示例#1
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def overfeatFeatures(image):
    image = imresize(image, (231, 231)).astype(np.float32)

    h = image.shape[0]
    w = image.shape[1]
    c = image.shape[2]

    # numpy loads image with colors as last dimension, transpose tensor
    image = image.reshape(w * h, c)
    image = image.transpose()
    image = image.reshape(c, h, w)
    # run overfeat on the image
    overfeat.fprop(image)
    features = overfeat.get_output(19).copy()
    return features
示例#2
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	def runForImage(self, input_img):
		image = imread(input_img)
		if len(image.shape) == 2:
			return 0
		h0 = image.shape[0]
		w0 = image.shape[1]
		d0 = float(min(h0, w0))
		if len(image.shape) == 2:
			pdb.set_trace()
			image = image[int(round((h0-d0)/2.)):int(round((h0-d0)/2.)+d0),
		              int(round((w0-d0)/2.)):int(round((w0-d0)/2.)+d0)]
		elif len(image.shape)== 3:
			image = image[int(round((h0-d0)/2.)):int(round((h0-d0)/2.)+d0),
		              int(round((w0-d0)/2.)):int(round((w0-d0)/2.)+d0),:]
		image = imresize(image, (self.height, self.width)).astype(numpy.float32)
		# numpy loads image with colors as last dimension, transpose tensor
		h = image.shape[0]
		w = image.shape[1]
		if len(image.shape) == 2:
			c = 1
			return
		elif len(image.shape)== 3:
			#pdb.set_trace()
			c = image.shape[2]	
		image = image.reshape(w*h, c)
		image = image.transpose()
		image = image.reshape(c, h, w)
		#print "Image size :", image.shape
		# run overfeat on the image
		self.outputAtLastLayer = overfeat.fprop(image)
		return 1
示例#3
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def extract_features(file_name):
    global X

    image = imread(file_name)
    image.resize((image.shape[0], image.shape[1], 1))

    # overfeat expects rgb, so replicate the grayscale values twice
    image = np.repeat(image, 3, 2)
    image = imresize(image, (231, 231)).astype(np.float32)

    # numpy loads image with colors as last dimension, so transpose tensor
    h = image.shape[0]
    w = image.shape[1]
    c = image.shape[2]
    image = image.reshape(w * h, c)
    image = image.transpose()
    image = image.reshape(c, h, w)

    b = overfeat.fprop(image)
    b = b.flatten()
    top = [(b[i], i) for i in xrange(len(b))]
    top.sort()
    klasses = [
        overfeat.get_class_name(top[-(i + 1)][1]) for i in xrange(len(top))
    ]
    X.append(klasses)
def extract_features(layer, file_name):
    global X

    image = imread(file_name)
    image.resize((image.shape[0], image.shape[1], 1))

    # overfeat expects rgb, so replicate the grayscale values twice
    image = np.repeat(image, 3, 2)
    image = imresize(image, (231, 231)).astype(np.float32)

    # numpy loads image with colors as last dimension, so transpose tensor
    h = image.shape[0]
    w = image.shape[1]
    c = image.shape[2]
    image = image.reshape(w * h, c)
    image = image.transpose()
    image = image.reshape(c, h, w)

    b = overfeat.fprop(image)
    b = b.flatten()
    x = overfeat.get_output(layer)

    # maxpooling
    x = np.amax(np.amax(x, 1), 1)
    x = x.reshape(x.shape[0], 1).T
    if X is None:
        X = x
    else:
        X = np.append(X, x, axis=0)
示例#5
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文件: overfeat.py 项目: 52nlp/nolearn
    def _compute_features(self, images):
        import overfeat  # soft dep

        features = []
        for image in images:
            image = self.prepare_image(image)
            overfeat.fprop(image)
            feat = overfeat.get_output(self.feature_layer)
            if self.merge == 'maxmean':
                feat = feat.max(2).mean(1)
            elif self.merge == 'meanmax':
                feat = feat.mean(2).max(1)
            else:
                feat = self.merge(feat)
            features.append(feat)
        return np.vstack(features)
示例#6
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    def _compute_features(self, images):
        import overfeat  # soft dep

        features = []
        for image in images:
            image = self.prepare_image(image)
            overfeat.fprop(image)
            feat = overfeat.get_output(self.feature_layer)
            if self.merge == 'maxmean':
                feat = feat.max(2).mean(1)
            elif self.merge == 'meanmax':
                feat = feat.mean(2).max(1)
            else:
                feat = self.merge(feat)
            features.append(feat)
        return np.vstack(features)
def getDictOfFeatures(directory, dirname):
    d = {}
    for filename in os.listdir(directory):
        if filename == ".directory":
            continue
        image = imread(os.path.join(directory, filename)).astype(numpy.float32)
        # numpy loads image with colors as last dimension, transpose tensor
        h = image.shape[0]
        w = image.shape[1]
        c = image.shape[2]
        image = image.reshape(w * h, c)
        image = image.transpose()
        image = image.reshape(c, h, w)
        # run overfeat on the image
        overfeat.fprop(image)
        features = overfeat.get_output(19)
        d[filename] = features.copy()
    pickle.dump(d, open(dirname + "_full.txt", "w"))
    return d
示例#8
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def get_overfeat_features(imgs, weights_path, typ, layer=None, cache=None):
    """Returns features at layer for given image(s) from OverFeat model.

    Small (fast) network: 22 layers
    Large (accurate) network: 25 layers

    Args:
        imgs:         Iterable of images each of shape (h,w,c)
        weights_path: Path to the OverFeat weights
        typ:          0 for small, 1 for large version of OverFeat
        layer:        The layer to extract features from
        cache:        Dict containing descs/other cached values
    """
    if cache is None:
        cache = {}
    if 'overfeat_descs' not in cache:
        # Initialize network
        print('Loading OverFeat ({}) model...'.format(typ))
        overfeat.init(weights_path, typ)
        # Determine feature layer if none specified
        if layer is None:
            if overfeat.get_n_layers() == 22:  # small
                layer = 19  # 16 also recommended
            else:  # large
                # Layer used by Zhang et al.
                layer = 22
        # Determine resize dim
        if typ == 0:
            resize = 231  # small network
        else:
            resize = 221  # large network
        # Allocate for feature descriptors
        descs = []
        # Run images through network
        print('Running images through OverFeat, extracting features '
              'at layer {}.'.format(layer))

        for idx, img in enumerate(imgs):
            if (idx + 1) % 100 == 0:
                print('Processing image {}...'.format(idx + 1))
            # Preprocess image
            img = overfeat_preprocess(img, resize)
            # Run through model
            _ = overfeat.fprop(img)
            # Retrieve feature output
            desc = overfeat.get_output(layer)
            descs.append(desc)
        # Free network
        overfeat.free()
        # NumPy-ify
        descs = np.asarray(descs)
        cache.update(overfeat_descs=descs)
    else:
        descs = cache['overfeat_descs']
    return descs, cache
def extract_overfeat(image_path):
    # if overfeat_initialized == None or not overfeat_initialized:

    #   overfeat_initialized = True
    print "Overfeat: ", image_path
    image = imread(image_path)
    print "Image shape: ", image.shape
    if len(image.shape) == 2 or image.shape[2] == 2:
        image = skimage.color.gray2rgb(image)
    elif image.shape[2] == 4:
        image_rgb = numpy.zeros((image.shape[0], image.shape[1], 3),
                                numpy.uint8)
        image_rgb[:, :, 0] = image[:, :, 0]
        image_rgb[:, :, 1] = image[:, :, 1]
        image_rgb[:, :, 2] = image[:, :, 2]
        image = image_rgb
    h0 = image.shape[0]
    w0 = image.shape[1]
    d0 = float(min(h0, w0))
    image = image[int(round((h0 - d0) / 2.)):int(round((h0 - d0) / 2.) + d0),
                  int(round((w0 - d0) / 2.)):int(round((w0 - d0) / 2.) +
                                                 d0), :]
    image = imresize(image, (231, 231)).astype(numpy.float32)
    #image = cv2.resize(image, (231, 231)).astype(numpy.float32)
    # numpy loads image with colors as last dimension, transpose tensor
    h = image.shape[0]
    w = image.shape[1]
    c = image.shape[2]
    image = image.reshape(w * h, c)
    image = image.transpose()
    image = image.reshape(c, h, w)
    print "Image size :", image.shape
    out_categories = overfeat.fprop(image)
    #layer 21,22,23
    layer_output = overfeat.get_output(20)
    print "Layer size: ", layer_output.shape
    layer_output = layer_output.flatten()
    descriptors = []
    descriptors.append(layer_output)
    out_categories = out_categories.flatten()
    top = [(out_categories[i], i) for i in xrange(len(out_categories))]
    top.sort()
    print "\nTop classes :"
    for i in xrange(5):
        print(overfeat.get_class_name(top[-(i + 1)][1]))

    return descriptors
def extract_overfeat(image_path):
  # if overfeat_initialized == None or not overfeat_initialized:
    
  #   overfeat_initialized = True
  print "Overfeat: ", image_path
  image = imread(image_path)
  print "Image shape: ", image.shape
  if len(image.shape) == 2 or image.shape[2] == 2:
    image = skimage.color.gray2rgb(image)
  elif image.shape[2] == 4:
    image_rgb = numpy.zeros((image.shape[0],image.shape[1], 3), numpy.uint8)
    image_rgb[:,:,0] = image[:,:,0]
    image_rgb[:,:,1] = image[:,:,1]
    image_rgb[:,:,2] = image[:,:,2]
    image = image_rgb
  h0 = image.shape[0]
  w0 = image.shape[1]
  d0 = float(min(h0, w0))
  image = image[int(round((h0-d0)/2.)):int(round((h0-d0)/2.)+d0),
              int(round((w0-d0)/2.)):int(round((w0-d0)/2.)+d0), :]
  image = imresize(image, (231, 231)).astype(numpy.float32)
  #image = cv2.resize(image, (231, 231)).astype(numpy.float32)
  # numpy loads image with colors as last dimension, transpose tensor
  h = image.shape[0]
  w = image.shape[1]
  c = image.shape[2]
  image = image.reshape(w*h, c)
  image = image.transpose()
  image = image.reshape(c, h, w)
  print "Image size :", image.shape
  out_categories = overfeat.fprop(image)
  #layer 21,22,23
  layer_output = overfeat.get_output(20)
  print "Layer size: ", layer_output.shape
  layer_output = layer_output.flatten()
  descriptors = []
  descriptors.append(layer_output)
  out_categories = out_categories.flatten()
  top = [(out_categories[i], i) for i in xrange(len(out_categories))]
  top.sort()
  print "\nTop classes :"
  for i in xrange(5):
      print(overfeat.get_class_name(top[-(i+1)][1]))
  
  return descriptors
示例#11
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def run_overfeat(image, layer=None):
    '''
    runs an image through overfeat. returns the 1,000-length likelihoods 
    vector and N-length layer in the net as copied and formatted numpy arrays.
    layer
        None: means return 4,096-length feature vector just prior to the output layer.
        int:  return that layer instead.
    '''
    if not layer:
        # get layer just before output layer
        feature_layer = overfeat.get_n_layers() - 2

    overfeat_likelihoods  = overfeat.fprop(image)
    overfeat_features     = overfeat.get_output(feature_layer)

    # flatten and copy. NOTE: copy() is intentional, don't delete.
    formatted_features    = copy(overfeat_features.flatten())
    formatted_likelihoods = copy(overfeat_likelihoods.flatten())
    return formatted_likelihoods, formatted_features
示例#12
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def run_overfeat(image, layer=None):
    '''
    runs an image through overfeat. returns the 1,000-length likelihoods 
    vector and N-length layer in the net as copied and formatted numpy arrays.
    layer
        None: means return 4,096-length feature vector just prior to the output layer.
        int:  return that layer instead.
    '''
    if not layer:
        # get layer just before output layer
        feature_layer = overfeat.get_n_layers() - 2

    overfeat_likelihoods = overfeat.fprop(image)
    overfeat_features = overfeat.get_output(feature_layer)

    # flatten and copy. NOTE: copy() is intentional, don't delete.
    formatted_features = copy(overfeat_features.flatten())
    formatted_likelihoods = copy(overfeat_likelihoods.flatten())
    return formatted_likelihoods, formatted_features
示例#13
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	def extract_feat(self, imgs, ftype):
		'''
			extract features
		'''
		if ftype is 'hog':
			
			from skimage.feature import hog
			L = np.sqrt(len(imgs[0])).astype(int)
			X_im = [imresize(arr.reshape((L, L)), (64, 64)) for arr in imgs]	
			pool = Pool(processes=8)
			X = pool.map(hog, X_im)
			pool.close()	
			return np.asarray(X)

		elif ftype is 'overfeat':

			overfeat.init('OverFeat/data/default/net_weight_0', 1)

			L = np.sqrt(len(imgs[0])).astype(int)
			imgs_color = [imresize(arr.reshape((L, L)), (231, 231)) for arr in imgs]

			if len(imgs_color[0].shape) != 3:
				cmap = pl.get_cmap('jet')
				imgs_color = [np.delete(cmap(im/255.), 3, 2) for im in imgs_color]

			imgs_roll = [im.transpose((2, 0, 1)).astype(np.float32) for im in imgs_color]

			feats = np.zeros((len(imgs_roll), 4096), dtype = float)
			for i in range(len(imgs_roll)):
				b = overfeat.fprop(imgs_roll[i])
				f22 = overfeat.get_output(22)
				f22 = np.asarray(f22).squeeze().astype(np.float)
				feats[i, :] = f22
			return feats 

		elif ftype is 'pix':

			return imgs 

		else:

			raise NameError('{0} is not implemented!'.format(ftype))
示例#14
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for net_type in net_types:
    timing_data[net_type] = {}
    for num_image in num_images:
        print("Timing %s for %s images" % (net_type, num_image))

        # OverFeat does not use caffe
        if net_type == 'OverFeat':

            overfeat.init(overfeat_root + 'data/default/net_weight_0', 0)

            start = time.clock()
            for i in range(num_image):

                image = smush_overfeat_images(training_images[i])

                b = overfeat.fprop(image)

            end = time.clock()
            elapsed = end - start
            print(elapsed)
            timing_data[net_type][num_image] = elapsed

        # Use caffe for all other models
        else:

            if user == 'ctnuser':
                caffe.set_mode_gpu()
            else:
                caffe.set_mode_cpu()

            if net_type == 'GoogLeNet':
示例#15
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文件: oversvm.py 项目: jamiis/oversvm
def process_through_net(photo, feature_layer=None):
    if not feature_layer:
        feature_layer = overfeat.get_n_layers() - 2
    likelihoods = copy(overfeat.fprop(photo).flatten())
    features    = copy(overfeat.get_output(feature_layer).flatten())
    return likelihoods, features
示例#16
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def overfeatFeatures(image):
    overfeat.fprop(image)
    features = overfeat.get_output(19).copy()
    return features
示例#17
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文件: sample.py 项目: CV-IP/OverFeat
# resize and crop into a 231x231 image
h0 = image.shape[0]
w0 = image.shape[1]
d0 = float(min(h0, w0))
image = image[int(round((h0-d0)/2.)):int(round((h0-d0)/2.)+d0),
              int(round((w0-d0)/2.)):int(round((w0-d0)/2.)+d0), :]
image = imresize(image, (231, 231)).astype(numpy.float32)

# numpy loads image with colors as last dimension, transpose tensor
h = image.shape[0]
w = image.shape[1]
c = image.shape[2]
image = image.reshape(w*h, c)
image = image.transpose()
image = image.reshape(c, h, w)
print "Image size :", image.shape

# initialize overfeat. Note that this takes time, so do it only once if possible
overfeat.init('../../data/default/net_weight_0', 0)

# run overfeat on the image
b = overfeat.fprop(image)

# display top 5 classes
b = b.flatten()
top = [(b[i], i) for i in xrange(len(b))]
top.sort()
print "\nTop classes :"
for i in xrange(5):
    print(overfeat.get_class_name(top[-(i+1)][1]))