(0.5, 1.0))))

        def get_aug_param(cfg_value):
            if isinstance(cfg_value, dict):
                opt = cfg_value
            else:
                opt = {}
            return opt

        cfg_cnt = cfg.get("contrast", {})
        cfg_cnv = cfg.get("convolution", {})

        contrast_aug = ["histeq", "clahe", "gamma", "sigmoid", "log", "linear"]
        for aug in contrast_aug:
            aug_val = cfg_cnt.get(aug, False)
            cfg_cnt[aug] = aug_val
            if aug_val:
                cfg_cnt[aug + "ratio"] = cfg_cnt.get(aug + "ratio", 0.1)

        convolution_aug = ["sharpen", "emboss", "edge"]
        for aug in convolution_aug:
            aug_val = cfg_cnv.get(aug, False)
            cfg_cnv[aug] = aug_val
            if aug_val:
                cfg_cnv[aug + "ratio"] = cfg_cnv.get(aug + "ratio", 0.1)

        if cfg_cnt["histeq"]:
            opt = get_aug_param(cfg_cnt["histeq"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["histeqratio"],
                              iaa.AllChannelsHistogramEqualization(**opt)))

        if cfg_cnt["clahe"]:
            opt = get_aug_param(cfg_cnt["clahe"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["claheratio"],
                              iaa.AllChannelsCLAHE(**opt)))

        if cfg_cnt["log"]:
            opt = get_aug_param(cfg_cnt["log"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["logratio"], iaa.LogContrast(**opt)))

        if cfg_cnt["linear"]:
            opt = get_aug_param(cfg_cnt["linear"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["linearratio"],
                              iaa.LinearContrast(**opt)))

        if cfg_cnt["sigmoid"]:
            opt = get_aug_param(cfg_cnt["sigmoid"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["sigmoidratio"],
                              iaa.SigmoidContrast(**opt)))

        if cfg_cnt["gamma"]:
            opt = get_aug_param(cfg_cnt["gamma"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["gammaratio"], iaa.GammaContrast(**opt)))

        if cfg_cnv["sharpen"]:
            opt = get_aug_param(cfg_cnv["sharpen"])
            pipeline.add(
                iaa.Sometimes(cfg_cnv["sharpenratio"], iaa.Sharpen(**opt)))

        if cfg_cnv["emboss"]:
            opt = get_aug_param(cfg_cnv["emboss"])
            pipeline.add(
                iaa.Sometimes(cfg_cnv["embossratio"], iaa.Emboss(**opt)))

        if cfg_cnv["edge"]:
            opt = get_aug_param(cfg_cnv["edge"])
            pipeline.add(
                iaa.Sometimes(cfg_cnv["edgeratio"], iaa.EdgeDetect(**opt)))

        if height is not None and width is not None:
            if not cfg.get("crop_by", False):
                crop_by = 0.15
            else:
                crop_by = cfg.get("crop_by", False)
            pipeline.add(
                iaa.Sometimes(
                    cfg.get("cropratio", 0.4),
                    iaa.CropAndPad(percent=(-crop_by, crop_by),
                                   keep_size=False),
                ))
            pipeline.add(iaa.Resize({"height": height, "width": width}))
        return pipeline
Ejemplo n.º 15
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def augment(img_data, config, augment=True):
    assert 'filepath' in img_data
    assert 'bboxes' in img_data
    assert 'width' in img_data
    assert 'height' in img_data

    img_data_aug = copy.deepcopy(img_data)
    aug_list = []
    img = cv2.imread(img_data_aug['filepath'])

    if augment:
        rows, cols = img.shape[:2]
        #[START] Pallete Augmentation
        pallete_augmentation(img=img, img_data=img_data_aug, config=config)
        #[END] Pallete Augmentation

        if config.use_horizontal_flips and np.random.randint(0, 2) == 0:
            img = cv2.flip(img, 1)
            for bbox in img_data_aug['bboxes']:
                x1 = bbox['x1']
                x2 = bbox['x2']
                bbox['x2'] = cols - x1
                bbox['x1'] = cols - x2

        if config.use_vertical_flips and np.random.randint(0, 2) == 0:
            img = cv2.flip(img, 0)
            for bbox in img_data_aug['bboxes']:
                y1 = bbox['y1']
                y2 = bbox['y2']
                bbox['y2'] = rows - y1
                bbox['y1'] = rows - y2

        if config.rot_90:
            angle = np.random.choice([0, 90, 180, 270], 1)[0]
            if angle == 270:
                img = np.transpose(img, (1, 0, 2))
                img = cv2.flip(img, 0)
            elif angle == 180:
                img = cv2.flip(img, -1)
            elif angle == 90:
                img = np.transpose(img, (1, 0, 2))
                img = cv2.flip(img, 1)
            elif angle == 0:
                pass

            for bbox in img_data_aug['bboxes']:
                x1 = bbox['x1']
                x2 = bbox['x2']
                y1 = bbox['y1']
                y2 = bbox['y2']
                if angle == 270:
                    bbox['x1'] = y1
                    bbox['x2'] = y2
                    bbox['y1'] = cols - x2
                    bbox['y2'] = cols - x1
                elif angle == 180:
                    bbox['x2'] = cols - x1
                    bbox['x1'] = cols - x2
                    bbox['y2'] = rows - y1
                    bbox['y1'] = rows - y2
                elif angle == 90:
                    bbox['x1'] = rows - y2
                    bbox['x2'] = rows - y1
                    bbox['y1'] = x1
                    bbox['y2'] = x2
                elif angle == 0:
                    pass

        if config.color:
            aug_list.append(
                np.random.choice([
                    iaa.MultiplyHueAndSaturation((0.5, 1.5), per_channel=True),
                    iaa.AddToHueAndSaturation((-50, 50), per_channel=True),
                    iaa.KMeansColorQuantization(),
                    iaa.UniformColorQuantization(),
                    iaa.Grayscale(alpha=(0.0, 1.0))
                ]))

        if config.contrast:
            aug_list.append(
                np.random.choice([
                    iaa.GammaContrast((0.5, 2.0), per_channel=True),
                    iaa.SigmoidContrast(gain=(3, 10),
                                        cutoff=(0.4, 0.6),
                                        per_channel=True),
                    iaa.LogContrast(gain=(0.6, 1.4), per_channel=True),
                    iaa.LinearContrast((0.4, 1.6), per_channel=True),
                    iaa.AllChannelsCLAHE(clip_limit=(1, 10), per_channel=True),
                    iaa.AllChannelsHistogramEqualization(),
                    iaa.HistogramEqualization()
                ]))

        ## Augmentation
        aug = iaa.SomeOf((0, None), aug_list, random_order=True)
        seq = iaa.Sequential(aug)
        img = seq.augment_image(img)
        ##
    img_data_aug['width'] = img.shape[1]
    img_data_aug['height'] = img.shape[0]
    return img_data_aug, img
Ejemplo n.º 16
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     iaa.MultiplyAndAddToBrightness(mul=(0.3, 1.6), add=(-50, 50)),
     iaa.MultiplyHueAndSaturation((0.5, 1.5), per_channel=True),
     iaa.ChannelShuffle(0.5),
     iaa.RemoveSaturation(),
     iaa.Grayscale(alpha=(0.0, 1.0)),
     iaa.ChangeColorTemperature((1100, 35000)),
 ]),
 iaa.OneOf([
     iaa.MedianBlur(k=(3, 7)),
     iaa.BilateralBlur(
         d=(3, 10), sigma_color=(10, 250), sigma_space=(10, 250)),
     iaa.MotionBlur(k=(3, 9), angle=[-45, 45]),
     iaa.MeanShiftBlur(spatial_radius=(5.0, 10.0),
                       color_radius=(5.0, 10.0)),
     iaa.AllChannelsCLAHE(clip_limit=(1, 10)),
     iaa.AllChannelsHistogramEqualization(),
     iaa.GammaContrast((0.5, 1.5), per_channel=True),
     iaa.GammaContrast((0.5, 1.5)),
     iaa.SigmoidContrast(gain=(3, 10), cutoff=(0.4, 0.6), per_channel=True),
     iaa.SigmoidContrast(gain=(3, 10), cutoff=(0.4, 0.6)),
     iaa.HistogramEqualization(),
     iaa.Sharpen(alpha=0.5)
 ]),
 iaa.OneOf([
     iaa.AveragePooling([2, 3]),
     iaa.MaxPooling(([2, 3], [2, 3])),
 ]),
 iaa.OneOf([
     iaa.Clouds(),
     iaa.Snowflakes(flake_size=(0.1, 0.4), speed=(0.01, 0.05)),
     iaa.Rain(speed=(0.1, 0.3))
Ejemplo n.º 17
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    # Bilateral filters blur homogeneous and textured areas, while trying to preserve edges.
    # Blurs all images using a bilateral filter with max distance d_lo to d_hi with ranges for sigma_colour
    # and sigma space being define by sc_lo/sc_hi and ss_lo/ss_hi
    "Bilateral_Blur": lambda d_lo, d_hi, sc_lo, sc_hi, ss_lo, ss_hi:
    iaa.BilateralBlur(d=(d_lo, d_hi), sigma_color=(sc_lo, sc_hi), sigma_space=(ss_lo, ss_hi)),

    # Augmenter that sharpens images and overlays the result with the original image.
    # Create a motion blur augmenter with kernel size of (kernel x kernel) and a blur angle of either x or y degrees
    # (randomly picked per image).
    "Motion_Blur": lambda kernel, x, y: iaa.MotionBlur(k=kernel, angle=[x, y]),

    # Augmenter to apply standard histogram equalization to images (similar to CLAHE)
    "Histogram_Equalization": iaa.HistogramEqualization(),

    # Augmenter to perform standard histogram equalization on images, applied to all channels of each input image
    "All_Channels_Histogram_Equalization": iaa.AllChannelsHistogramEqualization(),

    # Contrast Limited Adaptive Histogram Equalization (CLAHE). This augmenter applies CLAHE to images, a form of
    # histogram equalization that normalizes within local image patches.
    # Creates a CLAHE augmenter with clip limit uniformly sampled from [cl_lo..cl_hi], i.e. 1 is rather low contrast
    # and 50 is rather high contrast. Kernel sizes of SxS, where S is uniformly sampled from [t_lo..t_hi].
    # Sampling happens once per image. (Note: more parameters are available for further specification)
    "CLAHE": lambda cl_lo, cl_hi, t_lo, t_hi: iaa.CLAHE(clip_limit=(cl_lo, cl_hi), tile_grid_size_px=(t_lo, t_hi)),

    # Contrast Limited Adaptive Histogram Equalization (refer above), applied to all channels of the input images.
    # CLAHE performs histogram equalization within image patches, i.e. over local neighbourhoods
    "All_Channels_CLAHE": lambda cl_lo, cl_hi, t_lo, t_hi:
    iaa.AllChannelsCLAHE(clip_limit=(cl_lo, cl_hi), tile_grid_size_px=(t_lo, t_hi)),

    # Augmenter that changes the contrast of images using a unique formula (using gamma).
    # Multiplier for gamma function is between lo and hi,, sampled randomly per image (higher values darken image)
Ejemplo n.º 18
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def transform(aug_type, magnitude, X):
    if aug_type == "crop":
        X_aug = iaa.Crop(px=(0, int(magnitude * 32))).augment_images(X)
    elif aug_type == "gaussian-blur":
        X_aug = iaa.GaussianBlur(sigma=(0, magnitude * 25.0)).augment_images(X)
    elif aug_type == "rotate":
        X_aug = iaa.Affine(rotate=(-180 * magnitude, 180 * magnitude)).augment_images(X)
    elif aug_type == "shear":
        X_aug = iaa.Affine(shear=(-90 * magnitude, 90 * magnitude)).augment_images(X)
    elif aug_type == "translate-x":
        X_aug = iaa.Affine(
            translate_percent={"x": (-magnitude, magnitude), "y": (0, 0)}
        ).augment_images(X)
    elif aug_type == "translate-y":
        X_aug = iaa.Affine(
            translate_percent={"x": (0, 0), "y": (-magnitude, magnitude)}
        ).augment_images(X)
    elif aug_type == "horizontal-flip":
        X_aug = iaa.Fliplr(magnitude).augment_images(X)
    elif aug_type == "vertical-flip":
        X_aug = iaa.Flipud(magnitude).augment_images(X)
    elif aug_type == "sharpen":
        X_aug = iaa.Sharpen(
            alpha=(0, 1.0), lightness=(0.50, 5 * magnitude)
        ).augment_images(X)
    elif aug_type == "emboss":
        X_aug = iaa.Emboss(
            alpha=(0, 1.0), strength=(0.0, 20.0 * magnitude)
        ).augment_images(X)
    elif aug_type == "additive-gaussian-noise":
        X_aug = iaa.AdditiveGaussianNoise(
            loc=0, scale=(0.0, magnitude * 255), per_channel=0.5
        ).augment_images(X)
    elif aug_type == "dropout":
        X_aug = iaa.Dropout(
            (0.01, max(0.011, magnitude)), per_channel=0.5
        ).augment_images(
            X
        )  # Dropout first argument should be smaller than second one
    elif aug_type == "coarse-dropout":
        X_aug = iaa.CoarseDropout(
            (0.03, 0.15), size_percent=(0.30, np.log10(magnitude * 3)), per_channel=0.2
        ).augment_images(X)
    elif aug_type == "gamma-contrast":
        X_norm = normalize(X)
        X_aug_norm = iaa.GammaContrast(magnitude * 1.75).augment_images(
            X_norm
        )  # needs 0-1 values
        X_aug = denormalize(X_aug_norm)
    elif aug_type == "brighten":
        X_aug = iaa.Add(
            (int(-40 * magnitude), int(40 * magnitude)), per_channel=0.5
        ).augment_images(
            X
        )  # brighten
    elif aug_type == "invert":
        X_aug = iaa.Invert(1.0).augment_images(X)  # magnitude not used
    elif aug_type == "fog":
        X_aug = iaa.Fog().augment_images(X)  # magnitude not used
    elif aug_type == "clouds":
        X_aug = iaa.Clouds().augment_images(X)  # magnitude not used
    elif aug_type == "histogram-equalize":
        X_aug = iaa.AllChannelsHistogramEqualization().augment_images(
            X
        )  # magnitude not used
    elif aug_type == "super-pixels":  # deprecated
        X_norm = normalize(X)
        X_norm2 = (X_norm * 2) - 1
        X_aug_norm2 = iaa.Superpixels(
            p_replace=(0, magnitude), n_segments=(100, 100)
        ).augment_images(X_norm2)
        X_aug_norm = (X_aug_norm2 + 1) / 2
        X_aug = denormalize(X_aug_norm)
    elif aug_type == "perspective-transform":
        X_norm = normalize(X)
        X_aug_norm = iaa.PerspectiveTransform(
            scale=(0.01, max(0.02, magnitude))
        ).augment_images(
            X_norm
        )  # first scale param must be larger
        np.clip(X_aug_norm, 0.0, 1.0, out=X_aug_norm)
        X_aug = denormalize(X_aug_norm)
    elif aug_type == "elastic-transform":  # deprecated
        X_norm = normalize(X)
        X_norm2 = (X_norm * 2) - 1
        X_aug_norm2 = iaa.ElasticTransformation(
            alpha=(0.0, max(0.5, magnitude * 300)), sigma=5.0
        ).augment_images(X_norm2)
        X_aug_norm = (X_aug_norm2 + 1) / 2
        X_aug = denormalize(X_aug_norm)
    elif aug_type == "add-to-hue-and-saturation":
        X_aug = iaa.AddToHueAndSaturation(
            (int(-45 * magnitude), int(45 * magnitude))
        ).augment_images(X)
    elif aug_type == "coarse-salt-pepper":
        X_aug = iaa.CoarseSaltAndPepper(p=0.2, size_percent=magnitude).augment_images(X)
    elif aug_type == "grayscale":
        X_aug = iaa.Grayscale(alpha=(0.0, magnitude)).augment_images(X)
    else:
        raise ValueError
    return X_aug
Ejemplo n.º 19
0
    def build_augmentation_pipeline(self, height=None, width=None, apply_prob=0.5):
        sometimes = lambda aug: iaa.Sometimes(apply_prob, aug)
        pipeline = iaa.Sequential(random_order=False)

        cfg = self.cfg
        if cfg.mirror:
            opt = cfg.mirror  # fliplr
            if type(opt) == int:
                pipeline.add(sometimes(iaa.Fliplr(opt)))
            else:
                pipeline.add(sometimes(iaa.Fliplr(0.5)))

        if cfg.rotation > 0:
            pipeline.add(
                iaa.Sometimes(
                    cfg.rotratio, iaa.Affine(rotate=(-cfg.rotation, cfg.rotation))
                )
            )

        if cfg.motion_blur:
            opts = cfg.motion_blur_params
            pipeline.add(sometimes(iaa.MotionBlur(**opts)))

        if cfg.covering:
            pipeline.add(
                sometimes(iaa.CoarseDropout(0.02, size_percent=0.3, per_channel=0.5))
            )

        if cfg.elastic_transform:
            pipeline.add(sometimes(iaa.ElasticTransformation(sigma=5)))

        if cfg.get("gaussian_noise", False):
            opt = cfg.get("gaussian_noise", False)
            if type(opt) == int or type(opt) == float:
                pipeline.add(
                    sometimes(
                        iaa.AdditiveGaussianNoise(
                            loc=0, scale=(0.0, opt), per_channel=0.5
                        )
                    )
                )
            else:
                pipeline.add(
                    sometimes(
                        iaa.AdditiveGaussianNoise(
                            loc=0, scale=(0.0, 0.05 * 255), per_channel=0.5
                        )
                    )
                )
        if cfg.get("grayscale", False):
            pipeline.add(sometimes(iaa.Grayscale(alpha=(0.5, 1.0))))

        if cfg.get("hist_eq", False):
            pipeline.add(sometimes(iaa.AllChannelsHistogramEqualization()))

        if height is not None and width is not None:
            if not cfg.get("crop_by", False):
                crop_by = 0.15
            else:
                crop_by = cfg.get("crop_by", False)
            pipeline.add(
                iaa.Sometimes(
                    cfg.get("cropratio", 0.4),
                    iaa.CropAndPad(percent=(-crop_by, crop_by), keep_size=False),
                )
            )
            pipeline.add(iaa.Resize({"height": height, "width": width}))
        return pipeline
Ejemplo n.º 20
0
    def build_augmentation_pipeline(self, apply_prob=0.5):
        cfg = self.cfg

        sometimes = lambda aug: iaa.Sometimes(apply_prob, aug)
        pipeline = iaa.Sequential(random_order=False)

        pre_resize = cfg.get("pre_resize")
        crop_sampling = cfg.get("crop_sampling", "hybrid")
        if pre_resize:
            width, height = pre_resize
            pipeline.add(iaa.Resize({"height": height, "width": width}))
            if crop_sampling == "none":
                self.default_size = width, height

        if crop_sampling != "none":
            # Add smart, keypoint-aware image cropping
            pipeline.add(iaa.PadToFixedSize(*self.default_size))
            pipeline.add(
                augmentation.KeypointAwareCropToFixedSize(
                    *self.default_size,
                    cfg.get("max_shift", 0.4),
                    crop_sampling,
                ))

        if cfg.get("fliplr", False):
            opt = cfg.get("fliplr", False)
            if type(opt) == int:
                pipeline.add(sometimes(iaa.Fliplr(opt)))
            else:
                pipeline.add(sometimes(iaa.Fliplr(0.5)))
        if cfg.get("rotation", False):
            opt = cfg.get("rotation", False)
            if type(opt) == int:
                pipeline.add(sometimes(iaa.Affine(rotate=(-opt, opt))))
            else:
                pipeline.add(sometimes(iaa.Affine(rotate=(-10, 10))))
        if cfg.get("hist_eq", False):
            pipeline.add(sometimes(iaa.AllChannelsHistogramEqualization()))
        if cfg.get("motion_blur", False):
            opts = cfg.get("motion_blur", False)
            if type(opts) == list:
                opts = dict(opts)
                pipeline.add(sometimes(iaa.MotionBlur(**opts)))
            else:
                pipeline.add(sometimes(iaa.MotionBlur(k=7, angle=(-90, 90))))
        if cfg.get("covering", False):
            pipeline.add(
                sometimes(
                    iaa.CoarseDropout(
                        (0, 0.02),
                        size_percent=(0.01, 0.05))))  # , per_channel=0.5)))
        if cfg.get("elastic_transform", False):
            pipeline.add(sometimes(iaa.ElasticTransformation(sigma=5)))
        if cfg.get("gaussian_noise", False):
            opt = cfg.get("gaussian_noise", False)
            if type(opt) == int or type(opt) == float:
                pipeline.add(
                    sometimes(
                        iaa.AdditiveGaussianNoise(loc=0,
                                                  scale=(0.0, opt),
                                                  per_channel=0.5)))
            else:
                pipeline.add(
                    sometimes(
                        iaa.AdditiveGaussianNoise(loc=0,
                                                  scale=(0.0, 0.05 * 255),
                                                  per_channel=0.5)))
        if cfg.get("grayscale", False):
            pipeline.add(sometimes(iaa.Grayscale(alpha=(0.5, 1.0))))

        def get_aug_param(cfg_value):
            if isinstance(cfg_value, dict):
                opt = cfg_value
            else:
                opt = {}
            return opt

        cfg_cnt = cfg.get("contrast", {})
        cfg_cnv = cfg.get("convolution", {})

        contrast_aug = ["histeq", "clahe", "gamma", "sigmoid", "log", "linear"]
        for aug in contrast_aug:
            aug_val = cfg_cnt.get(aug, False)
            cfg_cnt[aug] = aug_val
            if aug_val:
                cfg_cnt[aug + "ratio"] = cfg_cnt.get(aug + "ratio", 0.1)

        convolution_aug = ["sharpen", "emboss", "edge"]
        for aug in convolution_aug:
            aug_val = cfg_cnv.get(aug, False)
            cfg_cnv[aug] = aug_val
            if aug_val:
                cfg_cnv[aug + "ratio"] = cfg_cnv.get(aug + "ratio", 0.1)

        if cfg_cnt["histeq"]:
            opt = get_aug_param(cfg_cnt["histeq"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["histeqratio"],
                              iaa.AllChannelsHistogramEqualization(**opt)))

        if cfg_cnt["clahe"]:
            opt = get_aug_param(cfg_cnt["clahe"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["claheratio"],
                              iaa.AllChannelsCLAHE(**opt)))

        if cfg_cnt["log"]:
            opt = get_aug_param(cfg_cnt["log"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["logratio"], iaa.LogContrast(**opt)))

        if cfg_cnt["linear"]:
            opt = get_aug_param(cfg_cnt["linear"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["linearratio"],
                              iaa.LinearContrast(**opt)))

        if cfg_cnt["sigmoid"]:
            opt = get_aug_param(cfg_cnt["sigmoid"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["sigmoidratio"],
                              iaa.SigmoidContrast(**opt)))

        if cfg_cnt["gamma"]:
            opt = get_aug_param(cfg_cnt["gamma"])
            pipeline.add(
                iaa.Sometimes(cfg_cnt["gammaratio"], iaa.GammaContrast(**opt)))

        if cfg_cnv["sharpen"]:
            opt = get_aug_param(cfg_cnv["sharpen"])
            pipeline.add(
                iaa.Sometimes(cfg_cnv["sharpenratio"], iaa.Sharpen(**opt)))

        if cfg_cnv["emboss"]:
            opt = get_aug_param(cfg_cnv["emboss"])
            pipeline.add(
                iaa.Sometimes(cfg_cnv["embossratio"], iaa.Emboss(**opt)))

        if cfg_cnv["edge"]:
            opt = get_aug_param(cfg_cnv["edge"])
            pipeline.add(
                iaa.Sometimes(cfg_cnv["edgeratio"], iaa.EdgeDetect(**opt)))

        return pipeline
def perform_all_channel_histogram_equalization(x):
    x = iaa.AllChannelsHistogramEqualization().augment_image(x.astype(
        np.uint8))
    x = x.astype(float)
    return x
Ejemplo n.º 22
0
def create_augmenters(height, width, height_augmentable, width_augmentable,
                      only_augmenters):
    def lambda_func_images(images, random_state, parents, hooks):
        return images

    def lambda_func_heatmaps(heatmaps, random_state, parents, hooks):
        return heatmaps

    def lambda_func_keypoints(keypoints, random_state, parents, hooks):
        return keypoints

    def assertlambda_func_images(images, random_state, parents, hooks):
        return True

    def assertlambda_func_heatmaps(heatmaps, random_state, parents, hooks):
        return True

    def assertlambda_func_keypoints(keypoints, random_state, parents, hooks):
        return True

    augmenters_meta = [
        iaa.Sequential([iaa.Noop(), iaa.Noop()],
                       random_order=False,
                       name="Sequential_2xNoop"),
        iaa.Sequential([iaa.Noop(), iaa.Noop()],
                       random_order=True,
                       name="Sequential_2xNoop_random_order"),
        iaa.SomeOf((1, 3),
                   [iaa.Noop(), iaa.Noop(), iaa.Noop()],
                   random_order=False,
                   name="SomeOf_3xNoop"),
        iaa.SomeOf((1, 3),
                   [iaa.Noop(), iaa.Noop(), iaa.Noop()],
                   random_order=True,
                   name="SomeOf_3xNoop_random_order"),
        iaa.OneOf([iaa.Noop(), iaa.Noop(), iaa.Noop()], name="OneOf_3xNoop"),
        iaa.Sometimes(0.5, iaa.Noop(), name="Sometimes_Noop"),
        iaa.WithChannels([1, 2], iaa.Noop(), name="WithChannels_1_and_2_Noop"),
        iaa.Noop(name="Noop"),
        iaa.Lambda(func_images=lambda_func_images,
                   func_heatmaps=lambda_func_heatmaps,
                   func_keypoints=lambda_func_keypoints,
                   name="Lambda"),
        iaa.AssertLambda(func_images=assertlambda_func_images,
                         func_heatmaps=assertlambda_func_heatmaps,
                         func_keypoints=assertlambda_func_keypoints,
                         name="AssertLambda"),
        iaa.AssertShape((None, height_augmentable, width_augmentable, None),
                        name="AssertShape"),
        iaa.ChannelShuffle(0.5, name="ChannelShuffle")
    ]
    augmenters_arithmetic = [
        iaa.Add((-10, 10), name="Add"),
        iaa.AddElementwise((-10, 10), name="AddElementwise"),
        #iaa.AddElementwise((-500, 500), name="AddElementwise"),
        iaa.AdditiveGaussianNoise(scale=(5, 10), name="AdditiveGaussianNoise"),
        iaa.AdditiveLaplaceNoise(scale=(5, 10), name="AdditiveLaplaceNoise"),
        iaa.AdditivePoissonNoise(lam=(1, 5), name="AdditivePoissonNoise"),
        iaa.Multiply((0.5, 1.5), name="Multiply"),
        iaa.MultiplyElementwise((0.5, 1.5), name="MultiplyElementwise"),
        iaa.Dropout((0.01, 0.05), name="Dropout"),
        iaa.CoarseDropout((0.01, 0.05),
                          size_percent=(0.01, 0.1),
                          name="CoarseDropout"),
        iaa.ReplaceElementwise((0.01, 0.05), (0, 255),
                               name="ReplaceElementwise"),
        #iaa.ReplaceElementwise((0.95, 0.99), (0, 255), name="ReplaceElementwise"),
        iaa.SaltAndPepper((0.01, 0.05), name="SaltAndPepper"),
        iaa.ImpulseNoise((0.01, 0.05), name="ImpulseNoise"),
        iaa.CoarseSaltAndPepper((0.01, 0.05),
                                size_percent=(0.01, 0.1),
                                name="CoarseSaltAndPepper"),
        iaa.Salt((0.01, 0.05), name="Salt"),
        iaa.CoarseSalt((0.01, 0.05),
                       size_percent=(0.01, 0.1),
                       name="CoarseSalt"),
        iaa.Pepper((0.01, 0.05), name="Pepper"),
        iaa.CoarsePepper((0.01, 0.05),
                         size_percent=(0.01, 0.1),
                         name="CoarsePepper"),
        iaa.Invert(0.1, name="Invert"),
        # ContrastNormalization
        iaa.JpegCompression((50, 99), name="JpegCompression")
    ]
    augmenters_blend = [
        iaa.Alpha((0.01, 0.99), iaa.Noop(), name="Alpha"),
        iaa.AlphaElementwise((0.01, 0.99), iaa.Noop(),
                             name="AlphaElementwise"),
        iaa.SimplexNoiseAlpha(iaa.Noop(), name="SimplexNoiseAlpha"),
        iaa.FrequencyNoiseAlpha((-2.0, 2.0),
                                iaa.Noop(),
                                name="FrequencyNoiseAlpha")
    ]
    augmenters_blur = [
        iaa.GaussianBlur(sigma=(1.0, 5.0), name="GaussianBlur"),
        iaa.AverageBlur(k=(3, 11), name="AverageBlur"),
        iaa.MedianBlur(k=(3, 11), name="MedianBlur"),
        iaa.BilateralBlur(d=(3, 11), name="BilateralBlur"),
        iaa.MotionBlur(k=(3, 11), name="MotionBlur")
    ]
    augmenters_color = [
        # InColorspace (deprecated)
        iaa.WithColorspace(to_colorspace="HSV",
                           children=iaa.Noop(),
                           name="WithColorspace"),
        iaa.WithHueAndSaturation(children=iaa.Noop(),
                                 name="WithHueAndSaturation"),
        iaa.MultiplyHueAndSaturation((0.8, 1.2),
                                     name="MultiplyHueAndSaturation"),
        iaa.MultiplyHue((-1.0, 1.0), name="MultiplyHue"),
        iaa.MultiplySaturation((0.8, 1.2), name="MultiplySaturation"),
        iaa.AddToHueAndSaturation((-10, 10), name="AddToHueAndSaturation"),
        iaa.AddToHue((-10, 10), name="AddToHue"),
        iaa.AddToSaturation((-10, 10), name="AddToSaturation"),
        iaa.ChangeColorspace(to_colorspace="HSV", name="ChangeColorspace"),
        iaa.Grayscale((0.01, 0.99), name="Grayscale"),
        iaa.KMeansColorQuantization((2, 16), name="KMeansColorQuantization"),
        iaa.UniformColorQuantization((2, 16), name="UniformColorQuantization")
    ]
    augmenters_contrast = [
        iaa.GammaContrast(gamma=(0.5, 2.0), name="GammaContrast"),
        iaa.SigmoidContrast(gain=(5, 20),
                            cutoff=(0.25, 0.75),
                            name="SigmoidContrast"),
        iaa.LogContrast(gain=(0.7, 1.0), name="LogContrast"),
        iaa.LinearContrast((0.5, 1.5), name="LinearContrast"),
        iaa.AllChannelsCLAHE(clip_limit=(2, 10),
                             tile_grid_size_px=(3, 11),
                             name="AllChannelsCLAHE"),
        iaa.CLAHE(clip_limit=(2, 10),
                  tile_grid_size_px=(3, 11),
                  to_colorspace="HSV",
                  name="CLAHE"),
        iaa.AllChannelsHistogramEqualization(
            name="AllChannelsHistogramEqualization"),
        iaa.HistogramEqualization(to_colorspace="HSV",
                                  name="HistogramEqualization"),
    ]
    augmenters_convolutional = [
        iaa.Convolve(np.float32([[0, 0, 0], [0, 1, 0], [0, 0, 0]]),
                     name="Convolve_3x3"),
        iaa.Sharpen(alpha=(0.01, 0.99), lightness=(0.5, 2), name="Sharpen"),
        iaa.Emboss(alpha=(0.01, 0.99), strength=(0, 2), name="Emboss"),
        iaa.EdgeDetect(alpha=(0.01, 0.99), name="EdgeDetect"),
        iaa.DirectedEdgeDetect(alpha=(0.01, 0.99), name="DirectedEdgeDetect")
    ]
    augmenters_edges = [iaa.Canny(alpha=(0.01, 0.99), name="Canny")]
    augmenters_flip = [
        iaa.Fliplr(1.0, name="Fliplr"),
        iaa.Flipud(1.0, name="Flipud")
    ]
    augmenters_geometric = [
        iaa.Affine(scale=(0.9, 1.1),
                   translate_percent={
                       "x": (-0.05, 0.05),
                       "y": (-0.05, 0.05)
                   },
                   rotate=(-10, 10),
                   shear=(-10, 10),
                   order=0,
                   mode="constant",
                   cval=(0, 255),
                   name="Affine_order_0_constant"),
        iaa.Affine(scale=(0.9, 1.1),
                   translate_percent={
                       "x": (-0.05, 0.05),
                       "y": (-0.05, 0.05)
                   },
                   rotate=(-10, 10),
                   shear=(-10, 10),
                   order=1,
                   mode="constant",
                   cval=(0, 255),
                   name="Affine_order_1_constant"),
        iaa.Affine(scale=(0.9, 1.1),
                   translate_percent={
                       "x": (-0.05, 0.05),
                       "y": (-0.05, 0.05)
                   },
                   rotate=(-10, 10),
                   shear=(-10, 10),
                   order=3,
                   mode="constant",
                   cval=(0, 255),
                   name="Affine_order_3_constant"),
        iaa.Affine(scale=(0.9, 1.1),
                   translate_percent={
                       "x": (-0.05, 0.05),
                       "y": (-0.05, 0.05)
                   },
                   rotate=(-10, 10),
                   shear=(-10, 10),
                   order=1,
                   mode="edge",
                   cval=(0, 255),
                   name="Affine_order_1_edge"),
        iaa.Affine(scale=(0.9, 1.1),
                   translate_percent={
                       "x": (-0.05, 0.05),
                       "y": (-0.05, 0.05)
                   },
                   rotate=(-10, 10),
                   shear=(-10, 10),
                   order=1,
                   mode="constant",
                   cval=(0, 255),
                   backend="skimage",
                   name="Affine_order_1_constant_skimage"),
        # TODO AffineCv2
        iaa.PiecewiseAffine(scale=(0.01, 0.05),
                            nb_rows=4,
                            nb_cols=4,
                            order=1,
                            mode="constant",
                            name="PiecewiseAffine_4x4_order_1_constant"),
        iaa.PiecewiseAffine(scale=(0.01, 0.05),
                            nb_rows=4,
                            nb_cols=4,
                            order=0,
                            mode="constant",
                            name="PiecewiseAffine_4x4_order_0_constant"),
        iaa.PiecewiseAffine(scale=(0.01, 0.05),
                            nb_rows=4,
                            nb_cols=4,
                            order=1,
                            mode="edge",
                            name="PiecewiseAffine_4x4_order_1_edge"),
        iaa.PiecewiseAffine(scale=(0.01, 0.05),
                            nb_rows=8,
                            nb_cols=8,
                            order=1,
                            mode="constant",
                            name="PiecewiseAffine_8x8_order_1_constant"),
        iaa.PerspectiveTransform(scale=(0.01, 0.05),
                                 keep_size=False,
                                 name="PerspectiveTransform"),
        iaa.PerspectiveTransform(scale=(0.01, 0.05),
                                 keep_size=True,
                                 name="PerspectiveTransform_keep_size"),
        iaa.ElasticTransformation(
            alpha=(1, 10),
            sigma=(0.5, 1.5),
            order=0,
            mode="constant",
            cval=0,
            name="ElasticTransformation_order_0_constant"),
        iaa.ElasticTransformation(
            alpha=(1, 10),
            sigma=(0.5, 1.5),
            order=1,
            mode="constant",
            cval=0,
            name="ElasticTransformation_order_1_constant"),
        iaa.ElasticTransformation(
            alpha=(1, 10),
            sigma=(0.5, 1.5),
            order=1,
            mode="nearest",
            cval=0,
            name="ElasticTransformation_order_1_nearest"),
        iaa.ElasticTransformation(
            alpha=(1, 10),
            sigma=(0.5, 1.5),
            order=1,
            mode="reflect",
            cval=0,
            name="ElasticTransformation_order_1_reflect"),
        iaa.Rot90((1, 3), keep_size=False, name="Rot90"),
        iaa.Rot90((1, 3), keep_size=True, name="Rot90_keep_size")
    ]
    augmenters_pooling = [
        iaa.AveragePooling(kernel_size=(1, 16),
                           keep_size=False,
                           name="AveragePooling"),
        iaa.AveragePooling(kernel_size=(1, 16),
                           keep_size=True,
                           name="AveragePooling_keep_size"),
        iaa.MaxPooling(kernel_size=(1, 16), keep_size=False,
                       name="MaxPooling"),
        iaa.MaxPooling(kernel_size=(1, 16),
                       keep_size=True,
                       name="MaxPooling_keep_size"),
        iaa.MinPooling(kernel_size=(1, 16), keep_size=False,
                       name="MinPooling"),
        iaa.MinPooling(kernel_size=(1, 16),
                       keep_size=True,
                       name="MinPooling_keep_size"),
        iaa.MedianPooling(kernel_size=(1, 16),
                          keep_size=False,
                          name="MedianPooling"),
        iaa.MedianPooling(kernel_size=(1, 16),
                          keep_size=True,
                          name="MedianPooling_keep_size")
    ]
    augmenters_segmentation = [
        iaa.Superpixels(p_replace=(0.05, 1.0),
                        n_segments=(10, 100),
                        max_size=64,
                        interpolation="cubic",
                        name="Superpixels_max_size_64_cubic"),
        iaa.Superpixels(p_replace=(0.05, 1.0),
                        n_segments=(10, 100),
                        max_size=64,
                        interpolation="linear",
                        name="Superpixels_max_size_64_linear"),
        iaa.Superpixels(p_replace=(0.05, 1.0),
                        n_segments=(10, 100),
                        max_size=128,
                        interpolation="linear",
                        name="Superpixels_max_size_128_linear"),
        iaa.Superpixels(p_replace=(0.05, 1.0),
                        n_segments=(10, 100),
                        max_size=224,
                        interpolation="linear",
                        name="Superpixels_max_size_224_linear"),
        iaa.UniformVoronoi(n_points=(250, 1000), name="UniformVoronoi"),
        iaa.RegularGridVoronoi(n_rows=(16, 31),
                               n_cols=(16, 31),
                               name="RegularGridVoronoi"),
        iaa.RelativeRegularGridVoronoi(n_rows_frac=(0.07, 0.14),
                                       n_cols_frac=(0.07, 0.14),
                                       name="RelativeRegularGridVoronoi"),
    ]
    augmenters_size = [
        iaa.Resize((0.8, 1.2), interpolation="nearest", name="Resize_nearest"),
        iaa.Resize((0.8, 1.2), interpolation="linear", name="Resize_linear"),
        iaa.Resize((0.8, 1.2), interpolation="cubic", name="Resize_cubic"),
        iaa.CropAndPad(percent=(-0.2, 0.2),
                       pad_mode="constant",
                       pad_cval=(0, 255),
                       keep_size=False,
                       name="CropAndPad"),
        iaa.CropAndPad(percent=(-0.2, 0.2),
                       pad_mode="edge",
                       pad_cval=(0, 255),
                       keep_size=False,
                       name="CropAndPad_edge"),
        iaa.CropAndPad(percent=(-0.2, 0.2),
                       pad_mode="constant",
                       pad_cval=(0, 255),
                       name="CropAndPad_keep_size"),
        iaa.Pad(percent=(0.05, 0.2),
                pad_mode="constant",
                pad_cval=(0, 255),
                keep_size=False,
                name="Pad"),
        iaa.Pad(percent=(0.05, 0.2),
                pad_mode="edge",
                pad_cval=(0, 255),
                keep_size=False,
                name="Pad_edge"),
        iaa.Pad(percent=(0.05, 0.2),
                pad_mode="constant",
                pad_cval=(0, 255),
                name="Pad_keep_size"),
        iaa.Crop(percent=(0.05, 0.2), keep_size=False, name="Crop"),
        iaa.Crop(percent=(0.05, 0.2), name="Crop_keep_size"),
        iaa.PadToFixedSize(width=width + 10,
                           height=height + 10,
                           pad_mode="constant",
                           pad_cval=(0, 255),
                           name="PadToFixedSize"),
        iaa.CropToFixedSize(width=width - 10,
                            height=height - 10,
                            name="CropToFixedSize"),
        iaa.KeepSizeByResize(iaa.CropToFixedSize(height=height - 10,
                                                 width=width - 10),
                             interpolation="nearest",
                             name="KeepSizeByResize_CropToFixedSize_nearest"),
        iaa.KeepSizeByResize(iaa.CropToFixedSize(height=height - 10,
                                                 width=width - 10),
                             interpolation="linear",
                             name="KeepSizeByResize_CropToFixedSize_linear"),
        iaa.KeepSizeByResize(iaa.CropToFixedSize(height=height - 10,
                                                 width=width - 10),
                             interpolation="cubic",
                             name="KeepSizeByResize_CropToFixedSize_cubic"),
    ]
    augmenters_weather = [
        iaa.FastSnowyLandscape(lightness_threshold=(100, 255),
                               lightness_multiplier=(1.0, 4.0),
                               name="FastSnowyLandscape"),
        iaa.Clouds(name="Clouds"),
        iaa.Fog(name="Fog"),
        iaa.CloudLayer(intensity_mean=(196, 255),
                       intensity_freq_exponent=(-2.5, -2.0),
                       intensity_coarse_scale=10,
                       alpha_min=0,
                       alpha_multiplier=(0.25, 0.75),
                       alpha_size_px_max=(2, 8),
                       alpha_freq_exponent=(-2.5, -2.0),
                       sparsity=(0.8, 1.0),
                       density_multiplier=(0.5, 1.0),
                       name="CloudLayer"),
        iaa.Snowflakes(name="Snowflakes"),
        iaa.SnowflakesLayer(density=(0.005, 0.075),
                            density_uniformity=(0.3, 0.9),
                            flake_size=(0.2, 0.7),
                            flake_size_uniformity=(0.4, 0.8),
                            angle=(-30, 30),
                            speed=(0.007, 0.03),
                            blur_sigma_fraction=(0.0001, 0.001),
                            name="SnowflakesLayer")
    ]

    augmenters = (augmenters_meta + augmenters_arithmetic + augmenters_blend +
                  augmenters_blur + augmenters_color + augmenters_contrast +
                  augmenters_convolutional + augmenters_edges +
                  augmenters_flip + augmenters_geometric + augmenters_pooling +
                  augmenters_segmentation + augmenters_size +
                  augmenters_weather)

    if only_augmenters is not None:
        augmenters_reduced = []
        for augmenter in augmenters:
            if any([
                    re.search(pattern, augmenter.name)
                    for pattern in only_augmenters
            ]):
                augmenters_reduced.append(augmenter)
        augmenters = augmenters_reduced

    return augmenters
Ejemplo n.º 23
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        transformed_image = transform(image=image)

    elif augmentation == 'log_contrast':
        transform = iaa.LogContrast(gain=(0.6, 1.4))
        transformed_image = transform(image=image)

    elif augmentation == 'linear_contrast':
        transform = iaa.LinearContrast((0.4, 1.6))
        transformed_image = transform(image=image)

    elif augmentation == 'histogram_equalization':
        transform = iaa.HistogramEqualization()
        transformed_image = transform(image=image)

    elif augmentation == 'all_channels_he':
        transform = iaa.AllChannelsHistogramEqualization()
        transformed_image = transform(image=image)

    elif augmentation == 'all_channels_clahe':
        transform = iaa.AllChannelsCLAHE()
        transformed_image = transform(image=image)

    ## Compression

    elif augmentation == 'image_compression':
        transform = ImageCompression(always_apply=True, quality_lower=10)
        transformed_image = transform(image=image)['image']

    elif augmentation == 'downscale':
        transform = Downscale(always_apply=True)
        transformed_image = transform(image=image)['image']
Ejemplo n.º 24
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aug44 = iaa.AddToSaturation((-50, 50))
aug45 = iaa.Sequential([
    iaa.ChangeColorspace(from_colorspace="RGB", to_colorspace="HSV"),
    iaa.WithChannels(0, iaa.Add((50, 100))),
    iaa.ChangeColorspace(from_colorspace="HSV", to_colorspace="RGB")])
    
aug46 = iaa.Grayscale(alpha=(0.0, 1.0))
aug47 = iaa.ChangeColorTemperature((1100, 10000))
aug49 = iaa.UniformColorQuantization()
aug50 = iaa.UniformColorQuantizationToNBits()
aug51 = iaa.GammaContrast((0.5, 2.0), per_channel=True)
aug52 = iaa.SigmoidContrast(gain=(3, 10), cutoff=(0.4, 0.6), per_channel=True)
aug53 = iaa.LogContrast(gain=(0.6, 1.4), per_channel=True)
aug54 = iaa.LinearContrast((0.4, 1.6), per_channel=True)
# aug55 = iaa.AllChannelsCLAHE(clip_limit=(1, 10), per_channel=True)
aug56 = iaa.Alpha((0.0, 1.0), iaa.AllChannelsHistogramEqualization())
aug57 = iaa.HistogramEqualization(
    from_colorspace=iaa.HistogramEqualization.BGR,
    to_colorspace=iaa.HistogramEqualization.HSV)

aug58  = iaa.DirectedEdgeDetect(alpha=(0.0, 0.5), direction=(0.0, 0.5))
aug59 = iaa.Canny(
    alpha=(0.0, 0.3),
    colorizer=iaa.RandomColorsBinaryImageColorizer(
        color_true=255,
        color_false=0
    )
)

def aug_imgaug(aug, image):