Ejemplo n.º 1
0
    def detect_image(self, image):
        start = timer()

        if self.model_image_size != (None, None):
            assert self.model_image_size[
                0] % 32 == 0, 'Multiples of 32 required'
            assert self.model_image_size[
                1] % 32 == 0, 'Multiples of 32 required'
            boxed_image = letterbox_image(
                image, tuple(reversed(self.model_image_size)))
        else:
            new_image_size = (image.width - (image.width % 32),
                              image.height - (image.height % 32))
            boxed_image = letterbox_image(image, new_image_size)
        image_data = np.array(boxed_image, dtype='float32')

        # print(image_data.shape)
        image_data /= 255.
        image_data = np.expand_dims(image_data, 0)  # Add batch dimension.

        out_boxes, out_scores, out_classes = self.sess.run(
            [self.boxes, self.scores, self.classes],
            feed_dict={
                self.yolo_model.input: image_data,
                self.input_image_shape: [image.size[1], image.size[0]],
                K.learning_phase(): 0
            })

        # print('Found {} boxes for {}'.format(len(out_boxes), 'img'))

        # font = ImageFont.truetype(font='font/FiraMono-Medium.otf',
        #             size=np.floor(3e-2 * image.size[1] + 0.5).astype('int32'))
        # thickness = (image.size[0] + image.size[1]) // 300

        return out_boxes, out_scores
Ejemplo n.º 2
0
def get_training_data(annotation_path,
                      data_path,
                      input_shape,
                      max_boxes=100,
                      load_previous=True):
    '''processes the data into standard shape
    annotation row format: image_file_path box1 box2 ... boxN
    box format: x_min,y_min,x_max,y_max,class_index (no space)
    '''
    if load_previous == True and os.path.isfile(data_path):
        data = np.load(data_path)
        print('Loading training data from ' + data_path)
        return data['image_data'], data['box_data']
    image_data = []
    box_data = []
    with open(annotation_path) as f:
        for line in f.readlines():
            line = line.split(' ')
            filename = line[0]
            image = Image.open(filename)
            boxed_image = letterbox_image(image, tuple(reversed(input_shape)))
            image_data.append(np.array(boxed_image, dtype='uint8'))

            boxes = np.zeros((max_boxes, 5), dtype='int32')
            for i, box in enumerate(line[1:]):
                if i < max_boxes:
                    boxes[i] = np.array(list(map(int, box.split(','))))
                else:
                    break
            image_size = np.array(image.size)
            input_size = np.array(input_shape[::-1])
            new_size = (image_size *
                        np.min(input_size / image_size)).astype('int32')
            boxes[:i + 1, 0:2] = (boxes[:i + 1, 0:2] * new_size / image_size +
                                  (input_size - new_size) / 2).astype('int32')
            boxes[:i + 1, 2:4] = (boxes[:i + 1, 2:4] * new_size / image_size +
                                  (input_size - new_size) / 2).astype('int32')
            box_data.append(boxes)
    image_data = np.array(image_data)
    box_data = np.array(box_data)
    np.savez(data_path, image_data=image_data, box_data=box_data)
    print('Saving training data into ' + data_path)
    return image_data, box_data
Ejemplo n.º 3
0
    def detect_image(self, image):
        start = timer()

        if self.model_image_size != (None, None):
            assert self.model_image_size[
                0] % 32 == 0, 'Multiples of 32 required'
            assert self.model_image_size[
                1] % 32 == 0, 'Multiples of 32 required'
            boxed_image = letterbox_image(
                image, tuple(reversed(self.model_image_size)))
        else:
            new_image_size = (image.width - (image.width % 32),
                              image.height - (image.height % 32))
            boxed_image = letterbox_image(image, new_image_size)
        image_data = np.array(boxed_image, dtype='float32')

        print(image_data.shape)
        image_data /= 255.
        image_data = np.expand_dims(image_data, 0)  # Add batch dimension.

        out_boxes, out_scores, out_classes = self.sess.run(
            [self.boxes, self.scores, self.classes],
            feed_dict={
                self.yolo_model.input: image_data,
                self.input_image_shape: [image.size[1], image.size[0]],
                K.learning_phase(): 0
            })

        print('Found {} boxes for {}'.format(len(out_boxes), 'img'))

        font = ImageFont.truetype(font='font/FiraMono-Medium.otf',
                                  size=np.floor(3e-2 * image.size[1] +
                                                0.5).astype('int32'))
        thickness = (image.size[0] + image.size[1]) // 300

        for i, c in reversed(list(enumerate(out_classes))):
            predicted_class = self.class_names[c]
            box = out_boxes[i]
            score = out_scores[i]

            label = '{} {:.2f}'.format(predicted_class, score)
            draw = ImageDraw.Draw(image)
            label_size = draw.textsize(label, font)

            top, left, bottom, right = box
            top = max(0, np.floor(top + 0.5).astype('int32'))
            left = max(0, np.floor(left + 0.5).astype('int32'))
            bottom = min(image.size[1], np.floor(bottom + 0.5).astype('int32'))
            right = min(image.size[0], np.floor(right + 0.5).astype('int32'))
            print(label, (left, top), (right, bottom))

            if top - label_size[1] >= 0:
                text_origin = np.array([left, top - label_size[1]])
            else:
                text_origin = np.array([left, top + 1])

            # My kingdom for a good redistributable image drawing library.
            for i in range(thickness):
                draw.rectangle([left + i, top + i, right - i, bottom - i],
                               outline=self.colors[c])
            draw.rectangle(
                [tuple(text_origin),
                 tuple(text_origin + label_size)],
                fill=self.colors[c])
            draw.text(text_origin, label, fill=(0, 0, 0), font=font)
            del draw

        end = timer()
        print(end - start)
        return image
Ejemplo n.º 4
0
    def detect_image(self, image, imageName):

        start = timer()

        if self.model_image_size != (None, None):  #图片大小预判断
            assert self.model_image_size[
                0] % 32 == 0, 'Multiples of 32 required'
            assert self.model_image_size[
                1] % 32 == 0, 'Multiples of 32 required'
            boxed_image = letterbox_image(
                image, tuple(reversed(self.model_image_size)))
        else:
            new_image_size = (image.width - (image.width % 32),
                              image.height - (image.height % 32))
            boxed_image = letterbox_image(image, new_image_size)
        image_data = np.array(boxed_image, dtype='float32')

        #print(image_data.shape)

        image_data /= 255.
        image_data = np.expand_dims(image_data, 0)  # Add batch dimension.

        #从model文件中获取boxes,scores,classes
        out_boxes, out_scores, out_classes = self.sess.run(
            [self.boxes, self.scores, self.classes],
            feed_dict={
                self.yolo_model.input: image_data,
                self.input_image_shape: [image.size[1], image.size[0]],
                K.learning_phase(): 0
            })
        print('Found {} boxes for {}'.format(len(out_boxes), 'img'))

        #这是我写的方法,如果找不到人脸,就打印一行
        if len(out_boxes) == 0:
            with open('text.txt', 'a') as file:
                Name = imageName
                file.write(Name + ".jpg" + ",can not detect any boxes.\n")

        #加载提示框的字体
        font = ImageFont.truetype(font='font/FiraMono-Medium.otf',
                                  size=np.floor(3e-2 * image.size[1] +
                                                0.5).astype('int32'))
        thickness = (image.size[0] + image.size[1]) // 300

        #对于每一个box
        for i, c in reversed(list(enumerate(out_classes))):
            predicted_class = self.class_names[c]
            box = out_boxes[i]
            score = out_scores[i]

            label = '{} {:.2f}'.format(predicted_class, score)
            #对灰度图像进行RGB转换,否则会报错
            image = image.convert('RGB')
            draw = ImageDraw.Draw(image)
            label_size = draw.textsize(label, font)

            top, left, bottom, right = box
            top = max(0, np.floor(top + 0.5).astype('int32'))
            left = max(0, np.floor(left + 0.5).astype('int32'))
            bottom = min(image.size[1], np.floor(bottom + 0.5).astype('int32'))
            right = min(image.size[0], np.floor(right + 0.5).astype('int32'))
            print(label, (left, top), (right, bottom))
            #这里返回的是每一个box的上下左右坐标值,位置对应之后打印到text.txt文件中
            with open('text.txt', 'a') as file:
                Name = imageName
                file.write(Name + ".jpg," + str(left) + "," + str(top) + "," +
                           str(right) + "," + str(bottom) + "\n")

            if top - label_size[1] >= 0:
                text_origin = np.array([left, top - label_size[1]])
            else:
                text_origin = np.array([left, top + 1])

            # My kingdom for a good redistributable image drawing library.
            for i in range(thickness):
                draw.rectangle([left + i, top + i, right - i, bottom - i],
                               outline=self.colors[c])
            draw.rectangle(
                [tuple(text_origin),
                 tuple(text_origin + label_size)],
                fill=self.colors[c])
            draw.text(text_origin, label, fill=(0, 0, 0), font=font)
            del draw

        end = timer()
        print(end - start)
        return image