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mot_sde_infer.py
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# Copyright (c) 2021 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.
import os
import time
import yaml
import cv2
import numpy as np
from collections import defaultdict
import paddle
from paddle.inference import Config
from paddle.inference import create_predictor
from picodet_postprocess import PicoDetPostProcess
from utils import argsparser, Timer, get_current_memory_mb
from infer import Detector, DetectorPicoDet, get_test_images, print_arguments, PredictConfig
from infer import load_predictor
from benchmark_utils import PaddleInferBenchmark
from ppdet.modeling.mot.tracker import DeepSORTTracker
from ppdet.modeling.mot.visualization import plot_tracking
from ppdet.modeling.mot.utils import MOTTimer, write_mot_results
# Global dictionary
MOT_SUPPORT_MODELS = {'DeepSORT'}
def bench_log(detector, img_list, model_info, batch_size=1, name=None):
mems = {
'cpu_rss_mb': detector.cpu_mem / len(img_list),
'gpu_rss_mb': detector.gpu_mem / len(img_list),
'gpu_util': detector.gpu_util * 100 / len(img_list)
}
perf_info = detector.det_times.report(average=True)
data_info = {
'batch_size': batch_size,
'shape': "dynamic_shape",
'data_num': perf_info['img_num']
}
log = PaddleInferBenchmark(detector.config, model_info, data_info,
perf_info, mems)
log(name)
def scale_coords(coords, input_shape, im_shape, scale_factor):
im_shape = im_shape[0]
ratio = scale_factor[0][0]
pad_w = (input_shape[1] - int(im_shape[1])) / 2
pad_h = (input_shape[0] - int(im_shape[0])) / 2
coords[:, 0::2] -= pad_w
coords[:, 1::2] -= pad_h
coords[:, 0:4] /= ratio
coords[:, :4] = np.clip(coords[:, :4], a_min=0, a_max=coords[:, :4].max())
return coords.round()
def clip_box(xyxy, input_shape, im_shape, scale_factor):
im_shape = im_shape[0]
ratio = scale_factor[0][0]
img0_shape = [int(im_shape[0] / ratio), int(im_shape[1] / ratio)]
xyxy[:, 0::2] = np.clip(xyxy[:, 0::2], a_min=0, a_max=img0_shape[1])
xyxy[:, 1::2] = np.clip(xyxy[:, 1::2], a_min=0, a_max=img0_shape[0])
w = xyxy[:, 2:3] - xyxy[:, 0:1]
h = xyxy[:, 3:4] - xyxy[:, 1:2]
mask = np.logical_and(h > 0, w > 0)
keep_idx = np.nonzero(mask)
return xyxy[keep_idx[0]], keep_idx
def preprocess_reid(imgs,
w=64,
h=192,
mean=[0.485, 0.456, 0.406],
std=[0.229, 0.224, 0.225]):
im_batch = []
for img in imgs:
img = cv2.resize(img, (w, h))
img = img[:, :, ::-1].astype('float32').transpose((2, 0, 1)) / 255
img_mean = np.array(mean).reshape((3, 1, 1))
img_std = np.array(std).reshape((3, 1, 1))
img -= img_mean
img /= img_std
img = np.expand_dims(img, axis=0)
im_batch.append(img)
im_batch = np.concatenate(im_batch, 0)
return im_batch
class SDE_Detector(Detector):
"""
Args:
pred_config (object): config of model, defined by `Config(model_dir)`
model_dir (str): root path of model.pdiparams, model.pdmodel and infer_cfg.yml
device (str): Choose the device you want to run, it can be: CPU/GPU/XPU, default is CPU
run_mode (str): mode of running(fluid/trt_fp32/trt_fp16)
trt_min_shape (int): min shape for dynamic shape in trt
trt_max_shape (int): max shape for dynamic shape in trt
trt_opt_shape (int): opt shape for dynamic shape in trt
trt_calib_mode (bool): If the model is produced by TRT offline quantitative
calibration, trt_calib_mode need to set True
cpu_threads (int): cpu threads
enable_mkldnn (bool): whether to open MKLDNN
"""
def __init__(self,
pred_config,
model_dir,
device='CPU',
run_mode='fluid',
batch_size=1,
trt_min_shape=1,
trt_max_shape=1088,
trt_opt_shape=608,
trt_calib_mode=False,
cpu_threads=1,
enable_mkldnn=False):
super(SDE_Detector, self).__init__(
pred_config=pred_config,
model_dir=model_dir,
device=device,
run_mode=run_mode,
batch_size=batch_size,
trt_min_shape=trt_min_shape,
trt_max_shape=trt_max_shape,
trt_opt_shape=trt_opt_shape,
trt_calib_mode=trt_calib_mode,
cpu_threads=cpu_threads,
enable_mkldnn=enable_mkldnn)
assert batch_size == 1, "The JDE Detector only supports batch size=1 now"
self.pred_config = pred_config
def postprocess(self, boxes, input_shape, im_shape, scale_factor, threshold,
scaled):
over_thres_idx = np.nonzero(boxes[:, 1:2] >= threshold)[0]
if len(over_thres_idx) == 0:
pred_dets = np.zeros((1, 6), dtype=np.float32)
pred_xyxys = np.zeros((1, 4), dtype=np.float32)
return pred_dets, pred_xyxys
else:
boxes = boxes[over_thres_idx]
if not scaled:
# scaled means whether the coords after detector outputs
# have been scaled back to the original image, set True
# in general detector, set False in JDE YOLOv3.
pred_bboxes = scale_coords(boxes[:, 2:], input_shape, im_shape,
scale_factor)
else:
pred_bboxes = boxes[:, 2:]
pred_xyxys, keep_idx = clip_box(pred_bboxes, input_shape, im_shape,
scale_factor)
if len(keep_idx[0]) == 0:
pred_dets = np.zeros((1, 6), dtype=np.float32)
pred_xyxys = np.zeros((1, 4), dtype=np.float32)
return pred_dets, pred_xyxys
pred_scores = boxes[:, 1:2][keep_idx[0]]
pred_cls_ids = boxes[:, 0:1][keep_idx[0]]
pred_tlwhs = np.concatenate(
(pred_xyxys[:, 0:2], pred_xyxys[:, 2:4] - pred_xyxys[:, 0:2] + 1),
axis=1)
pred_dets = np.concatenate(
(pred_tlwhs, pred_scores, pred_cls_ids), axis=1)
return pred_dets, pred_xyxys
def predict(self, image, scaled, threshold=0.5, warmup=0, repeats=1):
'''
Args:
image (np.ndarray): image numpy data
threshold (float): threshold of predicted box' score
scaled (bool): whether the coords after detector outputs are scaled,
default False in jde yolov3, set True in general detector.
Returns:
pred_dets (np.ndarray, [N, 6])
'''
self.det_times.preprocess_time_s.start()
inputs = self.preprocess(image)
self.det_times.preprocess_time_s.end()
input_names = self.predictor.get_input_names()
for i in range(len(input_names)):
input_tensor = self.predictor.get_input_handle(input_names[i])
input_tensor.copy_from_cpu(inputs[input_names[i]])
for i in range(warmup):
self.predictor.run()
output_names = self.predictor.get_output_names()
boxes_tensor = self.predictor.get_output_handle(output_names[0])
boxes = boxes_tensor.copy_to_cpu()
self.det_times.inference_time_s.start()
for i in range(repeats):
self.predictor.run()
output_names = self.predictor.get_output_names()
boxes_tensor = self.predictor.get_output_handle(output_names[0])
boxes = boxes_tensor.copy_to_cpu()
self.det_times.inference_time_s.end(repeats=repeats)
self.det_times.postprocess_time_s.start()
if len(boxes) == 0:
pred_dets = np.zeros((1, 6), dtype=np.float32)
pred_xyxys = np.zeros((1, 4), dtype=np.float32)
else:
input_shape = inputs['image'].shape[2:]
im_shape = inputs['im_shape']
scale_factor = inputs['scale_factor']
pred_dets, pred_xyxys = self.postprocess(
boxes, input_shape, im_shape, scale_factor, threshold, scaled)
self.det_times.postprocess_time_s.end()
self.det_times.img_num += 1
return pred_dets, pred_xyxys
class SDE_DetectorPicoDet(DetectorPicoDet):
"""
Args:
pred_config (object): config of model, defined by `Config(model_dir)`
model_dir (str): root path of model.pdiparams, model.pdmodel and infer_cfg.yml
device (str): Choose the device you want to run, it can be: CPU/GPU/XPU, default is CPU
run_mode (str): mode of running(fluid/trt_fp32/trt_fp16)
trt_min_shape (int): min shape for dynamic shape in trt
trt_max_shape (int): max shape for dynamic shape in trt
trt_opt_shape (int): opt shape for dynamic shape in trt
trt_calib_mode (bool): If the model is produced by TRT offline quantitative
calibration, trt_calib_mode need to set True
cpu_threads (int): cpu threads
enable_mkldnn (bool): whether to open MKLDNN
"""
def __init__(self,
pred_config,
model_dir,
device='CPU',
run_mode='fluid',
batch_size=1,
trt_min_shape=1,
trt_max_shape=1088,
trt_opt_shape=608,
trt_calib_mode=False,
cpu_threads=1,
enable_mkldnn=False):
super(SDE_DetectorPicoDet, self).__init__(
pred_config=pred_config,
model_dir=model_dir,
device=device,
run_mode=run_mode,
batch_size=batch_size,
trt_min_shape=trt_min_shape,
trt_max_shape=trt_max_shape,
trt_opt_shape=trt_opt_shape,
trt_calib_mode=trt_calib_mode,
cpu_threads=cpu_threads,
enable_mkldnn=enable_mkldnn)
assert batch_size == 1, "The JDE Detector only supports batch size=1 now"
self.pred_config = pred_config
def postprocess_bboxes(self, boxes, input_shape, im_shape, scale_factor, threshold):
over_thres_idx = np.nonzero(boxes[:, 1:2] >= threshold)[0]
if len(over_thres_idx) == 0:
pred_dets = np.zeros((1, 6), dtype=np.float32)
pred_xyxys = np.zeros((1, 4), dtype=np.float32)
return pred_dets, pred_xyxys
else:
boxes = boxes[over_thres_idx]
pred_bboxes = boxes[:, 2:]
pred_xyxys, keep_idx = clip_box(pred_bboxes, input_shape, im_shape,
scale_factor)
if len(keep_idx[0]) == 0:
pred_dets = np.zeros((1, 6), dtype=np.float32)
pred_xyxys = np.zeros((1, 4), dtype=np.float32)
return pred_dets, pred_xyxys
pred_scores = boxes[:, 1:2][keep_idx[0]]
pred_cls_ids = boxes[:, 0:1][keep_idx[0]]
pred_tlwhs = np.concatenate(
(pred_xyxys[:, 0:2], pred_xyxys[:, 2:4] - pred_xyxys[:, 0:2] + 1),
axis=1)
pred_dets = np.concatenate(
(pred_tlwhs, pred_scores, pred_cls_ids), axis=1)
return pred_dets, pred_xyxys
def predict(self, image, scaled, threshold=0.5, warmup=0, repeats=1):
'''
Args:
image (np.ndarray): image numpy data
threshold (float): threshold of predicted box' score
scaled (bool): whether the coords after detector outputs are scaled,
default False in jde yolov3, set True in general detector.
Returns:
pred_dets (np.ndarray, [N, 6])
'''
self.det_times.preprocess_time_s.start()
inputs = self.preprocess(image)
self.det_times.preprocess_time_s.end()
input_names = self.predictor.get_input_names()
for i in range(len(input_names)):
input_tensor = self.predictor.get_input_handle(input_names[i])
input_tensor.copy_from_cpu(inputs[input_names[i]])
np_score_list, np_boxes_list = [], []
for i in range(warmup):
self.predictor.run()
output_names = self.predictor.get_output_names()
boxes_tensor = self.predictor.get_output_handle(output_names[0])
boxes = boxes_tensor.copy_to_cpu()
self.det_times.inference_time_s.start()
for i in range(repeats):
self.predictor.run()
np_score_list.clear()
np_boxes_list.clear()
output_names = self.predictor.get_output_names()
num_outs = int(len(output_names) / 2)
for out_idx in range(num_outs):
np_score_list.append(
self.predictor.get_output_handle(output_names[out_idx])
.copy_to_cpu())
np_boxes_list.append(
self.predictor.get_output_handle(output_names[
out_idx + num_outs]).copy_to_cpu())
self.det_times.inference_time_s.end(repeats=repeats)
self.det_times.img_num += 1
self.det_times.postprocess_time_s.start()
self.postprocess = PicoDetPostProcess(
inputs['image'].shape[2:],
inputs['im_shape'],
inputs['scale_factor'],
strides=self.pred_config.fpn_stride,
nms_threshold=self.pred_config.nms['nms_threshold'])
boxes, boxes_num = self.postprocess(np_score_list, np_boxes_list)
if len(boxes) == 0:
pred_dets = np.zeros((1, 6), dtype=np.float32)
pred_xyxys = np.zeros((1, 4), dtype=np.float32)
else:
input_shape = inputs['image'].shape[2:]
im_shape = inputs['im_shape']
scale_factor = inputs['scale_factor']
pred_dets, pred_xyxys = self.postprocess_bboxes(
boxes, input_shape, im_shape, scale_factor, threshold)
return pred_dets, pred_xyxys
class SDE_ReID(object):
def __init__(self,
pred_config,
model_dir,
device='CPU',
run_mode='fluid',
batch_size=50,
trt_min_shape=1,
trt_max_shape=1088,
trt_opt_shape=608,
trt_calib_mode=False,
cpu_threads=1,
enable_mkldnn=False):
self.pred_config = pred_config
self.predictor, self.config = load_predictor(
model_dir,
run_mode=run_mode,
batch_size=batch_size,
min_subgraph_size=self.pred_config.min_subgraph_size,
device=device,
use_dynamic_shape=self.pred_config.use_dynamic_shape,
trt_min_shape=trt_min_shape,
trt_max_shape=trt_max_shape,
trt_opt_shape=trt_opt_shape,
trt_calib_mode=trt_calib_mode,
cpu_threads=cpu_threads,
enable_mkldnn=enable_mkldnn)
self.det_times = Timer()
self.cpu_mem, self.gpu_mem, self.gpu_util = 0, 0, 0
self.batch_size = batch_size
assert pred_config.tracker, "Tracking model should have tracker"
pt = pred_config.tracker
max_age = pt['max_age'] if 'max_age' in pt else 30
max_iou_distance = pt[
'max_iou_distance'] if 'max_iou_distance' in pt else 0.7
self.tracker = DeepSORTTracker(
max_age=max_age, max_iou_distance=max_iou_distance)
def get_crops(self, xyxy, ori_img):
w, h = self.tracker.input_size
self.det_times.preprocess_time_s.start()
crops = []
xyxy = xyxy.astype(np.int64)
ori_img = ori_img.transpose(1, 0, 2) # [h,w,3]->[w,h,3]
for i, bbox in enumerate(xyxy):
crop = ori_img[bbox[0]:bbox[2], bbox[1]:bbox[3], :]
crops.append(crop)
crops = preprocess_reid(crops, w, h)
self.det_times.preprocess_time_s.end()
return crops
def preprocess(self, crops):
# to keep fast speed, only use topk crops
crops = crops[:self.batch_size]
inputs = {}
inputs['crops'] = np.array(crops).astype('float32')
return inputs
def postprocess(self, pred_dets, pred_embs):
tracker = self.tracker
tracker.predict()
online_targets = tracker.update(pred_dets, pred_embs)
online_tlwhs, online_scores, online_ids = [], [], []
for t in online_targets:
if not t.is_confirmed() or t.time_since_update > 1:
continue
tlwh = t.to_tlwh()
tscore = t.score
tid = t.track_id
if tlwh[2] * tlwh[3] <= tracker.min_box_area: continue
if tracker.vertical_ratio > 0 and tlwh[2] / tlwh[
3] > tracker.vertical_ratio:
continue
online_tlwhs.append(tlwh)
online_scores.append(tscore)
online_ids.append(tid)
return online_tlwhs, online_scores, online_ids
def predict(self, crops, pred_dets, warmup=0, repeats=1):
self.det_times.preprocess_time_s.start()
inputs = self.preprocess(crops)
self.det_times.preprocess_time_s.end()
input_names = self.predictor.get_input_names()
for i in range(len(input_names)):
input_tensor = self.predictor.get_input_handle(input_names[i])
input_tensor.copy_from_cpu(inputs[input_names[i]])
for i in range(warmup):
self.predictor.run()
output_names = self.predictor.get_output_names()
feature_tensor = self.predictor.get_output_handle(output_names[0])
pred_embs = feature_tensor.copy_to_cpu()
self.det_times.inference_time_s.start()
for i in range(repeats):
self.predictor.run()
output_names = self.predictor.get_output_names()
feature_tensor = self.predictor.get_output_handle(output_names[0])
pred_embs = feature_tensor.copy_to_cpu()
self.det_times.inference_time_s.end(repeats=repeats)
self.det_times.postprocess_time_s.start()
online_tlwhs, online_scores, online_ids = self.postprocess(pred_dets,
pred_embs)
self.det_times.postprocess_time_s.end()
self.det_times.img_num += 1
return online_tlwhs, online_scores, online_ids
def predict_image(detector, reid_model, image_list):
image_list.sort()
for i, img_file in enumerate(image_list):
frame = cv2.imread(img_file)
if FLAGS.run_benchmark:
pred_dets, pred_xyxys = detector.predict(
[frame], FLAGS.scaled, FLAGS.threshold, warmup=10, repeats=10)
cm, gm, gu = get_current_memory_mb()
detector.cpu_mem += cm
detector.gpu_mem += gm
detector.gpu_util += gu
print('Test iter {}, file name:{}'.format(i, img_file))
else:
pred_dets, pred_xyxys = detector.predict([frame], FLAGS.scaled,
FLAGS.threshold)
if len(pred_dets) == 1 and np.sum(pred_dets) == 0:
print('Frame {} has no object, try to modify score threshold.'.
format(i))
online_im = frame
else:
# reid process
crops = reid_model.get_crops(pred_xyxys, frame)
if FLAGS.run_benchmark:
online_tlwhs, online_scores, online_ids = reid_model.predict(
crops, pred_dets, warmup=10, repeats=10)
else:
online_tlwhs, online_scores, online_ids = reid_model.predict(
crops, pred_dets)
online_im = plot_tracking(
frame, online_tlwhs, online_ids, online_scores, frame_id=i)
if FLAGS.save_images:
if not os.path.exists(FLAGS.output_dir):
os.makedirs(FLAGS.output_dir)
img_name = os.path.split(img_file)[-1]
out_path = os.path.join(FLAGS.output_dir, img_name)
cv2.imwrite(out_path, online_im)
print("save result to: " + out_path)
def predict_video(detector, reid_model, camera_id):
if camera_id != -1:
capture = cv2.VideoCapture(camera_id)
video_name = 'mot_output.mp4'
else:
capture = cv2.VideoCapture(FLAGS.video_file)
video_name = os.path.split(FLAGS.video_file)[-1]
# Get Video info : resolution, fps, frame count
width = int(capture.get(cv2.CAP_PROP_FRAME_WIDTH))
height = int(capture.get(cv2.CAP_PROP_FRAME_HEIGHT))
fps = int(capture.get(cv2.CAP_PROP_FPS))
frame_count = int(capture.get(cv2.CAP_PROP_FRAME_COUNT))
print("fps: %d, frame_count: %d" % (fps, frame_count))
if not os.path.exists(FLAGS.output_dir):
os.makedirs(FLAGS.output_dir)
out_path = os.path.join(FLAGS.output_dir, video_name)
if not FLAGS.save_images:
fourcc = cv2.VideoWriter_fourcc(*'mp4v')
writer = cv2.VideoWriter(out_path, fourcc, fps, (width, height))
frame_id = 0
timer = MOTTimer()
results = defaultdict(list)
while (1):
ret, frame = capture.read()
if not ret:
break
timer.tic()
pred_dets, pred_xyxys = detector.predict([frame], FLAGS.scaled,
FLAGS.threshold)
if len(pred_dets) == 1 and np.sum(pred_dets) == 0:
print('Frame {} has no object, try to modify score threshold.'.
format(frame_id))
timer.toc()
im = frame
else:
# reid process
crops = reid_model.get_crops(pred_xyxys, frame)
online_tlwhs, online_scores, online_ids = reid_model.predict(
crops, pred_dets)
results[0].append(
(frame_id + 1, online_tlwhs, online_scores, online_ids))
timer.toc()
fps = 1. / timer.average_time
im = plot_tracking(
frame,
online_tlwhs,
online_ids,
online_scores,
frame_id=frame_id,
fps=fps)
if FLAGS.save_images:
save_dir = os.path.join(FLAGS.output_dir, video_name.split('.')[-2])
if not os.path.exists(save_dir):
os.makedirs(save_dir)
cv2.imwrite(
os.path.join(save_dir, '{:05d}.jpg'.format(frame_id)), im)
else:
writer.write(im)
frame_id += 1
print('detect frame:%d' % (frame_id))
if camera_id != -1:
cv2.imshow('Tracking Detection', im)
if cv2.waitKey(1) & 0xFF == ord('q'):
break
if FLAGS.save_mot_txts:
result_filename = os.path.join(FLAGS.output_dir,
video_name.split('.')[-2] + '.txt')
write_mot_results(result_filename, results)
if FLAGS.save_images:
save_dir = os.path.join(FLAGS.output_dir, video_name.split('.')[-2])
cmd_str = 'ffmpeg -f image2 -i {}/%05d.jpg {}'.format(save_dir,
out_path)
os.system(cmd_str)
print('Save video in {}.'.format(out_path))
else:
writer.release()
def main():
pred_config = PredictConfig(FLAGS.model_dir)
detector_func = 'SDE_Detector'
if pred_config.arch == 'PicoDet':
detector_func = 'SDE_DetectorPicoDet'
detector = eval(detector_func)(pred_config,
FLAGS.model_dir,
device=FLAGS.device,
run_mode=FLAGS.run_mode,
batch_size=FLAGS.batch_size,
trt_min_shape=FLAGS.trt_min_shape,
trt_max_shape=FLAGS.trt_max_shape,
trt_opt_shape=FLAGS.trt_opt_shape,
trt_calib_mode=FLAGS.trt_calib_mode,
cpu_threads=FLAGS.cpu_threads,
enable_mkldnn=FLAGS.enable_mkldnn)
pred_config = PredictConfig(FLAGS.reid_model_dir)
reid_model = SDE_ReID(
pred_config,
FLAGS.reid_model_dir,
device=FLAGS.device,
run_mode=FLAGS.run_mode,
batch_size=FLAGS.reid_batch_size,
trt_min_shape=FLAGS.trt_min_shape,
trt_max_shape=FLAGS.trt_max_shape,
trt_opt_shape=FLAGS.trt_opt_shape,
trt_calib_mode=FLAGS.trt_calib_mode,
cpu_threads=FLAGS.cpu_threads,
enable_mkldnn=FLAGS.enable_mkldnn)
# predict from video file or camera video stream
if FLAGS.video_file is not None or FLAGS.camera_id != -1:
predict_video(detector, reid_model, FLAGS.camera_id)
else:
# predict from image
img_list = get_test_images(FLAGS.image_dir, FLAGS.image_file)
predict_image(detector, reid_model, img_list)
if not FLAGS.run_benchmark:
detector.det_times.info(average=True)
reid_model.det_times.info(average=True)
else:
mode = FLAGS.run_mode
det_model_dir = FLAGS.model_dir
det_model_info = {
'model_name': det_model_dir.strip('/').split('/')[-1],
'precision': mode.split('_')[-1]
}
bench_log(detector, img_list, det_model_info, name='Det')
reid_model_dir = FLAGS.reid_model_dir
reid_model_info = {
'model_name': reid_model_dir.strip('/').split('/')[-1],
'precision': mode.split('_')[-1]
}
bench_log(reid_model, img_list, reid_model_info, name='ReID')
if __name__ == '__main__':
paddle.enable_static()
parser = argsparser()
FLAGS = parser.parse_args()
print_arguments(FLAGS)
FLAGS.device = FLAGS.device.upper()
assert FLAGS.device in ['CPU', 'GPU', 'XPU'
], "device should be CPU, GPU or XPU"
main()