Пример #1
0
def vgg_net(weights, image):
    layers = ('conv1_1', 'relu1_1', 'conv1_2', 'relu1_2', 'pool1', 'conv2_1',
              'relu2_1', 'conv2_2', 'relu2_2', 'pool2', 'conv3_1', 'relu3_1',
              'conv3_2', 'relu3_2', 'conv3_3', 'relu3_3', 'conv3_4', 'relu3_4',
              'pool3', 'conv4_1', 'relu4_1', 'conv4_2', 'relu4_2', 'conv4_3',
              'relu4_3', 'conv4_4', 'relu4_4', 'pool4', 'conv5_1', 'relu5_1',
              'conv5_2', 'relu5_2', 'conv5_3', 'relu5_3', 'conv5_4', 'relu5_4')

    net = {}
    current = image
    for i, name in enumerate(layers):
        kind = name[:4]
        if kind == 'conv':
            kernels, bias = weights[i][0][0][0][0]
            # matconvnet: weights are [width, height, in_channels, out_channels]
            # tensorflow: weights are [height, width, in_channels, out_channels]
            kernels = utils.get_variable(np.transpose(kernels, (1, 0, 2, 3)),
                                         name=name + "_w")
            bias = utils.get_variable(bias.reshape(-1), name=name + "_b")
            current = utils.conv2d_basic(current, kernels, bias)
            print('conv ' + name[4:] + ':', current.shape)
        elif kind == 'relu':
            current = tf.nn.relu(current, name=name)
            if args.debug:
                utils.add_activation_summary(current)
        elif kind == 'pool':
            current = utils.avg_pool_2x2(current)
            print('pool ' + name[4:] + '  :', current.shape)
        net[name] = current

    return net
Пример #2
0
def inference(image, keep_prob):
    """
    Semantic segmentation network definition
    :param image: input image. Should have values in range 0-255
    :param keep_prob:
    :return:
    """
    print("> [FCN] Setting up vgg initialized conv layers ...")
    model_data = utils.get_model_data(args.model_dir, MODEL_URL)

    mean = model_data['normalization'][0][0][0]
    mean_pixel = np.mean(mean, axis=(0, 1))

    weights = np.squeeze(model_data['layers'])

    processed_image = utils.process_image(image, mean_pixel)

    with tf.variable_scope("inference"):
        image_net = vgg_net(weights, processed_image)
        conv_final_layer = image_net["conv5_3"]
        print('----------------------------------------------------')
        print('conv 5_3:', conv_final_layer.get_shape())

        pool5 = utils.max_pool_2x2(conv_final_layer)
        print('pool 5  :', pool5.get_shape())

        W6 = utils.weight_variable([3, 3, 512, 4096],
                                   name="W6")  # original is [7, 7, 512, 4096]
        b6 = utils.bias_variable([4096], name="b6")
        conv6 = utils.conv2d_basic(pool5, W6, b6)
        print('conv 6  :', conv6.get_shape())
        relu6 = tf.nn.relu(conv6, name="relu6")
        if args.debug:
            utils.add_activation_summary(relu6)
        relu_dropout6 = tf.nn.dropout(relu6, keep_prob=keep_prob)

        W7 = utils.weight_variable([1, 1, 4096, 4096], name="W7")
        b7 = utils.bias_variable([4096], name="b7")
        conv7 = utils.conv2d_basic(relu_dropout6, W7, b7)
        print('conv 7  :', conv7.get_shape())
        relu7 = tf.nn.relu(conv7, name="relu7")
        if args.debug:
            utils.add_activation_summary(relu7)
        relu_dropout7 = tf.nn.dropout(relu7, keep_prob=keep_prob)

        W8 = utils.weight_variable([1, 1, 4096, NUM_OF_CLASSESS], name="W8")
        b8 = utils.bias_variable([NUM_OF_CLASSESS], name="b8")
        conv8 = utils.conv2d_basic(relu_dropout7, W8, b8)
        print('conv 8  :', conv8.get_shape())
        # annotation_pred1 = tf.argmax(conv8, dimension=3, name="prediction1")

        # now to upscale to actual image size
        deconv_shape1 = image_net["pool4"].get_shape()
        W_t1 = utils.weight_variable(
            [4, 4, deconv_shape1[3].value, NUM_OF_CLASSESS], name="W_t1")
        b_t1 = utils.bias_variable([deconv_shape1[3].value], name="b_t1")
        conv_t1 = utils.conv2d_transpose_strided(conv8,
                                                 W_t1,
                                                 b_t1,
                                                 output_shape=tf.shape(
                                                     image_net["pool4"]))
        print('conv t1 :', conv_t1.get_shape())
        fuse_1 = tf.add(conv_t1, image_net["pool4"], name="fuse_1")
        print('fuse 1  :', fuse_1.get_shape())

        deconv_shape2 = image_net["pool3"].get_shape()
        W_t2 = utils.weight_variable(
            [4, 4, deconv_shape2[3].value, deconv_shape1[3].value],
            name="W_t2")
        b_t2 = utils.bias_variable([deconv_shape2[3].value], name="b_t2")
        conv_t2 = utils.conv2d_transpose_strided(fuse_1,
                                                 W_t2,
                                                 b_t2,
                                                 output_shape=tf.shape(
                                                     image_net["pool3"]))
        print('conv t2 :', conv_t2.get_shape())
        fuse_2 = tf.add(conv_t2, image_net["pool3"], name="fuse_2")
        print('fuse 2  :', fuse_2.get_shape())

        shape = tf.shape(image)
        deconv_shape3 = tf.stack(
            [shape[0], shape[1], shape[2], NUM_OF_CLASSESS])
        W_t3 = utils.weight_variable(
            [16, 16, NUM_OF_CLASSESS, deconv_shape2[3].value], name="W_t3")
        b_t3 = utils.bias_variable([NUM_OF_CLASSESS], name="b_t3")
        conv_t3 = utils.conv2d_transpose_strided(fuse_2,
                                                 W_t3,
                                                 b_t3,
                                                 output_shape=deconv_shape3,
                                                 stride=8)
        print('conv t3 :', conv_t3.get_shape())

        annotation_pred = tf.argmax(conv_t3, dimension=3, name="prediction")
        print('prediction:', annotation_pred.get_shape())

    return tf.expand_dims(annotation_pred, dim=3), conv_t3