Example #1
0
    def __init__(self,
                 embed_dims,
                 num_heads,
                 attn_drop=0.,
                 proj_drop=0.,
                 dropout_layer=None,
                 init_cfg=None,
                 batch_first=True,
                 qkv_bias=False,
                 norm_cfg=dict(type='LN'),
                 sr_ratio=1):
        super().__init__(
            embed_dims,
            num_heads,
            attn_drop,
            proj_drop,
            dropout_layer=dropout_layer,
            init_cfg=init_cfg,
            batch_first=batch_first,
            bias=qkv_bias)

        self.sr_ratio = sr_ratio
        if sr_ratio > 1:
            self.sr = Conv2d(
                in_channels=embed_dims,
                out_channels=embed_dims,
                kernel_size=sr_ratio,
                stride=sr_ratio)
            # The ret[0] of build_norm_layer is norm name.
            self.norm = build_norm_layer(norm_cfg, embed_dims)[1]

        # handle the BC-breaking from https://github.com/open-mmlab/mmcv/pull/1418 # noqa
        from mmseg import digit_version, mmcv_version
        if mmcv_version < digit_version('1.3.17'):
            warnings.warn('The legacy version of forward function in'
                          'EfficientMultiheadAttention is deprecated in'
                          'mmcv>=1.3.17 and will no longer support in the'
                          'future. Please upgrade your mmcv.')
            self.forward = self.legacy_forward
def test_digit_version():
    assert digit_version('0.2.16') == (0, 2, 16, 0, 0, 0)
    assert digit_version('1.2.3') == (1, 2, 3, 0, 0, 0)
    assert digit_version('1.2.3rc0') == (1, 2, 3, 0, -1, 0)
    assert digit_version('1.2.3rc1') == (1, 2, 3, 0, -1, 1)
    assert digit_version('1.0rc0') == (1, 0, 0, 0, -1, 0)
    assert digit_version('1.0') == digit_version('1.0.0')
    assert digit_version('1.5.0+cuda90_cudnn7.6.3_lms') == digit_version('1.5')
    assert digit_version('1.0.0dev') < digit_version('1.0.0a')
    assert digit_version('1.0.0a') < digit_version('1.0.0a1')
    assert digit_version('1.0.0a') < digit_version('1.0.0b')
    assert digit_version('1.0.0b') < digit_version('1.0.0rc')
    assert digit_version('1.0.0rc1') < digit_version('1.0.0')
    assert digit_version('1.0.0') < digit_version('1.0.0post')
    assert digit_version('1.0.0post') < digit_version('1.0.0post1')
    assert digit_version('v1') == (1, 0, 0, 0, 0, 0)
    assert digit_version('v1.1.5') == (1, 1, 5, 0, 0, 0)
Example #3
0
def main():
    args = parse_args()
    assert args.out or args.eval or args.format_only or args.show \
        or args.show_dir, \
        ('Please specify at least one operation (save/eval/format/show the '
         'results / save the results) with the argument "--out", "--eval"'
         ', "--format-only", "--show" or "--show-dir"')

    if args.eval and args.format_only:
        raise ValueError('--eval and --format_only cannot be both specified')

    if args.out is not None and not args.out.endswith(('.pkl', '.pickle')):
        raise ValueError('The output file must be a pkl file.')

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

    # set multi-process settings
    setup_multi_processes(cfg)

    # set cudnn_benchmark
    if cfg.get('cudnn_benchmark', False):
        torch.backends.cudnn.benchmark = True
    if args.aug_test:
        # hard code index
        cfg.data.test.pipeline[1].img_ratios = [
            0.5, 0.75, 1.0, 1.25, 1.5, 1.75
        ]
        cfg.data.test.pipeline[1].flip = True
    cfg.model.pretrained = None
    cfg.data.test.test_mode = True

    if args.gpu_id is not None:
        cfg.gpu_ids = [args.gpu_id]

    # init distributed env first, since logger depends on the dist info.
    if args.launcher == 'none':
        cfg.gpu_ids = [args.gpu_id]
        distributed = False
        if len(cfg.gpu_ids) > 1:
            warnings.warn(f'The gpu-ids is reset from {cfg.gpu_ids} to '
                          f'{cfg.gpu_ids[0:1]} to avoid potential error in '
                          'non-distribute testing time.')
            cfg.gpu_ids = cfg.gpu_ids[0:1]
    else:
        distributed = True
        init_dist(args.launcher, **cfg.dist_params)

    rank, _ = get_dist_info()
    # allows not to create
    if args.work_dir is not None and rank == 0:
        mmcv.mkdir_or_exist(osp.abspath(args.work_dir))
        timestamp = time.strftime('%Y%m%d_%H%M%S', time.localtime())
        if args.aug_test:
            json_file = osp.join(args.work_dir,
                                 f'eval_multi_scale_{timestamp}.json')
        else:
            json_file = osp.join(args.work_dir,
                                 f'eval_single_scale_{timestamp}.json')
    elif rank == 0:
        work_dir = osp.join('./work_dirs',
                            osp.splitext(osp.basename(args.config))[0])
        mmcv.mkdir_or_exist(osp.abspath(work_dir))
        timestamp = time.strftime('%Y%m%d_%H%M%S', time.localtime())
        if args.aug_test:
            json_file = osp.join(work_dir,
                                 f'eval_multi_scale_{timestamp}.json')
        else:
            json_file = osp.join(work_dir,
                                 f'eval_single_scale_{timestamp}.json')

    # build the dataloader
    # TODO: support multiple images per gpu (only minor changes are needed)
    dataset = build_dataset(cfg.data.test)
    # The default loader config
    loader_cfg = dict(
        # cfg.gpus will be ignored if distributed
        num_gpus=len(cfg.gpu_ids),
        dist=distributed,
        shuffle=False)
    # The overall dataloader settings
    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'
        ]
    })
    test_loader_cfg = {
        **loader_cfg,
        'samples_per_gpu': 1,
        'shuffle': False,  # Not shuffle by default
        **cfg.data.get('test_dataloader', {})
    }
    # build the dataloader
    data_loader = build_dataloader(dataset, **test_loader_cfg)

    # build the model and load checkpoint
    cfg.model.train_cfg = None
    model = build_segmentor(cfg.model, test_cfg=cfg.get('test_cfg'))
    fp16_cfg = cfg.get('fp16', None)
    if fp16_cfg is not None:
        wrap_fp16_model(model)
    checkpoint = load_checkpoint(model, args.checkpoint, map_location='cpu')
    if 'CLASSES' in checkpoint.get('meta', {}):
        model.CLASSES = checkpoint['meta']['CLASSES']
    else:
        print('"CLASSES" not found in meta, use dataset.CLASSES instead')
        model.CLASSES = dataset.CLASSES
    if 'PALETTE' in checkpoint.get('meta', {}):
        model.PALETTE = checkpoint['meta']['PALETTE']
    else:
        print('"PALETTE" not found in meta, use dataset.PALETTE instead')
        model.PALETTE = dataset.PALETTE

    # clean gpu memory when starting a new evaluation.
    torch.cuda.empty_cache()
    eval_kwargs = {} if args.eval_options is None else args.eval_options

    # Deprecated
    efficient_test = eval_kwargs.get('efficient_test', False)
    if efficient_test:
        warnings.warn(
            '``efficient_test=True`` does not have effect in tools/test.py, '
            'the evaluation and format results are CPU memory efficient by '
            'default')

    eval_on_format_results = (args.eval is not None
                              and 'cityscapes' in args.eval)
    if eval_on_format_results:
        assert len(args.eval) == 1, 'eval on format results is not ' \
                                    'applicable for metrics other than ' \
                                    'cityscapes'
    if args.format_only or eval_on_format_results:
        if 'imgfile_prefix' in eval_kwargs:
            tmpdir = eval_kwargs['imgfile_prefix']
        else:
            tmpdir = '.format_cityscapes'
            eval_kwargs.setdefault('imgfile_prefix', tmpdir)
        mmcv.mkdir_or_exist(tmpdir)
    else:
        tmpdir = None

    if not distributed:
        warnings.warn(
            'SyncBN is only supported with DDP. To be compatible with DP, '
            'we convert SyncBN to BN. Please use dist_train.sh which can '
            'avoid this error.')
        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 = revert_sync_batchnorm(model)
        model = MMDataParallel(model, device_ids=cfg.gpu_ids)
        results = single_gpu_test(model,
                                  data_loader,
                                  args.show,
                                  args.show_dir,
                                  False,
                                  args.opacity,
                                  pre_eval=args.eval is not None
                                  and not eval_on_format_results,
                                  format_only=args.format_only
                                  or eval_on_format_results,
                                  format_args=eval_kwargs)
    else:
        model = MMDistributedDataParallel(
            model.cuda(),
            device_ids=[torch.cuda.current_device()],
            broadcast_buffers=False)
        results = multi_gpu_test(model,
                                 data_loader,
                                 args.tmpdir,
                                 args.gpu_collect,
                                 False,
                                 pre_eval=args.eval is not None
                                 and not eval_on_format_results,
                                 format_only=args.format_only
                                 or eval_on_format_results,
                                 format_args=eval_kwargs)

    rank, _ = get_dist_info()
    if rank == 0:
        if args.out:
            warnings.warn(
                'The behavior of ``args.out`` has been changed since MMSeg '
                'v0.16, the pickled outputs could be seg map as type of '
                'np.array, pre-eval results or file paths for '
                '``dataset.format_results()``.')
            print(f'\nwriting results to {args.out}')
            mmcv.dump(results, args.out)
        if args.eval:
            eval_kwargs.update(metric=args.eval)
            metric = dataset.evaluate(results, **eval_kwargs)
            metric_dict = dict(config=args.config, metric=metric)
            mmcv.dump(metric_dict, json_file, indent=4)
            if tmpdir is not None and eval_on_format_results:
                # remove tmp dir when cityscapes evaluation
                shutil.rmtree(tmpdir)
Example #4
0
def train_segmentor(model,
                    dataset,
                    cfg,
                    distributed=False,
                    validate=False,
                    timestamp=None,
                    meta=None):
    """Launch segmentor training."""
    logger = get_root_logger(cfg.log_level)

    # prepare data loaders
    dataset = dataset if isinstance(dataset, (list, tuple)) else [dataset]
    # The default loader config
    loader_cfg = dict(
        # cfg.gpus will be ignored if distributed
        num_gpus=len(cfg.gpu_ids),
        dist=distributed,
        seed=cfg.seed,
        drop_last=True)
    # The overall dataloader settings
    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'
        ]
    })

    # The specific dataloader settings
    train_loader_cfg = {**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 cfg.get('runner') is None:
        cfg.runner = {'type': 'IterBasedRunner', 'max_iters': cfg.total_iters}
        warnings.warn(
            'config is now expected to have a `runner` section, '
            'please set `runner` in your config.', UserWarning)

    runner = build_runner(cfg.runner,
                          default_args=dict(model=model,
                                            batch_processor=None,
                                            optimizer=optimizer,
                                            work_dir=cfg.work_dir,
                                            logger=logger,
                                            meta=meta))

    # register hooks
    runner.register_training_hooks(cfg.lr_config, cfg.optimizer_config,
                                   cfg.checkpoint_config, cfg.log_config,
                                   cfg.get('momentum_config', None))
    if distributed:
        # when distributed training by epoch, using`DistSamplerSeedHook` to set
        # the different seed to distributed sampler for each epoch, it will
        # shuffle dataset at each epoch and avoid overfitting.
        if isinstance(runner, EpochBasedRunner):
            runner.register_hook(DistSamplerSeedHook())

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

    # register eval hooks
    if validate:
        val_dataset = build_dataset(cfg.data.val, dict(test_mode=True))
        # The specific dataloader settings
        val_loader_cfg = {
            **loader_cfg,
            'samples_per_gpu': 1,
            'shuffle': False,  # Not shuffle by default
            **cfg.data.get('val_dataloader', {}),
        }
        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
        # In this PR (https://github.com/open-mmlab/mmcv/pull/1193), the
        # priority of IterTimerHook has been modified from 'NORMAL' to 'LOW'.
        runner.register_hook(eval_hook(val_dataloader, **eval_cfg),
                             priority='LOW')

    # 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 is None and cfg.get('auto_resume'):
        resume_from = find_latest_checkpoint(cfg.work_dir)
        if resume_from is not None:
            cfg.resume_from = resume_from
    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)