Esempio n. 1
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    def init_weights(self, pretrained=None):
        """Initialize the weights for detector.

        Args:
            pretrained (str, optional): Path to pre-trained weights.
                Defaults to None.
        """
        if pretrained is not None:
            logger = get_root_logger()
            print_log(f'load model from: {pretrained}', logger=logger)
Esempio n. 2
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    def init_weights(self, pretrained=None):
        """Initialize the weights in backbone.

        Args:
            pretrained (str, optional): Path to pre-trained weights.
                Defaults to None.
        """
        if isinstance(pretrained, str):
            logger = get_root_logger()
            load_checkpoint(self, pretrained, strict=False, logger=logger)
        elif pretrained is None:
            for m in self.modules():
                if isinstance(m, nn.Conv2d):
                    kaiming_init(m)
                elif isinstance(m, (_BatchNorm, nn.GroupNorm)):
                    constant_init(m, 1)
        else:
            raise TypeError('pretrained must be a str or None')
Esempio n. 3
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def main():
    parser = ArgumentParser()
    parser.add_argument('img_root_path', type=str, help='Image root path')
    parser.add_argument('img_list', type=str, help='Image path list file')
    parser.add_argument('config', type=str, help='Config file')
    parser.add_argument('checkpoint', type=str, help='Checkpoint file')
    parser.add_argument(
        '--out-dir', type=str, default='./results', help='Dir to save results')
    parser.add_argument(
        '--show', action='store_true', help='show image or save')
    parser.add_argument(
        '--device', default='cuda:0', help='Device used for inference.')
    args = parser.parse_args()

    # init the logger before other steps
    timestamp = time.strftime('%Y%m%d_%H%M%S', time.localtime())
    log_file = osp.join(args.out_dir, f'{timestamp}.log')
    logger = get_root_logger(log_file=log_file, log_level='INFO')

    # build the model from a config file and a checkpoint file
    model = init_detector(args.config, args.checkpoint, device=args.device)
    if hasattr(model, 'module'):
        model = model.module

    # Start Inference
    out_vis_dir = osp.join(args.out_dir, 'out_vis_dir')
    mmcv.mkdir_or_exist(out_vis_dir)
    correct_vis_dir = osp.join(args.out_dir, 'correct')
    mmcv.mkdir_or_exist(correct_vis_dir)
    wrong_vis_dir = osp.join(args.out_dir, 'wrong')
    mmcv.mkdir_or_exist(wrong_vis_dir)
    img_paths, pred_labels, gt_labels = [], [], []

    lines = list_from_file(args.img_list)
    progressbar = ProgressBar(task_num=len(lines))
    num_gt_label = 0
    for line in lines:
        progressbar.update()
        item_list = line.strip().split()
        img_file = item_list[0]
        gt_label = ''
        if len(item_list) >= 2:
            gt_label = item_list[1]
            num_gt_label += 1
        img_path = osp.join(args.img_root_path, img_file)
        if not osp.exists(img_path):
            raise FileNotFoundError(img_path)
        # Test a single image
        result = model_inference(model, img_path)
        pred_label = result['text']

        out_img_name = '_'.join(img_file.split('/'))
        out_file = osp.join(out_vis_dir, out_img_name)
        kwargs_dict = {
            'gt_label': gt_label,
            'show': args.show,
            'out_file': '' if args.show else out_file
        }
        model.show_result(img_path, result, **kwargs_dict)
        if gt_label != '':
            if gt_label == pred_label:
                dst_file = osp.join(correct_vis_dir, out_img_name)
            else:
                dst_file = osp.join(wrong_vis_dir, out_img_name)
            shutil.copy(out_file, dst_file)
        img_paths.append(img_path)
        gt_labels.append(gt_label)
        pred_labels.append(pred_label)

    # Save results
    save_results(img_paths, pred_labels, gt_labels, args.out_dir)

    if num_gt_label == len(pred_labels):
        # eval
        eval_results = eval_ocr_metric(pred_labels, gt_labels)
        logger.info('\n' + '-' * 100)
        info = ('eval on testset with img_root_path '
                f'{args.img_root_path} and img_list {args.img_list}\n')
        logger.info(info)
        logger.info(eval_results)

    print(f'\nInference done, and results saved in {args.out_dir}\n')
Esempio n. 4
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def main():
    args = parse_args()

    cfg = Config.fromfile(args.config)
    if args.cfg_options is not None:
        cfg.merge_from_dict(args.cfg_options)

    # update mc config
    if args.mc_config:
        mc = Config.fromfile(args.mc_config)
        if isinstance(cfg.data.train, list):
            for i in range(len(cfg.data.train)):
                cfg.data.train[i].pipeline[0].update(
                    file_client_args=mc['mc_file_client_args'])
        else:
            cfg.data.train.pipeline[0].update(
                file_client_args=mc['mc_file_client_args'])

    # set cudnn_benchmark
    if cfg.get('cudnn_benchmark', False):
        torch.backends.cudnn.benchmark = True

    # work_dir is determined in this priority: CLI > segment in file > filename
    if args.work_dir is not None:
        # update configs according to CLI args if args.work_dir is not None
        cfg.work_dir = args.work_dir
    elif cfg.get('work_dir', None) is None:
        # use config filename as default work_dir if cfg.work_dir is None
        cfg.work_dir = osp.join('./work_dirs',
                                osp.splitext(osp.basename(args.config))[0])
    if args.load_from is not None:
        cfg.load_from = args.load_from
    if args.resume_from is not None:
        cfg.resume_from = args.resume_from
    if args.gpu_ids is not None:
        cfg.gpu_ids = args.gpu_ids
    else:
        cfg.gpu_ids = range(1) if args.gpus is None else range(args.gpus)

    # init distributed env first, since logger depends on the dist info.
    if args.launcher == 'none':
        distributed = False
    else:
        distributed = True
        init_dist(args.launcher, **cfg.dist_params)
        # re-set gpu_ids with distributed training mode
        _, world_size = get_dist_info()
        cfg.gpu_ids = range(world_size)

    # create work_dir
    mmcv.mkdir_or_exist(osp.abspath(cfg.work_dir))
    # dump config
    cfg.dump(osp.join(cfg.work_dir, osp.basename(args.config)))
    # init the logger before other steps
    timestamp = time.strftime('%Y%m%d_%H%M%S', time.localtime())
    log_file = osp.join(cfg.work_dir, f'{timestamp}.log')
    logger = get_root_logger(log_file=log_file, log_level=cfg.log_level)

    # init the meta dict to record some important information such as
    # environment info and seed, which will be logged
    meta = dict()
    # log env info
    env_info_dict = collect_env()
    env_info = '\n'.join([(f'{k}: {v}') for k, v in env_info_dict.items()])
    dash_line = '-' * 60 + '\n'
    logger.info('Environment info:\n' + dash_line + env_info + '\n' +
                dash_line)
    meta['env_info'] = env_info
    meta['config'] = cfg.pretty_text
    # log some basic info
    logger.info(f'Distributed training: {distributed}')
    logger.info(f'Config:\n{cfg.pretty_text}')

    # set random seeds
    seed = init_random_seed(args.seed)
    logger.info(f'Set random seed to {seed}, '
                f'deterministic: {args.deterministic}')
    set_random_seed(seed, deterministic=args.deterministic)
    cfg.seed = seed
    meta['seed'] = seed
    meta['exp_name'] = osp.basename(args.config)

    model = build_detector(cfg.model,
                           train_cfg=cfg.get('train_cfg'),
                           test_cfg=cfg.get('test_cfg'))
    model.init_weights()

    datasets = [build_dataset(cfg.data.train)]
    if len(cfg.workflow) == 2:
        val_dataset = copy.deepcopy(cfg.data.val)
        if cfg.data.train['type'] == 'ConcatDataset':
            train_pipeline = cfg.data.train['datasets'][0].pipeline
        else:
            train_pipeline = cfg.data.train.pipeline

        if val_dataset['type'] == 'ConcatDataset':
            for dataset in val_dataset['datasets']:
                dataset.pipeline = train_pipeline
        else:
            val_dataset.pipeline = train_pipeline
        datasets.append(build_dataset(val_dataset))
    if cfg.checkpoint_config is not None:
        # save mmdet version, config file content and class names in
        # checkpoints as meta data
        cfg.checkpoint_config.meta = dict(mmocr_version=__version__ +
                                          get_git_hash()[:7],
                                          CLASSES=datasets[0].CLASSES)
    # add an attribute for visualization convenience
    model.CLASSES = datasets[0].CLASSES
    train_detector(model,
                   datasets,
                   cfg,
                   distributed=distributed,
                   validate=(not args.no_validate),
                   timestamp=timestamp,
                   meta=meta)
Esempio n. 5
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def train_detector(model,
                   dataset,
                   cfg,
                   distributed=False,
                   validate=False,
                   timestamp=None,
                   meta=None):
    logger = get_root_logger(cfg.log_level)

    # prepare data loaders
    dataset = dataset if isinstance(dataset, (list, tuple)) else [dataset]
    if 'imgs_per_gpu' in cfg.data:
        logger.warning('"imgs_per_gpu" is deprecated in MMDet V2.0. '
                       'Please use "samples_per_gpu" instead')
        if 'samples_per_gpu' in cfg.data:
            logger.warning(
                f'Got "imgs_per_gpu"={cfg.data.imgs_per_gpu} and '
                f'"samples_per_gpu"={cfg.data.samples_per_gpu}, "imgs_per_gpu"'
                f'={cfg.data.imgs_per_gpu} is used in this experiments')
        else:
            logger.warning(
                'Automatically set "samples_per_gpu"="imgs_per_gpu"='
                f'{cfg.data.imgs_per_gpu} in this experiments')
        cfg.data.samples_per_gpu = cfg.data.imgs_per_gpu

    data_loaders = [
        build_dataloader(
            ds,
            cfg.data.samples_per_gpu,
            cfg.data.workers_per_gpu,
            # cfg.gpus will be ignored if distributed
            len(cfg.gpu_ids),
            dist=distributed,
            seed=cfg.seed) for ds in dataset
    ]

    # put model on gpus
    if distributed:
        find_unused_parameters = cfg.get('find_unused_parameters', False)
        # Sets the `find_unused_parameters` parameter in
        # torch.nn.parallel.DistributedDataParallel
        model = MMDistributedDataParallel(
            model.cuda(),
            device_ids=[torch.cuda.current_device()],
            broadcast_buffers=False,
            find_unused_parameters=find_unused_parameters)
    else:
        model = MMDataParallel(model.cuda(cfg.gpu_ids[0]),
                               device_ids=cfg.gpu_ids)

    # build runner
    optimizer = build_optimizer(model, cfg.optimizer)

    if 'runner' not in cfg:
        cfg.runner = {
            'type': 'EpochBasedRunner',
            'max_epochs': cfg.total_epochs
        }
        warnings.warn(
            'config is now expected to have a `runner` section, '
            'please set `runner` in your config.', UserWarning)
    else:
        if 'total_epochs' in cfg:
            assert cfg.total_epochs == cfg.runner.max_epochs

    runner = build_runner(cfg.runner,
                          default_args=dict(model=model,
                                            optimizer=optimizer,
                                            work_dir=cfg.work_dir,
                                            logger=logger,
                                            meta=meta))

    # an ugly workaround to make .log and .log.json filenames the same
    runner.timestamp = timestamp

    # fp16 setting
    fp16_cfg = cfg.get('fp16', None)
    if fp16_cfg is not None:
        optimizer_config = Fp16OptimizerHook(**cfg.optimizer_config,
                                             **fp16_cfg,
                                             distributed=distributed)
    elif distributed and 'type' not in cfg.optimizer_config:
        optimizer_config = OptimizerHook(**cfg.optimizer_config)
    else:
        optimizer_config = cfg.optimizer_config

    # register hooks
    runner.register_training_hooks(cfg.lr_config, optimizer_config,
                                   cfg.checkpoint_config, cfg.log_config,
                                   cfg.get('momentum_config', None))
    if distributed:
        if isinstance(runner, EpochBasedRunner):
            runner.register_hook(DistSamplerSeedHook())

    # register eval hooks
    if validate:
        # Support batch_size > 1 in validation
        val_samples_per_gpu = cfg.data.val.pop('samples_per_gpu', 1)
        if val_samples_per_gpu > 1:
            # Replace 'ImageToTensor' to 'DefaultFormatBundle'
            cfg.data.val.pipeline = replace_ImageToTensor(
                cfg.data.val.pipeline)
        val_dataset = build_dataset(cfg.data.val, dict(test_mode=True))
        val_dataloader = build_dataloader(
            val_dataset,
            samples_per_gpu=val_samples_per_gpu,
            workers_per_gpu=cfg.data.workers_per_gpu,
            dist=distributed,
            shuffle=False)
        eval_cfg = cfg.get('evaluation', {})
        eval_cfg['by_epoch'] = cfg.runner['type'] != 'IterBasedRunner'
        eval_hook = DistEvalHook if distributed else EvalHook
        runner.register_hook(eval_hook(val_dataloader, **eval_cfg))

    # user-defined hooks
    if cfg.get('custom_hooks', None):
        custom_hooks = cfg.custom_hooks
        assert isinstance(custom_hooks, list), \
            f'custom_hooks expect list type, but got {type(custom_hooks)}'
        for hook_cfg in cfg.custom_hooks:
            assert isinstance(hook_cfg, dict), \
                'Each item in custom_hooks expects dict type, but got ' \
                f'{type(hook_cfg)}'
            hook_cfg = hook_cfg.copy()
            priority = hook_cfg.pop('priority', 'NORMAL')
            hook = build_from_cfg(hook_cfg, HOOKS)
            runner.register_hook(hook, priority=priority)

    if cfg.resume_from:
        runner.resume(cfg.resume_from)
    elif cfg.load_from:
        runner.load_checkpoint(cfg.load_from)
    runner.run(data_loaders, cfg.workflow)
Esempio n. 6
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def train_detector(model,
                   dataset,
                   cfg,
                   distributed=False,
                   validate=False,
                   timestamp=None,
                   meta=None):
    logger = get_root_logger(cfg.log_level)

    # prepare data loaders
    dataset = dataset if isinstance(dataset, (list, tuple)) else [dataset]
    # step 1: give default values and override (if exist) from cfg.data
    loader_cfg = {
        **dict(
            seed=cfg.get('seed'),
            drop_last=False,
            dist=distributed,
            num_gpus=len(cfg.gpu_ids)),
        **({} if torch.__version__ != 'parrots' else dict(
               prefetch_num=2,
               pin_memory=False,
           )),
        **dict((k, cfg.data[k]) for k in [
                   'samples_per_gpu',
                   'workers_per_gpu',
                   'shuffle',
                   'seed',
                   'drop_last',
                   'prefetch_num',
                   'pin_memory',
               ] if k in cfg.data)
    }

    # step 2: cfg.data.train_dataloader has highest priority
    train_loader_cfg = dict(loader_cfg, **cfg.data.get('train_dataloader', {}))

    data_loaders = [build_dataloader(ds, **train_loader_cfg) for ds in dataset]

    # put model on gpus
    if distributed:
        find_unused_parameters = cfg.get('find_unused_parameters', False)
        # Sets the `find_unused_parameters` parameter in
        # torch.nn.parallel.DistributedDataParallel
        model = MMDistributedDataParallel(
            model.cuda(),
            device_ids=[torch.cuda.current_device()],
            broadcast_buffers=False,
            find_unused_parameters=find_unused_parameters)
    else:
        model = MMDataParallel(
            model.cuda(cfg.gpu_ids[0]), device_ids=cfg.gpu_ids)

    # build runner
    optimizer = build_optimizer(model, cfg.optimizer)

    if 'runner' not in cfg:
        cfg.runner = {
            'type': 'EpochBasedRunner',
            'max_epochs': cfg.total_epochs
        }
        warnings.warn(
            'config is now expected to have a `runner` section, '
            'please set `runner` in your config.', UserWarning)
    else:
        if 'total_epochs' in cfg:
            assert cfg.total_epochs == cfg.runner.max_epochs

    runner = build_runner(
        cfg.runner,
        default_args=dict(
            model=model,
            optimizer=optimizer,
            work_dir=cfg.work_dir,
            logger=logger,
            meta=meta))

    # an ugly workaround to make .log and .log.json filenames the same
    runner.timestamp = timestamp

    # fp16 setting
    fp16_cfg = cfg.get('fp16', None)
    if fp16_cfg is not None:
        optimizer_config = Fp16OptimizerHook(
            **cfg.optimizer_config, **fp16_cfg, distributed=distributed)
    elif distributed and 'type' not in cfg.optimizer_config:
        optimizer_config = OptimizerHook(**cfg.optimizer_config)
    else:
        optimizer_config = cfg.optimizer_config

    # register hooks
    runner.register_training_hooks(cfg.lr_config, optimizer_config,
                                   cfg.checkpoint_config, cfg.log_config,
                                   cfg.get('momentum_config', None))
    if distributed:
        if isinstance(runner, EpochBasedRunner):
            runner.register_hook(DistSamplerSeedHook())

    # register eval hooks
    if validate:
        val_samples_per_gpu = (cfg.data.get('val_dataloader', {})).get(
            'samples_per_gpu', cfg.data.get('samples_per_gpu', 1))
        if val_samples_per_gpu > 1:
            # Support batch_size > 1 in test for text recognition
            # by disable MultiRotateAugOCR since it is useless for most case
            cfg = disable_text_recog_aug_test(cfg)
            if cfg.data.val.get('pipeline', None) is not None:
                # Replace 'ImageToTensor' to 'DefaultFormatBundle'
                cfg.data.val.pipeline = replace_ImageToTensor(
                    cfg.data.val.pipeline)

        val_dataset = build_dataset(cfg.data.val, dict(test_mode=True))

        val_loader_cfg = {
            **loader_cfg,
            **dict(shuffle=False, drop_last=False),
            **cfg.data.get('val_dataloader', {}),
            **dict(samples_per_gpu=val_samples_per_gpu)
        }

        val_dataloader = build_dataloader(val_dataset, **val_loader_cfg)

        eval_cfg = cfg.get('evaluation', {})
        eval_cfg['by_epoch'] = cfg.runner['type'] != 'IterBasedRunner'
        eval_hook = DistEvalHook if distributed else EvalHook
        runner.register_hook(eval_hook(val_dataloader, **eval_cfg))

    # user-defined hooks
    if cfg.get('custom_hooks', None):
        custom_hooks = cfg.custom_hooks
        assert isinstance(custom_hooks, list), \
            f'custom_hooks expect list type, but got {type(custom_hooks)}'
        for hook_cfg in cfg.custom_hooks:
            assert isinstance(hook_cfg, dict), \
                'Each item in custom_hooks expects dict type, but got ' \
                f'{type(hook_cfg)}'
            hook_cfg = hook_cfg.copy()
            priority = hook_cfg.pop('priority', 'NORMAL')
            hook = build_from_cfg(hook_cfg, HOOKS)
            runner.register_hook(hook, priority=priority)

    if cfg.resume_from:
        runner.resume(cfg.resume_from)
    elif cfg.load_from:
        runner.load_checkpoint(cfg.load_from)
    runner.run(data_loaders, cfg.workflow)
Esempio n. 7
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def train_detector(model,
                   dataset,
                   cfg,
                   distributed=False,
                   validate=False,
                   timestamp=None,
                   meta=None):
    logger = get_root_logger(cfg.log_level)

    # prepare data loaders
    dataset = dataset if isinstance(dataset, (list, tuple)) else [dataset]
    # step 1: give default values and override (if exist) from cfg.data
    default_loader_cfg = {
        **dict(num_gpus=len(cfg.gpu_ids),
               dist=distributed,
               seed=cfg.get('seed'),
               drop_last=False,
               persistent_workers=False),
        **({} if torch.__version__ != 'parrots' else dict(
               prefetch_num=2,
               pin_memory=False,
           )),
    }
    # update overall dataloader(for train, val and test) setting
    default_loader_cfg.update({
        k: v
        for k, v in cfg.data.items() if k not in [
            'train', 'val', 'test', 'train_dataloader', 'val_dataloader',
            'test_dataloader'
        ]
    })

    # step 2: cfg.data.train_dataloader has highest priority
    train_loader_cfg = dict(default_loader_cfg,
                            **cfg.data.get('train_dataloader', {}))

    data_loaders = [build_dataloader(ds, **train_loader_cfg) for ds in dataset]

    # put model on gpus
    if distributed:
        find_unused_parameters = cfg.get('find_unused_parameters', False)
        # Sets the `find_unused_parameters` parameter in
        # torch.nn.parallel.DistributedDataParallel
        model = MMDistributedDataParallel(
            model.cuda(),
            device_ids=[torch.cuda.current_device()],
            broadcast_buffers=False,
            find_unused_parameters=find_unused_parameters)
    else:
        if not torch.cuda.is_available():
            assert digit_version(mmcv.__version__) >= digit_version('1.4.4'), \
                'Please use MMCV >= 1.4.4 for CPU training!'
        model = MMDataParallel(model, device_ids=cfg.gpu_ids)

    # build runner
    optimizer = build_optimizer(model, cfg.optimizer)

    if 'runner' not in cfg:
        cfg.runner = {
            'type': 'EpochBasedRunner',
            'max_epochs': cfg.total_epochs
        }
        warnings.warn(
            'config is now expected to have a `runner` section, '
            'please set `runner` in your config.', UserWarning)
    else:
        if 'total_epochs' in cfg:
            assert cfg.total_epochs == cfg.runner.max_epochs

    runner = build_runner(cfg.runner,
                          default_args=dict(model=model,
                                            optimizer=optimizer,
                                            work_dir=cfg.work_dir,
                                            logger=logger,
                                            meta=meta))

    # an ugly workaround to make .log and .log.json filenames the same
    runner.timestamp = timestamp

    # fp16 setting
    fp16_cfg = cfg.get('fp16', None)
    if fp16_cfg is not None:
        optimizer_config = Fp16OptimizerHook(**cfg.optimizer_config,
                                             **fp16_cfg,
                                             distributed=distributed)
    elif distributed and 'type' not in cfg.optimizer_config:
        optimizer_config = OptimizerHook(**cfg.optimizer_config)
    else:
        optimizer_config = cfg.optimizer_config

    # register hooks
    runner.register_training_hooks(cfg.lr_config,
                                   optimizer_config,
                                   cfg.checkpoint_config,
                                   cfg.log_config,
                                   cfg.get('momentum_config', None),
                                   custom_hooks_config=cfg.get(
                                       'custom_hooks', None))
    if distributed:
        if isinstance(runner, EpochBasedRunner):
            runner.register_hook(DistSamplerSeedHook())

    # register eval hooks
    if validate:
        val_samples_per_gpu = (cfg.data.get('val_dataloader', {})).get(
            'samples_per_gpu', cfg.data.get('samples_per_gpu', 1))
        if val_samples_per_gpu > 1:
            # Support batch_size > 1 in test for text recognition
            # by disable MultiRotateAugOCR since it is useless for most case
            cfg = disable_text_recog_aug_test(cfg)
            cfg = replace_image_to_tensor(cfg)

        val_dataset = build_dataset(cfg.data.val, dict(test_mode=True))

        val_loader_cfg = {
            **default_loader_cfg,
            **dict(shuffle=False, drop_last=False),
            **cfg.data.get('val_dataloader', {}),
            **dict(samples_per_gpu=val_samples_per_gpu)
        }

        val_dataloader = build_dataloader(val_dataset, **val_loader_cfg)

        eval_cfg = cfg.get('evaluation', {})
        eval_cfg['by_epoch'] = cfg.runner['type'] != 'IterBasedRunner'
        eval_hook = DistEvalHook if distributed else EvalHook
        runner.register_hook(eval_hook(val_dataloader, **eval_cfg))

    if cfg.resume_from:
        runner.resume(cfg.resume_from)
    elif cfg.load_from:
        runner.load_checkpoint(cfg.load_from)
    runner.run(data_loaders, cfg.workflow)