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| # Copyright (c) OpenMMLab. All rights reserved. | |
| import numpy as np | |
| import pycocotools.mask as mask_util | |
| import torch | |
| from mmengine.utils import slice_list | |
| def split_combined_polys(polys, poly_lens, polys_per_mask): | |
| """Split the combined 1-D polys into masks. | |
| A mask is represented as a list of polys, and a poly is represented as | |
| a 1-D array. In dataset, all masks are concatenated into a single 1-D | |
| tensor. Here we need to split the tensor into original representations. | |
| Args: | |
| polys (list): a list (length = image num) of 1-D tensors | |
| poly_lens (list): a list (length = image num) of poly length | |
| polys_per_mask (list): a list (length = image num) of poly number | |
| of each mask | |
| Returns: | |
| list: a list (length = image num) of list (length = mask num) of \ | |
| list (length = poly num) of numpy array. | |
| """ | |
| mask_polys_list = [] | |
| for img_id in range(len(polys)): | |
| polys_single = polys[img_id] | |
| polys_lens_single = poly_lens[img_id].tolist() | |
| polys_per_mask_single = polys_per_mask[img_id].tolist() | |
| split_polys = slice_list(polys_single, polys_lens_single) | |
| mask_polys = slice_list(split_polys, polys_per_mask_single) | |
| mask_polys_list.append(mask_polys) | |
| return mask_polys_list | |
| # TODO: move this function to more proper place | |
| def encode_mask_results(mask_results): | |
| """Encode bitmap mask to RLE code. | |
| Args: | |
| mask_results (list): bitmap mask results. | |
| Returns: | |
| list | tuple: RLE encoded mask. | |
| """ | |
| encoded_mask_results = [] | |
| for mask in mask_results: | |
| encoded_mask_results.append( | |
| mask_util.encode( | |
| np.array(mask[:, :, np.newaxis], order='F', | |
| dtype='uint8'))[0]) # encoded with RLE | |
| return encoded_mask_results | |
| def mask2bbox(masks): | |
| """Obtain tight bounding boxes of binary masks. | |
| Args: | |
| masks (Tensor): Binary mask of shape (n, h, w). | |
| Returns: | |
| Tensor: Bboxe with shape (n, 4) of \ | |
| positive region in binary mask. | |
| """ | |
| N = masks.shape[0] | |
| bboxes = masks.new_zeros((N, 4), dtype=torch.float32) | |
| x_any = torch.any(masks, dim=1) | |
| y_any = torch.any(masks, dim=2) | |
| for i in range(N): | |
| x = torch.where(x_any[i, :])[0] | |
| y = torch.where(y_any[i, :])[0] | |
| if len(x) > 0 and len(y) > 0: | |
| bboxes[i, :] = bboxes.new_tensor( | |
| [x[0], y[0], x[-1] + 1, y[-1] + 1]) | |
| return bboxes | |