Example #1
0
def get_conv_features(image_file, model_type, feature_layer):
    if model_type == "vgg":
        cnn_model = vgg16.create_vgg_model(448,
                                           only_conv=feature_layer != 'fc7')
    else:
        cnn_model = resnet.create_resnet_model(448)

    sess = cnn_model['session']
    images = cnn_model['images_placeholder']
    image_feature_layer = cnn_model[feature_layer]
    img_dim = 448

    if model_type == 'resnet':
        image_array = sess.run(cnn_model['processed_image'],
                               feed_dict={
                                   cnn_model['pre_image']:
                                   utils.load_image_array(image_file,
                                                          img_dim=None)
                               })
    else:
        image_array = utils.load_image_array(image_file, img_dim=img_dim)

    feed_dict = {images: [image_array]}
    conv_features_batch = sess.run(image_feature_layer, feed_dict=feed_dict)
    sess.close()

    return conv_features_batch
def main():
    parser = argparse.ArgumentParser()
    parser.add_argument('--split',
                        type=str,
                        default='train',
                        help='train/val/test')
    parser.add_argument('--batch_size',
                        type=int,
                        default=64,
                        help='Batch Size')
    parser.add_argument('--feature_layer',
                        type=str,
                        default="block4",
                        help='CONV FEATURE LAYER, fc7, pool5 or block4')
    parser.add_argument('--model', type=str, default="resnet", help='vgg')
    args = parser.parse_args()

    if args.split == "train":
        with open('Data/annotations/test.json') as f:
            images = json.loads(f.read())['images']
    else:
        with open('Data/annotations/captions_val2014.json') as f:
            images = json.loads(f.read())['images']

    image_ids = {image['image_id']: 1 for image in images}
    image_id_list = [img_id for img_id in image_ids]
    print("Total Images", len(image_id_list))

    try:
        shutil.rmtree('Data/conv_features_{}_{}'.format(
            args.split, args.model))
    except:
        pass

    os.makedirs('Data/conv_features_{}_{}'.format(args.split, args.model))

    if args.model == "vgg":
        cnn_model = vgg16.create_vgg_model(
            448, only_conv=args.feature_layer != 'fc7')
    else:
        cnn_model = resnet.create_resnet_model(448)

    image_id_file_name = "Data/conv_features_{}_{}/image_id_list_{}.h5".format(
        args.split, args.model, args.feature_layer)
    h5f_image_id_list = h5py.File(image_id_file_name, 'w')
    h5f_image_id_list.create_dataset('image_id_list', data=image_id_list)
    h5f_image_id_list.close()

    conv_file_name = "Data/conv_features_{}_{}/conv_features_{}.h5".format(
        args.split, args.model, args.feature_layer)
    hdf5_conv_file = h5py.File(conv_file_name, 'w')

    if args.feature_layer == "fc7":
        conv_features = None
        feature_shape = (len(image_id_list), 4096)
        img_dim = 224

    else:
        if args.model == "vgg":
            conv_features = None
            feature_shape = (len(image_id_list), 14, 14, 512)
            img_dim = 448
        else:
            conv_features = None
            feature_shape = (len(image_id_list), 14, 14, 2048)
            img_dim = 448
            print("it's done!!!")

    hdf5_data = hdf5_conv_file.create_dataset('conv_features',
                                              shape=feature_shape,
                                              dtype='f')

    sess = cnn_model['session']
    images = cnn_model['images_placeholder']
    image_feature_layer = cnn_model[args.feature_layer]

    idx = 0
    while idx < len(image_id_list):
        start = time.clock()

        image_batch = np.ndarray((args.batch_size, img_dim, img_dim, 3))

        count = 0
        for i in range(0, args.batch_size):
            if idx >= len(image_id_list):
                break

            image_file = ('Data/images/abstract_v002_%s2015_%.12d.jpg' %
                          (args.split, image_id_list[idx]))

            if args.model == 'resnet':
                image_array = sess.run(cnn_model['processed_image'],
                                       feed_dict={
                                           cnn_model['pre_image']:
                                           utils.load_image_array(image_file,
                                                                  img_dim=None)
                                       })
            else:
                image_array = utils.load_image_array(image_file,
                                                     img_dim=img_dim)

            image_batch[i, :, :, :] = image_array
            idx += 1
            count += 1

        feed_dict = {images: image_batch[0:count, :, :, :]}
        conv_features_batch = sess.run(image_feature_layer,
                                       feed_dict=feed_dict)
        #np.reshape not needed
        #conv_features_batch = np.reshape(conv_features_batch, ( conv_features_batch.shape[0], -1 ))
        hdf5_data[(idx - count):idx] = conv_features_batch[0:count]

        end = time.clock()
        print("Time for batch of photos", end - start)
        print("Hours Remaining", ((len(image_id_list) - idx) * 1.0) *
              (end - start) / 60.0 / 60.0 / args.batch_size)
        print("Images Processed", idx)

    hdf5_conv_file.close()
    print("Done!")