# Copyright (c) 2019 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from __future__ import absolute_import from __future__ import division from __future__ import print_function import os import paddle.fluid as fluid import numpy as np from PIL import Image from collections import OrderedDict import ppdet.utils.checkpoint as checkpoint from ppdet.utils.cli import ArgsParser from ppdet.utils.check import check_gpu from ppdet.utils.widerface_eval_utils import get_shrink, bbox_vote, \ save_widerface_bboxes, save_fddb_bboxes, to_chw_bgr from ppdet.core.workspace import load_config, merge_config, create import logging FORMAT = '%(asctime)s-%(levelname)s: %(message)s' logging.basicConfig(level=logging.INFO, format=FORMAT) logger = logging.getLogger(__name__) def face_img_process(image, mean=[104., 117., 123.], std=[127.502231, 127.502231, 127.502231]): img = np.array(image) img = to_chw_bgr(img) img = img.astype('float32') img -= np.array(mean)[:, np.newaxis, np.newaxis].astype('float32') img /= np.array(std)[:, np.newaxis, np.newaxis].astype('float32') img = [img] img = np.array(img) return img def face_eval_run(exe, compile_program, fetches, image_dir, gt_file, pred_dir='output/pred', eval_mode='widerface', multi_scale=False): # load ground truth files with open(gt_file, 'r') as f: gt_lines = f.readlines() imid2path = [] pos_gt = 0 while pos_gt < len(gt_lines): name_gt = gt_lines[pos_gt].strip('\n\t').split()[0] imid2path.append(name_gt) pos_gt += 1 n_gt = int(gt_lines[pos_gt].strip('\n\t').split()[0]) pos_gt += 1 + n_gt logger.info('The ground truth file load {} images'.format(len(imid2path))) dets_dist = OrderedDict() for iter_id, im_path in enumerate(imid2path): image_path = os.path.join(image_dir, im_path) if eval_mode == 'fddb': image_path += '.jpg' assert os.path.exists(image_path) image = Image.open(image_path).convert('RGB') if multi_scale: shrink, max_shrink = get_shrink(image.size[1], image.size[0]) det0 = detect_face(exe, compile_program, fetches, image, shrink) det1 = flip_test(exe, compile_program, fetches, image, shrink) [det2, det3] = multi_scale_test(exe, compile_program, fetches, image, max_shrink) det4 = multi_scale_test_pyramid(exe, compile_program, fetches, image, max_shrink) det = np.row_stack((det0, det1, det2, det3, det4)) dets = bbox_vote(det) else: dets = detect_face(exe, compile_program, fetches, image, 1) if eval_mode == 'widerface': save_widerface_bboxes(image_path, dets, pred_dir) else: dets_dist[im_path] = dets if iter_id % 100 == 0: logger.info('Test iter {}'.format(iter_id)) if eval_mode == 'fddb': save_fddb_bboxes(dets_dist, pred_dir) logger.info("Finish evaluation.") def detect_face(exe, compile_program, fetches, image, shrink): image_shape = [3, image.size[1], image.size[0]] if shrink != 1: h, w = int(image_shape[1] * shrink), int(image_shape[2] * shrink) image = image.resize((w, h), Image.ANTIALIAS) image_shape = [3, h, w] img = face_img_process(image) detection, = exe.run(compile_program, feed={'image': img}, fetch_list=[fetches['bbox']], return_numpy=False) detection = np.array(detection) # layout: xmin, ymin, xmax. ymax, score if np.prod(detection.shape) == 1: logger.info("No face detected") return np.array([[0, 0, 0, 0, 0]]) det_conf = detection[:, 1] det_xmin = image_shape[2] * detection[:, 2] / shrink det_ymin = image_shape[1] * detection[:, 3] / shrink det_xmax = image_shape[2] * detection[:, 4] / shrink det_ymax = image_shape[1] * detection[:, 5] / shrink det = np.column_stack((det_xmin, det_ymin, det_xmax, det_ymax, det_conf)) return det def flip_test(exe, compile_program, fetches, image, shrink): img = image.transpose(Image.FLIP_LEFT_RIGHT) det_f = detect_face(exe, compile_program, fetches, img, shrink) det_t = np.zeros(det_f.shape) # image.size: [width, height] det_t[:, 0] = image.size[0] - det_f[:, 2] det_t[:, 1] = det_f[:, 1] det_t[:, 2] = image.size[0] - det_f[:, 0] det_t[:, 3] = det_f[:, 3] det_t[:, 4] = det_f[:, 4] return det_t def multi_scale_test(exe, compile_program, fetches, image, max_shrink): # Shrink detecting is only used to detect big faces st = 0.5 if max_shrink >= 0.75 else 0.5 * max_shrink det_s = detect_face(exe, compile_program, fetches, image, st) index = np.where( np.maximum(det_s[:, 2] - det_s[:, 0] + 1, det_s[:, 3] - det_s[:, 1] + 1) > 30)[0] det_s = det_s[index, :] # Enlarge one times bt = min(2, max_shrink) if max_shrink > 1 else (st + max_shrink) / 2 det_b = detect_face(exe, compile_program, fetches, image, bt) # Enlarge small image x times for small faces if max_shrink > 2: bt *= 2 while bt < max_shrink: det_b = np.row_stack((det_b, detect_face(exe, compile_program, fetches, image, bt))) bt *= 2 det_b = np.row_stack((det_b, detect_face(exe, compile_program, fetches, image, max_shrink))) # Enlarged images are only used to detect small faces. if bt > 1: index = np.where( np.minimum(det_b[:, 2] - det_b[:, 0] + 1, det_b[:, 3] - det_b[:, 1] + 1) < 100)[0] det_b = det_b[index, :] # Shrinked images are only used to detect big faces. else: index = np.where( np.maximum(det_b[:, 2] - det_b[:, 0] + 1, det_b[:, 3] - det_b[:, 1] + 1) > 30)[0] det_b = det_b[index, :] return det_s, det_b def multi_scale_test_pyramid(exe, compile_program, fetches, image, max_shrink): # Use image pyramids to detect faces det_b = detect_face(exe, compile_program, fetches, image, 0.25) index = np.where( np.maximum(det_b[:, 2] - det_b[:, 0] + 1, det_b[:, 3] - det_b[:, 1] + 1) > 30)[0] det_b = det_b[index, :] st = [0.75, 1.25, 1.5, 1.75] for i in range(len(st)): if st[i] <= max_shrink: det_temp = detect_face(exe, compile_program, fetches, image, st[i]) # Enlarged images are only used to detect small faces. if st[i] > 1: index = np.where( np.minimum(det_temp[:, 2] - det_temp[:, 0] + 1, det_temp[:, 3] - det_temp[:, 1] + 1) < 100)[0] det_temp = det_temp[index, :] # Shrinked images are only used to detect big faces. else: index = np.where( np.maximum(det_temp[:, 2] - det_temp[:, 0] + 1, det_temp[:, 3] - det_temp[:, 1] + 1) > 30)[0] det_temp = det_temp[index, :] det_b = np.row_stack((det_b, det_temp)) return det_b def main(): """ Main evaluate function """ cfg = load_config(FLAGS.config) if 'architecture' in cfg: main_arch = cfg.architecture else: raise ValueError("'architecture' not specified in config file.") merge_config(FLAGS.opt) # check if set use_gpu=True in paddlepaddle cpu version check_gpu(cfg.use_gpu) # define executor place = fluid.CUDAPlace(0) if cfg.use_gpu else fluid.CPUPlace() exe = fluid.Executor(place) # build program model = create(main_arch) startup_prog = fluid.Program() eval_prog = fluid.Program() with fluid.program_guard(eval_prog, startup_prog): with fluid.unique_name.guard(): inputs_def = cfg['EvalReader']['inputs_def'] inputs_def['use_dataloader'] = False feed_vars, _ = model.build_inputs(**inputs_def) fetches = model.eval(feed_vars) eval_prog = eval_prog.clone(True) # load model exe.run(startup_prog) if 'weights' in cfg: checkpoint.load_params(exe, eval_prog, cfg.weights) assert cfg.metric in ['WIDERFACE'], \ "unknown metric type {}".format(cfg.metric) dataset = cfg['EvalReader']['dataset'] annotation_file = dataset.get_anno() dataset_dir = dataset.dataset_dir image_dir = os.path.join( dataset_dir, dataset.image_dir) if FLAGS.eval_mode == 'widerface' else dataset_dir pred_dir = FLAGS.output_eval if FLAGS.output_eval else 'output/pred' face_eval_run( exe, eval_prog, fetches, image_dir, annotation_file, pred_dir=pred_dir, eval_mode=FLAGS.eval_mode, multi_scale=FLAGS.multi_scale) if __name__ == '__main__': parser = ArgsParser() parser.add_argument( "-f", "--output_eval", default=None, type=str, help="Evaluation file directory, default is current directory.") parser.add_argument( "-e", "--eval_mode", default="widerface", type=str, help="Evaluation mode, include `widerface` and `fddb`, default is `widerface`." ) parser.add_argument( "--multi_scale", action='store_true', default=False, help="If True it will select `multi_scale` evaluation. Default is `False`, it will select `single-scale` evaluation." ) FLAGS = parser.parse_args() main()