| import os.path as osp |
| import pickle |
| import shutil |
| import tempfile |
|
|
| import annotator.mmpkg.mmcv as mmcv |
| import numpy as np |
| import torch |
| import torch.distributed as dist |
| from annotator.mmpkg.mmcv.image import tensor2imgs |
| from annotator.mmpkg.mmcv.runner import get_dist_info |
|
|
|
|
| def np2tmp(array, temp_file_name=None): |
| """Save ndarray to local numpy file. |
| |
| Args: |
| array (ndarray): Ndarray to save. |
| temp_file_name (str): Numpy file name. If 'temp_file_name=None', this |
| function will generate a file name with tempfile.NamedTemporaryFile |
| to save ndarray. Default: None. |
| |
| Returns: |
| str: The numpy file name. |
| """ |
|
|
| if temp_file_name is None: |
| temp_file_name = tempfile.NamedTemporaryFile( |
| suffix='.npy', delete=False).name |
| np.save(temp_file_name, array) |
| return temp_file_name |
|
|
|
|
| def single_gpu_test(model, |
| data_loader, |
| show=False, |
| out_dir=None, |
| efficient_test=False, |
| opacity=0.5): |
| """Test with single GPU. |
| |
| Args: |
| model (nn.Module): Model to be tested. |
| data_loader (utils.data.Dataloader): Pytorch data loader. |
| show (bool): Whether show results during inference. Default: False. |
| out_dir (str, optional): If specified, the results will be dumped into |
| the directory to save output results. |
| efficient_test (bool): Whether save the results as local numpy files to |
| save CPU memory during evaluation. Default: False. |
| opacity(float): Opacity of painted segmentation map. |
| Default 0.5. |
| Must be in (0, 1] range. |
| Returns: |
| list: The prediction results. |
| """ |
|
|
| model.eval() |
| results = [] |
| dataset = data_loader.dataset |
| prog_bar = mmcv.ProgressBar(len(dataset)) |
| for i, data in enumerate(data_loader): |
| with torch.no_grad(): |
| result = model(return_loss=False, **data) |
|
|
| if show or out_dir: |
| img_tensor = data['img'][0] |
| img_metas = data['img_metas'][0].data[0] |
| imgs = tensor2imgs(img_tensor, **img_metas[0]['img_norm_cfg']) |
| assert len(imgs) == len(img_metas) |
|
|
| for img, img_meta in zip(imgs, img_metas): |
| h, w, _ = img_meta['img_shape'] |
| img_show = img[:h, :w, :] |
|
|
| ori_h, ori_w = img_meta['ori_shape'][:-1] |
| img_show = mmcv.imresize(img_show, (ori_w, ori_h)) |
|
|
| if out_dir: |
| out_file = osp.join(out_dir, img_meta['ori_filename']) |
| else: |
| out_file = None |
|
|
| model.module.show_result( |
| img_show, |
| result, |
| palette=dataset.PALETTE, |
| show=show, |
| out_file=out_file, |
| opacity=opacity) |
|
|
| if isinstance(result, list): |
| if efficient_test: |
| result = [np2tmp(_) for _ in result] |
| results.extend(result) |
| else: |
| if efficient_test: |
| result = np2tmp(result) |
| results.append(result) |
|
|
| batch_size = len(result) |
| for _ in range(batch_size): |
| prog_bar.update() |
| return results |
|
|
|
|
| def multi_gpu_test(model, |
| data_loader, |
| tmpdir=None, |
| gpu_collect=False, |
| efficient_test=False): |
| """Test model with multiple gpus. |
| |
| This method tests model with multiple gpus and collects the results |
| under two different modes: gpu and cpu modes. By setting 'gpu_collect=True' |
| it encodes results to gpu tensors and use gpu communication for results |
| collection. On cpu mode it saves the results on different gpus to 'tmpdir' |
| and collects them by the rank 0 worker. |
| |
| Args: |
| model (nn.Module): Model to be tested. |
| data_loader (utils.data.Dataloader): Pytorch data loader. |
| tmpdir (str): Path of directory to save the temporary results from |
| different gpus under cpu mode. |
| gpu_collect (bool): Option to use either gpu or cpu to collect results. |
| efficient_test (bool): Whether save the results as local numpy files to |
| save CPU memory during evaluation. Default: False. |
| |
| Returns: |
| list: The prediction results. |
| """ |
|
|
| model.eval() |
| results = [] |
| dataset = data_loader.dataset |
| rank, world_size = get_dist_info() |
| if rank == 0: |
| prog_bar = mmcv.ProgressBar(len(dataset)) |
| for i, data in enumerate(data_loader): |
| with torch.no_grad(): |
| result = model(return_loss=False, rescale=True, **data) |
|
|
| if isinstance(result, list): |
| if efficient_test: |
| result = [np2tmp(_) for _ in result] |
| results.extend(result) |
| else: |
| if efficient_test: |
| result = np2tmp(result) |
| results.append(result) |
|
|
| if rank == 0: |
| batch_size = data['img'][0].size(0) |
| for _ in range(batch_size * world_size): |
| prog_bar.update() |
|
|
| |
| if gpu_collect: |
| results = collect_results_gpu(results, len(dataset)) |
| else: |
| results = collect_results_cpu(results, len(dataset), tmpdir) |
| return results |
|
|
|
|
| def collect_results_cpu(result_part, size, tmpdir=None): |
| """Collect results with CPU.""" |
| rank, world_size = get_dist_info() |
| |
| if tmpdir is None: |
| MAX_LEN = 512 |
| |
| dir_tensor = torch.full((MAX_LEN, ), |
| 32, |
| dtype=torch.uint8, |
| device='cuda') |
| if rank == 0: |
| tmpdir = tempfile.mkdtemp() |
| tmpdir = torch.tensor( |
| bytearray(tmpdir.encode()), dtype=torch.uint8, device='cuda') |
| dir_tensor[:len(tmpdir)] = tmpdir |
| dist.broadcast(dir_tensor, 0) |
| tmpdir = dir_tensor.cpu().numpy().tobytes().decode().rstrip() |
| else: |
| mmcv.mkdir_or_exist(tmpdir) |
| |
| mmcv.dump(result_part, osp.join(tmpdir, 'part_{}.pkl'.format(rank))) |
| dist.barrier() |
| |
| if rank != 0: |
| return None |
| else: |
| |
| part_list = [] |
| for i in range(world_size): |
| part_file = osp.join(tmpdir, 'part_{}.pkl'.format(i)) |
| part_list.append(mmcv.load(part_file)) |
| |
| ordered_results = [] |
| for res in zip(*part_list): |
| ordered_results.extend(list(res)) |
| |
| ordered_results = ordered_results[:size] |
| |
| shutil.rmtree(tmpdir) |
| return ordered_results |
|
|
|
|
| def collect_results_gpu(result_part, size): |
| """Collect results with GPU.""" |
| rank, world_size = get_dist_info() |
| |
| part_tensor = torch.tensor( |
| bytearray(pickle.dumps(result_part)), dtype=torch.uint8, device='cuda') |
| |
| shape_tensor = torch.tensor(part_tensor.shape, device='cuda') |
| shape_list = [shape_tensor.clone() for _ in range(world_size)] |
| dist.all_gather(shape_list, shape_tensor) |
| |
| shape_max = torch.tensor(shape_list).max() |
| part_send = torch.zeros(shape_max, dtype=torch.uint8, device='cuda') |
| part_send[:shape_tensor[0]] = part_tensor |
| part_recv_list = [ |
| part_tensor.new_zeros(shape_max) for _ in range(world_size) |
| ] |
| |
| dist.all_gather(part_recv_list, part_send) |
|
|
| if rank == 0: |
| part_list = [] |
| for recv, shape in zip(part_recv_list, shape_list): |
| part_list.append( |
| pickle.loads(recv[:shape[0]].cpu().numpy().tobytes())) |
| |
| ordered_results = [] |
| for res in zip(*part_list): |
| ordered_results.extend(list(res)) |
| |
| ordered_results = ordered_results[:size] |
| return ordered_results |
|
|