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import os |
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import yaml |
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import glob |
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from functools import reduce |
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import cv2 |
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import numpy as np |
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import math |
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import paddle |
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from paddle.inference import Config |
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from paddle.inference import create_predictor |
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import sys |
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parent_path = os.path.abspath(os.path.join(__file__, *(['..']))) |
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sys.path.insert(0, parent_path) |
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from benchmark_utils import PaddleInferBenchmark |
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from picodet_postprocess import PicoDetPostProcess |
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from preprocess import preprocess, Resize, NormalizeImage, Permute, PadStride, LetterBoxResize, Pad, decode_image |
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from mot.visualize import visualize_box_mask |
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from mot_utils import argsparser, Timer, get_current_memory_mb |
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SUPPORT_MODELS = { |
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'YOLO', |
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'PPYOLOE', |
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'PicoDet', |
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'JDE', |
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'FairMOT', |
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'DeepSORT', |
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'StrongBaseline', |
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} |
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def bench_log(detector, img_list, model_info, batch_size=1, name=None): |
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mems = { |
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'cpu_rss_mb': detector.cpu_mem / len(img_list), |
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'gpu_rss_mb': detector.gpu_mem / len(img_list), |
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'gpu_util': detector.gpu_util * 100 / len(img_list) |
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} |
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perf_info = detector.det_times.report(average=True) |
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data_info = { |
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'batch_size': batch_size, |
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'shape': "dynamic_shape", |
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'data_num': perf_info['img_num'] |
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} |
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log = PaddleInferBenchmark(detector.config, model_info, data_info, |
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perf_info, mems) |
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log(name) |
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class Detector(object): |
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""" |
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Args: |
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pred_config (object): config of model, defined by `Config(model_dir)` |
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model_dir (str): root path of model.pdiparams, model.pdmodel and infer_cfg.yml |
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device (str): Choose the device you want to run, it can be: CPU/GPU/XPU, default is CPU |
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run_mode (str): mode of running(paddle/trt_fp32/trt_fp16) |
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batch_size (int): size of pre batch in inference |
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trt_min_shape (int): min shape for dynamic shape in trt |
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trt_max_shape (int): max shape for dynamic shape in trt |
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trt_opt_shape (int): opt shape for dynamic shape in trt |
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trt_calib_mode (bool): If the model is produced by TRT offline quantitative |
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calibration, trt_calib_mode need to set True |
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cpu_threads (int): cpu threads |
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enable_mkldnn (bool): whether to open MKLDNN |
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output_dir (str): The path of output |
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threshold (float): The threshold of score for visualization |
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""" |
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def __init__( |
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self, |
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model_dir, |
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device='CPU', |
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run_mode='paddle', |
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batch_size=1, |
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trt_min_shape=1, |
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trt_max_shape=1280, |
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trt_opt_shape=640, |
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trt_calib_mode=False, |
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cpu_threads=1, |
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enable_mkldnn=False, |
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output_dir='output', |
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threshold=0.5, ): |
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self.pred_config = self.set_config(model_dir) |
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self.predictor, self.config = load_predictor( |
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model_dir, |
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run_mode=run_mode, |
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batch_size=batch_size, |
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min_subgraph_size=self.pred_config.min_subgraph_size, |
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device=device, |
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use_dynamic_shape=self.pred_config.use_dynamic_shape, |
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trt_min_shape=trt_min_shape, |
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trt_max_shape=trt_max_shape, |
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trt_opt_shape=trt_opt_shape, |
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trt_calib_mode=trt_calib_mode, |
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cpu_threads=cpu_threads, |
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enable_mkldnn=enable_mkldnn) |
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self.det_times = Timer() |
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self.cpu_mem, self.gpu_mem, self.gpu_util = 0, 0, 0 |
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self.batch_size = batch_size |
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self.output_dir = output_dir |
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self.threshold = threshold |
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def set_config(self, model_dir): |
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return PredictConfig(model_dir) |
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def preprocess(self, image_list): |
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preprocess_ops = [] |
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for op_info in self.pred_config.preprocess_infos: |
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new_op_info = op_info.copy() |
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op_type = new_op_info.pop('type') |
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preprocess_ops.append(eval(op_type)(**new_op_info)) |
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input_im_lst = [] |
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input_im_info_lst = [] |
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for im_path in image_list: |
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im, im_info = preprocess(im_path, preprocess_ops) |
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input_im_lst.append(im) |
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input_im_info_lst.append(im_info) |
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inputs = create_inputs(input_im_lst, input_im_info_lst) |
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input_names = self.predictor.get_input_names() |
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for i in range(len(input_names)): |
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input_tensor = self.predictor.get_input_handle(input_names[i]) |
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input_tensor.copy_from_cpu(inputs[input_names[i]]) |
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return inputs |
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def postprocess(self, inputs, result): |
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np_boxes_num = result['boxes_num'] |
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if np_boxes_num[0] <= 0: |
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print('[WARNNING] No object detected.') |
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result = {'boxes': np.zeros([0, 6]), 'boxes_num': [0]} |
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result = {k: v for k, v in result.items() if v is not None} |
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return result |
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def predict(self, repeats=1): |
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''' |
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Args: |
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repeats (int): repeats number for prediction |
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Returns: |
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result (dict): include 'boxes': np.ndarray: shape:[N,6], N: number of box, |
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matix element:[class, score, x_min, y_min, x_max, y_max] |
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''' |
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np_boxes, np_boxes_num = None, None |
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for i in range(repeats): |
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self.predictor.run() |
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output_names = self.predictor.get_output_names() |
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boxes_tensor = self.predictor.get_output_handle(output_names[0]) |
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np_boxes = boxes_tensor.copy_to_cpu() |
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boxes_num = self.predictor.get_output_handle(output_names[1]) |
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np_boxes_num = boxes_num.copy_to_cpu() |
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result = dict(boxes=np_boxes, boxes_num=np_boxes_num) |
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return result |
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def merge_batch_result(self, batch_result): |
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if len(batch_result) == 1: |
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return batch_result[0] |
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res_key = batch_result[0].keys() |
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results = {k: [] for k in res_key} |
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for res in batch_result: |
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for k, v in res.items(): |
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results[k].append(v) |
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for k, v in results.items(): |
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results[k] = np.concatenate(v) |
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return results |
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def get_timer(self): |
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return self.det_times |
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def predict_image(self, |
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image_list, |
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run_benchmark=False, |
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repeats=1, |
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visual=True): |
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batch_loop_cnt = math.ceil(float(len(image_list)) / self.batch_size) |
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results = [] |
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for i in range(batch_loop_cnt): |
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start_index = i * self.batch_size |
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end_index = min((i + 1) * self.batch_size, len(image_list)) |
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batch_image_list = image_list[start_index:end_index] |
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if run_benchmark: |
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inputs = self.preprocess(batch_image_list) |
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self.det_times.preprocess_time_s.start() |
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inputs = self.preprocess(batch_image_list) |
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self.det_times.preprocess_time_s.end() |
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result = self.predict(repeats=repeats) |
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self.det_times.inference_time_s.start() |
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result = self.predict(repeats=repeats) |
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self.det_times.inference_time_s.end(repeats=repeats) |
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result_warmup = self.postprocess(inputs, result) |
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self.det_times.postprocess_time_s.start() |
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result = self.postprocess(inputs, result) |
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self.det_times.postprocess_time_s.end() |
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self.det_times.img_num += len(batch_image_list) |
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cm, gm, gu = get_current_memory_mb() |
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self.cpu_mem += cm |
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self.gpu_mem += gm |
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self.gpu_util += gu |
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else: |
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self.det_times.preprocess_time_s.start() |
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inputs = self.preprocess(batch_image_list) |
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self.det_times.preprocess_time_s.end() |
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self.det_times.inference_time_s.start() |
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result = self.predict() |
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self.det_times.inference_time_s.end() |
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self.det_times.postprocess_time_s.start() |
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result = self.postprocess(inputs, result) |
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self.det_times.postprocess_time_s.end() |
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self.det_times.img_num += len(batch_image_list) |
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if visual: |
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visualize( |
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batch_image_list, |
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result, |
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self.pred_config.labels, |
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output_dir=self.output_dir, |
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threshold=self.threshold) |
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results.append(result) |
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if visual: |
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print('Test iter {}'.format(i)) |
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results = self.merge_batch_result(results) |
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return results |
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def predict_video(self, video_file, camera_id): |
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video_out_name = 'output.mp4' |
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if camera_id != -1: |
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capture = cv2.VideoCapture(camera_id) |
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else: |
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capture = cv2.VideoCapture(video_file) |
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video_out_name = os.path.split(video_file)[-1] |
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width = int(capture.get(cv2.CAP_PROP_FRAME_WIDTH)) |
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height = int(capture.get(cv2.CAP_PROP_FRAME_HEIGHT)) |
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fps = int(capture.get(cv2.CAP_PROP_FPS)) |
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frame_count = int(capture.get(cv2.CAP_PROP_FRAME_COUNT)) |
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print("fps: %d, frame_count: %d" % (fps, frame_count)) |
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if not os.path.exists(self.output_dir): |
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os.makedirs(self.output_dir) |
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out_path = os.path.join(self.output_dir, video_out_name) |
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fourcc = cv2.VideoWriter_fourcc(* 'mp4v') |
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writer = cv2.VideoWriter(out_path, fourcc, fps, (width, height)) |
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index = 1 |
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while (1): |
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ret, frame = capture.read() |
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if not ret: |
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break |
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print('detect frame: %d' % (index)) |
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index += 1 |
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results = self.predict_image([frame], visual=False) |
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im = visualize_box_mask( |
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frame, |
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results, |
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self.pred_config.labels, |
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threshold=self.threshold) |
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im = np.array(im) |
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writer.write(im) |
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if camera_id != -1: |
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cv2.imshow('Mask Detection', im) |
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if cv2.waitKey(1) & 0xFF == ord('q'): |
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break |
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writer.release() |
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def create_inputs(imgs, im_info): |
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"""generate input for different model type |
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Args: |
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imgs (list(numpy)): list of images (np.ndarray) |
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im_info (list(dict)): list of image info |
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Returns: |
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inputs (dict): input of model |
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""" |
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inputs = {} |
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im_shape = [] |
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scale_factor = [] |
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if len(imgs) == 1: |
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inputs['image'] = np.array((imgs[0], )).astype('float32') |
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inputs['im_shape'] = np.array( |
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(im_info[0]['im_shape'], )).astype('float32') |
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inputs['scale_factor'] = np.array( |
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(im_info[0]['scale_factor'], )).astype('float32') |
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return inputs |
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for e in im_info: |
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im_shape.append(np.array((e['im_shape'], )).astype('float32')) |
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scale_factor.append(np.array((e['scale_factor'], )).astype('float32')) |
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inputs['im_shape'] = np.concatenate(im_shape, axis=0) |
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inputs['scale_factor'] = np.concatenate(scale_factor, axis=0) |
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imgs_shape = [[e.shape[1], e.shape[2]] for e in imgs] |
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max_shape_h = max([e[0] for e in imgs_shape]) |
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max_shape_w = max([e[1] for e in imgs_shape]) |
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padding_imgs = [] |
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for img in imgs: |
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im_c, im_h, im_w = img.shape[:] |
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padding_im = np.zeros( |
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(im_c, max_shape_h, max_shape_w), dtype=np.float32) |
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padding_im[:, :im_h, :im_w] = img |
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padding_imgs.append(padding_im) |
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inputs['image'] = np.stack(padding_imgs, axis=0) |
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return inputs |
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class PredictConfig(): |
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"""set config of preprocess, postprocess and visualize |
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Args: |
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model_dir (str): root path of model.yml |
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""" |
|
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|
|
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def __init__(self, model_dir): |
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|
|
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deploy_file = os.path.join(model_dir, 'infer_cfg.yml') |
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|
with open(deploy_file) as f: |
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yml_conf = yaml.safe_load(f) |
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self.check_model(yml_conf) |
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self.arch = yml_conf['arch'] |
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self.preprocess_infos = yml_conf['Preprocess'] |
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|
self.min_subgraph_size = yml_conf['min_subgraph_size'] |
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|
self.labels = yml_conf['label_list'] |
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|
self.mask = False |
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|
self.use_dynamic_shape = yml_conf['use_dynamic_shape'] |
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|
if 'mask' in yml_conf: |
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self.mask = yml_conf['mask'] |
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|
self.tracker = None |
|
|
if 'tracker' in yml_conf: |
|
|
self.tracker = yml_conf['tracker'] |
|
|
if 'NMS' in yml_conf: |
|
|
self.nms = yml_conf['NMS'] |
|
|
if 'fpn_stride' in yml_conf: |
|
|
self.fpn_stride = yml_conf['fpn_stride'] |
|
|
self.print_config() |
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|
|
|
def check_model(self, yml_conf): |
|
|
""" |
|
|
Raises: |
|
|
ValueError: loaded model not in supported model type |
|
|
""" |
|
|
for support_model in SUPPORT_MODELS: |
|
|
if support_model in yml_conf['arch']: |
|
|
return True |
|
|
raise ValueError("Unsupported arch: {}, expect {}".format(yml_conf[ |
|
|
'arch'], SUPPORT_MODELS)) |
|
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|
|
|
def print_config(self): |
|
|
print('----------- Model Configuration -----------') |
|
|
print('%s: %s' % ('Model Arch', self.arch)) |
|
|
print('%s: ' % ('Transform Order')) |
|
|
for op_info in self.preprocess_infos: |
|
|
print('--%s: %s' % ('transform op', op_info['type'])) |
|
|
print('--------------------------------------------') |
|
|
|
|
|
|
|
|
def load_predictor(model_dir, |
|
|
run_mode='paddle', |
|
|
batch_size=1, |
|
|
device='CPU', |
|
|
min_subgraph_size=3, |
|
|
use_dynamic_shape=False, |
|
|
trt_min_shape=1, |
|
|
trt_max_shape=1280, |
|
|
trt_opt_shape=640, |
|
|
trt_calib_mode=False, |
|
|
cpu_threads=1, |
|
|
enable_mkldnn=False): |
|
|
"""set AnalysisConfig, generate AnalysisPredictor |
|
|
Args: |
|
|
model_dir (str): root path of __model__ and __params__ |
|
|
device (str): Choose the device you want to run, it can be: CPU/GPU/XPU, default is CPU |
|
|
run_mode (str): mode of running(paddle/trt_fp32/trt_fp16/trt_int8) |
|
|
use_dynamic_shape (bool): use dynamic shape or not |
|
|
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 |
|
|
Returns: |
|
|
predictor (PaddlePredictor): AnalysisPredictor |
|
|
Raises: |
|
|
ValueError: predict by TensorRT need device == 'GPU'. |
|
|
""" |
|
|
if device != 'GPU' and run_mode != 'paddle': |
|
|
raise ValueError( |
|
|
"Predict by TensorRT mode: {}, expect device=='GPU', but device == {}" |
|
|
.format(run_mode, device)) |
|
|
infer_model = os.path.join(model_dir, 'model.pdmodel') |
|
|
infer_params = os.path.join(model_dir, 'model.pdiparams') |
|
|
if not os.path.exists(infer_model): |
|
|
infer_model = os.path.join(model_dir, 'inference.pdmodel') |
|
|
infer_params = os.path.join(model_dir, 'inference.pdiparams') |
|
|
if not os.path.exists(infer_model): |
|
|
raise ValueError( |
|
|
"Cannot find any inference model in dir: {},".format(model_dir)) |
|
|
config = Config(infer_model, infer_params) |
|
|
if device == 'GPU': |
|
|
|
|
|
config.enable_use_gpu(200, 0) |
|
|
|
|
|
config.switch_ir_optim(True) |
|
|
elif device == 'XPU': |
|
|
config.enable_lite_engine() |
|
|
config.enable_xpu(10 * 1024 * 1024) |
|
|
else: |
|
|
config.disable_gpu() |
|
|
config.set_cpu_math_library_num_threads(cpu_threads) |
|
|
if enable_mkldnn: |
|
|
try: |
|
|
|
|
|
config.set_mkldnn_cache_capacity(10) |
|
|
config.enable_mkldnn() |
|
|
except Exception as e: |
|
|
print( |
|
|
"The current environment does not support `mkldnn`, so disable mkldnn." |
|
|
) |
|
|
pass |
|
|
|
|
|
precision_map = { |
|
|
'trt_int8': Config.Precision.Int8, |
|
|
'trt_fp32': Config.Precision.Float32, |
|
|
'trt_fp16': Config.Precision.Half |
|
|
} |
|
|
if run_mode in precision_map.keys(): |
|
|
config.enable_tensorrt_engine( |
|
|
workspace_size=1 << 25, |
|
|
max_batch_size=batch_size, |
|
|
min_subgraph_size=min_subgraph_size, |
|
|
precision_mode=precision_map[run_mode], |
|
|
use_static=False, |
|
|
use_calib_mode=trt_calib_mode) |
|
|
|
|
|
if use_dynamic_shape: |
|
|
min_input_shape = { |
|
|
'image': [batch_size, 3, trt_min_shape, trt_min_shape] |
|
|
} |
|
|
max_input_shape = { |
|
|
'image': [batch_size, 3, trt_max_shape, trt_max_shape] |
|
|
} |
|
|
opt_input_shape = { |
|
|
'image': [batch_size, 3, trt_opt_shape, trt_opt_shape] |
|
|
} |
|
|
config.set_trt_dynamic_shape_info(min_input_shape, max_input_shape, |
|
|
opt_input_shape) |
|
|
print('trt set dynamic shape done!') |
|
|
|
|
|
|
|
|
config.disable_glog_info() |
|
|
|
|
|
config.enable_memory_optim() |
|
|
|
|
|
config.switch_use_feed_fetch_ops(False) |
|
|
predictor = create_predictor(config) |
|
|
return predictor, config |
|
|
|
|
|
|
|
|
def get_test_images(infer_dir, infer_img): |
|
|
""" |
|
|
Get image path list in TEST mode |
|
|
""" |
|
|
assert infer_img is not None or infer_dir is not None, \ |
|
|
"--infer_img or --infer_dir should be set" |
|
|
assert infer_img is None or os.path.isfile(infer_img), \ |
|
|
"{} is not a file".format(infer_img) |
|
|
assert infer_dir is None or os.path.isdir(infer_dir), \ |
|
|
"{} is not a directory".format(infer_dir) |
|
|
|
|
|
|
|
|
if infer_img and os.path.isfile(infer_img): |
|
|
return [infer_img] |
|
|
|
|
|
images = set() |
|
|
infer_dir = os.path.abspath(infer_dir) |
|
|
assert os.path.isdir(infer_dir), \ |
|
|
"infer_dir {} is not a directory".format(infer_dir) |
|
|
exts = ['jpg', 'jpeg', 'png', 'bmp'] |
|
|
exts += [ext.upper() for ext in exts] |
|
|
for ext in exts: |
|
|
images.update(glob.glob('{}/*.{}'.format(infer_dir, ext))) |
|
|
images = list(images) |
|
|
|
|
|
assert len(images) > 0, "no image found in {}".format(infer_dir) |
|
|
print("Found {} inference images in total.".format(len(images))) |
|
|
|
|
|
return images |
|
|
|
|
|
|
|
|
def visualize(image_list, result, labels, output_dir='output/', threshold=0.5): |
|
|
|
|
|
start_idx = 0 |
|
|
for idx, image_file in enumerate(image_list): |
|
|
im_bboxes_num = result['boxes_num'][idx] |
|
|
im_results = {} |
|
|
if 'boxes' in result: |
|
|
im_results['boxes'] = result['boxes'][start_idx:start_idx + |
|
|
im_bboxes_num, :] |
|
|
start_idx += im_bboxes_num |
|
|
im = visualize_box_mask( |
|
|
image_file, im_results, labels, threshold=threshold) |
|
|
img_name = os.path.split(image_file)[-1] |
|
|
if not os.path.exists(output_dir): |
|
|
os.makedirs(output_dir) |
|
|
out_path = os.path.join(output_dir, img_name) |
|
|
im.save(out_path, quality=95) |
|
|
print("save result to: " + out_path) |
|
|
|
|
|
|
|
|
def print_arguments(args): |
|
|
print('----------- Running Arguments -----------') |
|
|
for arg, value in sorted(vars(args).items()): |
|
|
print('%s: %s' % (arg, value)) |
|
|
print('------------------------------------------') |
|
|
|
|
|
|
|
|
def main(): |
|
|
deploy_file = os.path.join(FLAGS.model_dir, 'infer_cfg.yml') |
|
|
with open(deploy_file) as f: |
|
|
yml_conf = yaml.safe_load(f) |
|
|
arch = yml_conf['arch'] |
|
|
detector_func = 'Detector' |
|
|
detector = eval(detector_func)(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, |
|
|
threshold=FLAGS.threshold, |
|
|
output_dir=FLAGS.output_dir) |
|
|
|
|
|
|
|
|
if FLAGS.video_file is not None or FLAGS.camera_id != -1: |
|
|
detector.predict_video(FLAGS.video_file, FLAGS.camera_id) |
|
|
else: |
|
|
|
|
|
if FLAGS.image_dir is None and FLAGS.image_file is not None: |
|
|
assert FLAGS.batch_size == 1, "batch_size should be 1, when image_file is not None" |
|
|
img_list = get_test_images(FLAGS.image_dir, FLAGS.image_file) |
|
|
detector.predict_image(img_list, FLAGS.run_benchmark, repeats=10) |
|
|
if not FLAGS.run_benchmark: |
|
|
detector.det_times.info(average=True) |
|
|
else: |
|
|
mode = FLAGS.run_mode |
|
|
model_dir = FLAGS.model_dir |
|
|
model_info = { |
|
|
'model_name': model_dir.strip('/').split('/')[-1], |
|
|
'precision': mode.split('_')[-1] |
|
|
} |
|
|
bench_log(detector, img_list, model_info, name='DET') |
|
|
|
|
|
|
|
|
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() |
|
|
|