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| | import torch |
| | from mmcv.ops import point_sample |
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| | def get_uncertainty(mask_pred, labels): |
| | """Estimate uncertainty based on pred logits. |
| | |
| | We estimate uncertainty as L1 distance between 0.0 and the logits |
| | prediction in 'mask_pred' for the foreground class in `classes`. |
| | |
| | Args: |
| | mask_pred (Tensor): mask predication logits, shape (num_rois, |
| | num_classes, mask_height, mask_width). |
| | |
| | labels (list[Tensor]): Either predicted or ground truth label for |
| | each predicted mask, of length num_rois. |
| | |
| | Returns: |
| | scores (Tensor): Uncertainty scores with the most uncertain |
| | locations having the highest uncertainty score, |
| | shape (num_rois, 1, mask_height, mask_width) |
| | """ |
| | if mask_pred.shape[1] == 1: |
| | gt_class_logits = mask_pred.clone() |
| | else: |
| | inds = torch.arange(mask_pred.shape[0], device=mask_pred.device) |
| | gt_class_logits = mask_pred[inds, labels].unsqueeze(1) |
| | return -torch.abs(gt_class_logits) |
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|
| | def get_uncertain_point_coords_with_randomness( |
| | mask_pred, labels, num_points, oversample_ratio, importance_sample_ratio |
| | ): |
| | """Get ``num_points`` most uncertain points with random points during |
| | train. |
| | |
| | Sample points in [0, 1] x [0, 1] coordinate space based on their |
| | uncertainty. The uncertainties are calculated for each point using |
| | 'get_uncertainty()' function that takes point's logit prediction as |
| | input. |
| | |
| | Args: |
| | mask_pred (Tensor): A tensor of shape (num_rois, num_classes, |
| | mask_height, mask_width) for class-specific or class-agnostic |
| | prediction. |
| | labels (list): The ground truth class for each instance. |
| | num_points (int): The number of points to sample. |
| | oversample_ratio (int): Oversampling parameter. |
| | importance_sample_ratio (float): Ratio of points that are sampled |
| | via importnace sampling. |
| | |
| | Returns: |
| | point_coords (Tensor): A tensor of shape (num_rois, num_points, 2) |
| | that contains the coordinates sampled points. |
| | """ |
| | assert oversample_ratio >= 1 |
| | assert 0 <= importance_sample_ratio <= 1 |
| | batch_size = mask_pred.shape[0] |
| | num_sampled = int(num_points * oversample_ratio) |
| | point_coords = torch.rand(batch_size, num_sampled, 2, device=mask_pred.device) |
| | point_logits = point_sample(mask_pred, point_coords) |
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| | point_uncertainties = get_uncertainty(point_logits, labels) |
| | num_uncertain_points = int(importance_sample_ratio * num_points) |
| | num_random_points = num_points - num_uncertain_points |
| | idx = torch.topk(point_uncertainties[:, 0, :], k=num_uncertain_points, dim=1)[1] |
| | shift = num_sampled * torch.arange(batch_size, dtype=torch.long, device=mask_pred.device) |
| | idx += shift[:, None] |
| | point_coords = point_coords.view(-1, 2)[idx.view(-1), :].view(batch_size, num_uncertain_points, 2) |
| | if num_random_points > 0: |
| | rand_roi_coords = torch.rand(batch_size, num_random_points, 2, device=mask_pred.device) |
| | point_coords = torch.cat((point_coords, rand_roi_coords), dim=1) |
| | return point_coords |
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