# Copyright (c) 2020 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 sys import copy import time import numpy as np from PIL import Image import paddle import paddle.distributed as dist from paddle.distributed import fleet from paddle import amp from paddle.static import InputSpec from ppdet.optimizer import ModelEMA from ppdet.core.workspace import create from ppdet.utils.checkpoint import load_weight, load_pretrain_weight from ppdet.utils.visualizer import visualize_results, save_result from ppdet.metrics import Metric, COCOMetric, VOCMetric, WiderFaceMetric, get_infer_results, KeyPointTopDownCOCOEval, KeyPointTopDownMPIIEval from ppdet.metrics import RBoxMetric, JDEDetMetric from ppdet.data.source.category import get_categories import ppdet.utils.stats as stats from .callbacks import Callback, ComposeCallback, LogPrinter, Checkpointer, WiferFaceEval, VisualDLWriter from .export_utils import _dump_infer_config from ppdet.utils.logger import setup_logger logger = setup_logger('ppdet.engine') __all__ = ['Trainer'] MOT_ARCH = ['DeepSORT', 'JDE', 'FairMOT'] class Trainer(object): def __init__(self, cfg, mode='train'): self.cfg = cfg assert mode.lower() in ['train', 'eval', 'test'], \ "mode should be 'train', 'eval' or 'test'" self.mode = mode.lower() self.optimizer = None self.is_loaded_weights = False # build data loader if cfg.architecture in MOT_ARCH and self.mode in ['eval', 'test']: self.dataset = cfg['{}MOTDataset'.format(self.mode.capitalize())] else: self.dataset = cfg['{}Dataset'.format(self.mode.capitalize())] if cfg.architecture == 'DeepSORT' and self.mode == 'train': logger.error('DeepSORT has no need of training on mot dataset.') sys.exit(1) if self.mode == 'train': self.loader = create('{}Reader'.format(self.mode.capitalize()))( self.dataset, cfg.worker_num) if cfg.architecture == 'JDE' and self.mode == 'train': cfg['JDEEmbeddingHead'][ 'num_identifiers'] = self.dataset.total_identities if cfg.architecture == 'FairMOT' and self.mode == 'train': cfg['FairMOTEmbeddingHead'][ 'num_identifiers'] = self.dataset.total_identities # build model if 'model' not in self.cfg: self.model = create(cfg.architecture) else: self.model = self.cfg.model self.is_loaded_weights = True self.use_ema = ('use_ema' in cfg and cfg['use_ema']) if self.use_ema: self.ema = ModelEMA( cfg['ema_decay'], self.model, use_thres_step=True) # EvalDataset build with BatchSampler to evaluate in single device # TODO: multi-device evaluate if self.mode == 'eval': self._eval_batch_sampler = paddle.io.BatchSampler( self.dataset, batch_size=self.cfg.EvalReader['batch_size']) self.loader = create('{}Reader'.format(self.mode.capitalize()))( self.dataset, cfg.worker_num, self._eval_batch_sampler) # TestDataset build after user set images, skip loader creation here # build optimizer in train mode if self.mode == 'train': steps_per_epoch = len(self.loader) self.lr = create('LearningRate')(steps_per_epoch) self.optimizer = create('OptimizerBuilder')(self.lr, self.model.parameters()) self._nranks = dist.get_world_size() self._local_rank = dist.get_rank() self.status = {} self.start_epoch = 0 self.end_epoch = 0 if 'epoch' not in cfg else cfg.epoch # initial default callbacks self._init_callbacks() # initial default metrics self._init_metrics() self._reset_metrics() def _init_callbacks(self): if self.mode == 'train': self._callbacks = [LogPrinter(self), Checkpointer(self)] if self.cfg.get('use_vdl', False): self._callbacks.append(VisualDLWriter(self)) self._compose_callback = ComposeCallback(self._callbacks) elif self.mode == 'eval': self._callbacks = [LogPrinter(self)] if self.cfg.metric == 'WiderFace': self._callbacks.append(WiferFaceEval(self)) self._compose_callback = ComposeCallback(self._callbacks) elif self.mode == 'test' and self.cfg.get('use_vdl', False): self._callbacks = [VisualDLWriter(self)] self._compose_callback = ComposeCallback(self._callbacks) else: self._callbacks = [] self._compose_callback = None def _init_metrics(self, validate=False): if self.mode == 'test' or (self.mode == 'train' and not validate): self._metrics = [] return classwise = self.cfg['classwise'] if 'classwise' in self.cfg else False if self.cfg.metric == 'COCO': # TODO: bias should be unified bias = self.cfg['bias'] if 'bias' in self.cfg else 0 output_eval = self.cfg['output_eval'] \ if 'output_eval' in self.cfg else None save_prediction_only = self.cfg.get('save_prediction_only', False) # pass clsid2catid info to metric instance to avoid multiple loading # annotation file clsid2catid = {v: k for k, v in self.dataset.catid2clsid.items()} \ if self.mode == 'eval' else None # when do validation in train, annotation file should be get from # EvalReader instead of self.dataset(which is TrainReader) anno_file = self.dataset.get_anno() if self.mode == 'train' and validate: eval_dataset = self.cfg['EvalDataset'] eval_dataset.check_or_download_dataset() anno_file = eval_dataset.get_anno() IouType = self.cfg['IouType'] if 'IouType' in self.cfg else 'bbox' self._metrics = [ COCOMetric( anno_file=anno_file, clsid2catid=clsid2catid, classwise=classwise, output_eval=output_eval, bias=bias, IouType=IouType, save_prediction_only=save_prediction_only) ] elif self.cfg.metric == 'RBOX': # TODO: bias should be unified bias = self.cfg['bias'] if 'bias' in self.cfg else 0 output_eval = self.cfg['output_eval'] \ if 'output_eval' in self.cfg else None save_prediction_only = self.cfg.get('save_prediction_only', False) # pass clsid2catid info to metric instance to avoid multiple loading # annotation file clsid2catid = {v: k for k, v in self.dataset.catid2clsid.items()} \ if self.mode == 'eval' else None # when do validation in train, annotation file should be get from # EvalReader instead of self.dataset(which is TrainReader) anno_file = self.dataset.get_anno() if self.mode == 'train' and validate: eval_dataset = self.cfg['EvalDataset'] eval_dataset.check_or_download_dataset() anno_file = eval_dataset.get_anno() self._metrics = [ RBoxMetric( anno_file=anno_file, clsid2catid=clsid2catid, classwise=classwise, output_eval=output_eval, bias=bias, save_prediction_only=save_prediction_only) ] elif self.cfg.metric == 'VOC': self._metrics = [ VOCMetric( label_list=self.dataset.get_label_list(), class_num=self.cfg.num_classes, map_type=self.cfg.map_type, classwise=classwise) ] elif self.cfg.metric == 'WiderFace': multi_scale = self.cfg.multi_scale_eval if 'multi_scale_eval' in self.cfg else True self._metrics = [ WiderFaceMetric( image_dir=os.path.join(self.dataset.dataset_dir, self.dataset.image_dir), anno_file=self.dataset.get_anno(), multi_scale=multi_scale) ] elif self.cfg.metric == 'KeyPointTopDownCOCOEval': eval_dataset = self.cfg['EvalDataset'] eval_dataset.check_or_download_dataset() anno_file = eval_dataset.get_anno() save_prediction_only = self.cfg.get('save_prediction_only', False) self._metrics = [ KeyPointTopDownCOCOEval( anno_file, len(eval_dataset), self.cfg.num_joints, self.cfg.save_dir, save_prediction_only=save_prediction_only) ] elif self.cfg.metric == 'KeyPointTopDownMPIIEval': eval_dataset = self.cfg['EvalDataset'] eval_dataset.check_or_download_dataset() anno_file = eval_dataset.get_anno() save_prediction_only = self.cfg.get('save_prediction_only', False) self._metrics = [ KeyPointTopDownMPIIEval( anno_file, len(eval_dataset), self.cfg.num_joints, self.cfg.save_dir, save_prediction_only=save_prediction_only) ] elif self.cfg.metric == 'MOTDet': self._metrics = [JDEDetMetric(), ] else: logger.warning("Metric not support for metric type {}".format( self.cfg.metric)) self._metrics = [] def _reset_metrics(self): for metric in self._metrics: metric.reset() def register_callbacks(self, callbacks): callbacks = [c for c in list(callbacks) if c is not None] for c in callbacks: assert isinstance(c, Callback), \ "metrics shoule be instances of subclass of Metric" self._callbacks.extend(callbacks) self._compose_callback = ComposeCallback(self._callbacks) def register_metrics(self, metrics): metrics = [m for m in list(metrics) if m is not None] for m in metrics: assert isinstance(m, Metric), \ "metrics shoule be instances of subclass of Metric" self._metrics.extend(metrics) def load_weights(self, weights): if self.is_loaded_weights: return self.start_epoch = 0 load_pretrain_weight(self.model, weights) logger.debug("Load weights {} to start training".format(weights)) def load_weights_sde(self, det_weights, reid_weights): if self.model.detector: load_weight(self.model.detector, det_weights) load_weight(self.model.reid, reid_weights) else: load_weight(self.model.reid, reid_weights) def resume_weights(self, weights): # support Distill resume weights if hasattr(self.model, 'student_model'): self.start_epoch = load_weight(self.model.student_model, weights, self.optimizer) else: self.start_epoch = load_weight(self.model, weights, self.optimizer) logger.debug("Resume weights of epoch {}".format(self.start_epoch)) def train(self, validate=False): assert self.mode == 'train', "Model not in 'train' mode" Init_mark = False model = self.model if self.cfg.get('fleet', False): model = fleet.distributed_model(model) self.optimizer = fleet.distributed_optimizer(self.optimizer) elif self._nranks > 1: find_unused_parameters = self.cfg[ 'find_unused_parameters'] if 'find_unused_parameters' in self.cfg else False model = paddle.DataParallel( self.model, find_unused_parameters=find_unused_parameters) # initial fp16 if self.cfg.get('fp16', False): scaler = amp.GradScaler( enable=self.cfg.use_gpu, init_loss_scaling=1024) self.status.update({ 'epoch_id': self.start_epoch, 'step_id': 0, 'steps_per_epoch': len(self.loader) }) self.status['batch_time'] = stats.SmoothedValue( self.cfg.log_iter, fmt='{avg:.4f}') self.status['data_time'] = stats.SmoothedValue( self.cfg.log_iter, fmt='{avg:.4f}') self.status['training_staus'] = stats.TrainingStats(self.cfg.log_iter) if self.cfg.get('print_flops', False): self._flops(self.loader) for epoch_id in range(self.start_epoch, self.cfg.epoch): self.status['mode'] = 'train' self.status['epoch_id'] = epoch_id self._compose_callback.on_epoch_begin(self.status) self.loader.dataset.set_epoch(epoch_id) model.train() iter_tic = time.time() for step_id, data in enumerate(self.loader): self.status['data_time'].update(time.time() - iter_tic) self.status['step_id'] = step_id self._compose_callback.on_step_begin(self.status) if self.cfg.get('fp16', False): with amp.auto_cast(enable=self.cfg.use_gpu): # model forward outputs = model(data) loss = outputs['loss'] # model backward scaled_loss = scaler.scale(loss) scaled_loss.backward() # in dygraph mode, optimizer.minimize is equal to optimizer.step scaler.minimize(self.optimizer, scaled_loss) else: # model forward outputs = model(data) loss = outputs['loss'] # model backward loss.backward() self.optimizer.step() curr_lr = self.optimizer.get_lr() self.lr.step() self.optimizer.clear_grad() self.status['learning_rate'] = curr_lr if self._nranks < 2 or self._local_rank == 0: self.status['training_staus'].update(outputs) self.status['batch_time'].update(time.time() - iter_tic) self._compose_callback.on_step_end(self.status) if self.use_ema: self.ema.update(self.model) iter_tic = time.time() # apply ema weight on model if self.use_ema: weight = copy.deepcopy(self.model.state_dict()) self.model.set_dict(self.ema.apply()) self._compose_callback.on_epoch_end(self.status) if validate and (self._nranks < 2 or self._local_rank == 0) \ and ((epoch_id + 1) % self.cfg.snapshot_epoch == 0 \ or epoch_id == self.end_epoch - 1): if not hasattr(self, '_eval_loader'): # build evaluation dataset and loader self._eval_dataset = self.cfg.EvalDataset self._eval_batch_sampler = \ paddle.io.BatchSampler( self._eval_dataset, batch_size=self.cfg.EvalReader['batch_size']) self._eval_loader = create('EvalReader')( self._eval_dataset, self.cfg.worker_num, batch_sampler=self._eval_batch_sampler) # if validation in training is enabled, metrics should be re-init # Init_mark makes sure this code will only execute once if validate and Init_mark == False: Init_mark = True self._init_metrics(validate=validate) self._reset_metrics() with paddle.no_grad(): self.status['save_best_model'] = True self._eval_with_loader(self._eval_loader) # restore origin weight on model if self.use_ema: self.model.set_dict(weight) def _eval_with_loader(self, loader): sample_num = 0 tic = time.time() self._compose_callback.on_epoch_begin(self.status) self.status['mode'] = 'eval' self.model.eval() if self.cfg.get('print_flops', False): self._flops(loader) for step_id, data in enumerate(loader): self.status['step_id'] = step_id self._compose_callback.on_step_begin(self.status) # forward outs = self.model(data) # update metrics for metric in self._metrics: metric.update(data, outs) sample_num += data['im_id'].numpy().shape[0] self._compose_callback.on_step_end(self.status) self.status['sample_num'] = sample_num self.status['cost_time'] = time.time() - tic # accumulate metric to log out for metric in self._metrics: metric.accumulate() metric.log() self._compose_callback.on_epoch_end(self.status) # reset metric states for metric may performed multiple times self._reset_metrics() def evaluate(self): with paddle.no_grad(): self._eval_with_loader(self.loader) def predict(self, images, draw_threshold=0.5, output_dir='output', save_txt=False): self.dataset.set_images(images) loader = create('TestReader')(self.dataset, 0) imid2path = self.dataset.get_imid2path() anno_file = self.dataset.get_anno() clsid2catid, catid2name = get_categories( self.cfg.metric, anno_file=anno_file) # Run Infer self.status['mode'] = 'test' self.model.eval() if self.cfg.get('print_flops', False): self._flops(loader) for step_id, data in enumerate(loader): self.status['step_id'] = step_id # forward outs = self.model(data) for key in ['im_shape', 'scale_factor', 'im_id']: outs[key] = data[key] for key, value in outs.items(): if hasattr(value, 'numpy'): outs[key] = value.numpy() batch_res = get_infer_results(outs, clsid2catid) bbox_num = outs['bbox_num'] start = 0 for i, im_id in enumerate(outs['im_id']): image_path = imid2path[int(im_id)] image = Image.open(image_path).convert('RGB') self.status['original_image'] = np.array(image.copy()) end = start + bbox_num[i] bbox_res = batch_res['bbox'][start:end] \ if 'bbox' in batch_res else None mask_res = batch_res['mask'][start:end] \ if 'mask' in batch_res else None segm_res = batch_res['segm'][start:end] \ if 'segm' in batch_res else None keypoint_res = batch_res['keypoint'][start:end] \ if 'keypoint' in batch_res else None image = visualize_results( image, bbox_res, mask_res, segm_res, keypoint_res, int(im_id), catid2name, draw_threshold) self.status['result_image'] = np.array(image.copy()) if self._compose_callback: self._compose_callback.on_step_end(self.status) # save image with detection save_name = self._get_save_image_name(output_dir, image_path) logger.info("Detection bbox results save in {}".format( save_name)) image.save(save_name, quality=95) if save_txt: save_path = os.path.splitext(save_name)[0] + '.txt' results = {} results["im_id"] = im_id if bbox_res: results["bbox_res"] = bbox_res if keypoint_res: results["keypoint_res"] = keypoint_res save_result(save_path, results, catid2name, draw_threshold) start = end def _get_save_image_name(self, output_dir, image_path): """ Get save image name from source image path. """ if not os.path.exists(output_dir): os.makedirs(output_dir) image_name = os.path.split(image_path)[-1] name, ext = os.path.splitext(image_name) return os.path.join(output_dir, "{}".format(name)) + ext def export(self, output_dir='output_inference'): self.model.eval() model_name = os.path.splitext(os.path.split(self.cfg.filename)[-1])[0] save_dir = os.path.join(output_dir, model_name) if not os.path.exists(save_dir): os.makedirs(save_dir) image_shape = None if self.cfg.architecture in MOT_ARCH: test_reader_name = 'TestMOTReader' else: test_reader_name = 'TestReader' if 'inputs_def' in self.cfg[test_reader_name]: inputs_def = self.cfg[test_reader_name]['inputs_def'] image_shape = inputs_def.get('image_shape', None) # set image_shape=[3, -1, -1] as default if image_shape is None: image_shape = [3, -1, -1] self.model.eval() if hasattr(self.model, 'deploy'): self.model.deploy = True # Save infer cfg _dump_infer_config(self.cfg, os.path.join(save_dir, 'infer_cfg.yml'), image_shape, self.model) input_spec = [{ "image": InputSpec( shape=[None] + image_shape, name='image'), "im_shape": InputSpec( shape=[None, 2], name='im_shape'), "scale_factor": InputSpec( shape=[None, 2], name='scale_factor') }] if self.cfg.architecture == 'DeepSORT': input_spec[0].update({ "crops": InputSpec( shape=[None, 3, 192, 64], name='crops') }) static_model = paddle.jit.to_static(self.model, input_spec=input_spec) # NOTE: dy2st do not pruned program, but jit.save will prune program # input spec, prune input spec here and save with pruned input spec pruned_input_spec = self._prune_input_spec( input_spec, static_model.forward.main_program, static_model.forward.outputs) # dy2st and save model if 'slim' not in self.cfg or self.cfg['slim_type'] != 'QAT': paddle.jit.save( static_model, os.path.join(save_dir, 'model'), input_spec=pruned_input_spec) else: self.cfg.slim.save_quantized_model( self.model, os.path.join(save_dir, 'model'), input_spec=pruned_input_spec) logger.info("Export model and saved in {}".format(save_dir)) def _prune_input_spec(self, input_spec, program, targets): # try to prune static program to figure out pruned input spec # so we perform following operations in static mode paddle.enable_static() pruned_input_spec = [{}] program = program.clone() program = program._prune(targets=targets) global_block = program.global_block() for name, spec in input_spec[0].items(): try: v = global_block.var(name) pruned_input_spec[0][name] = spec except Exception: pass paddle.disable_static() return pruned_input_spec def _flops(self, loader): self.model.eval() try: import paddleslim except Exception as e: logger.warning( 'Unable to calculate flops, please install paddleslim, for example: `pip install paddleslim`' ) return from paddleslim.analysis import dygraph_flops as flops input_data = None for data in loader: input_data = data break input_spec = [{ "image": input_data['image'][0].unsqueeze(0), "im_shape": input_data['im_shape'][0].unsqueeze(0), "scale_factor": input_data['scale_factor'][0].unsqueeze(0) }] flops = flops(self.model, input_spec) / (1000**3) logger.info(" Model FLOPs : {:.6f}G. (image shape is {})".format( flops, input_data['image'][0].unsqueeze(0).shape))