| |
| from typing import List, Optional, Union |
|
|
| import numpy as np |
| import torch |
| import torch.nn.functional as F |
|
|
| from .typing_utils import SampleList |
|
|
|
|
| def add_prefix(inputs, prefix): |
| """Add prefix for dict. |
| |
| Args: |
| inputs (dict): The input dict with str keys. |
| prefix (str): The prefix to add. |
| |
| Returns: |
| |
| dict: The dict with keys updated with ``prefix``. |
| """ |
|
|
| outputs = dict() |
| for name, value in inputs.items(): |
| outputs[f'{prefix}.{name}'] = value |
|
|
| return outputs |
|
|
|
|
| def stack_batch(inputs: List[torch.Tensor], |
| data_samples: Optional[SampleList] = None, |
| size: Optional[tuple] = None, |
| size_divisor: Optional[int] = None, |
| pad_val: Union[int, float] = 0, |
| seg_pad_val: Union[int, float] = 255) -> torch.Tensor: |
| """Stack multiple inputs to form a batch and pad the images and gt_sem_segs |
| to the max shape use the right bottom padding mode. |
| |
| Args: |
| inputs (List[Tensor]): The input multiple tensors. each is a |
| CHW 3D-tensor. |
| data_samples (list[:obj:`SegDataSample`]): The list of data samples. |
| It usually includes information such as `gt_sem_seg`. |
| size (tuple, optional): Fixed padding size. |
| size_divisor (int, optional): The divisor of padded size. |
| pad_val (int, float): The padding value. Defaults to 0 |
| seg_pad_val (int, float): The padding value. Defaults to 255 |
| |
| Returns: |
| Tensor: The 4D-tensor. |
| List[:obj:`SegDataSample`]: After the padding of the gt_seg_map. |
| """ |
| assert isinstance(inputs, list), \ |
| f'Expected input type to be list, but got {type(inputs)}' |
| assert len({tensor.ndim for tensor in inputs}) == 1, \ |
| f'Expected the dimensions of all inputs must be the same, ' \ |
| f'but got {[tensor.ndim for tensor in inputs]}' |
| assert inputs[0].ndim == 3, f'Expected tensor dimension to be 3, ' \ |
| f'but got {inputs[0].ndim}' |
| assert len({tensor.shape[0] for tensor in inputs}) == 1, \ |
| f'Expected the channels of all inputs must be the same, ' \ |
| f'but got {[tensor.shape[0] for tensor in inputs]}' |
|
|
| |
| assert (size is not None) ^ (size_divisor is not None), \ |
| 'only one of size and size_divisor should be valid' |
|
|
| padded_inputs = [] |
| padded_samples = [] |
| inputs_sizes = [(img.shape[-2], img.shape[-1]) for img in inputs] |
| max_size = np.stack(inputs_sizes).max(0) |
| if size_divisor is not None and size_divisor > 1: |
| |
| max_size = (max_size + |
| (size_divisor - 1)) // size_divisor * size_divisor |
|
|
| for i in range(len(inputs)): |
| tensor = inputs[i] |
| if size is not None: |
| width = max(size[-1] - tensor.shape[-1], 0) |
| height = max(size[-2] - tensor.shape[-2], 0) |
| |
| padding_size = (0, width, 0, height) |
| elif size_divisor is not None: |
| width = max(max_size[-1] - tensor.shape[-1], 0) |
| height = max(max_size[-2] - tensor.shape[-2], 0) |
| padding_size = (0, width, 0, height) |
| else: |
| padding_size = [0, 0, 0, 0] |
|
|
| |
| pad_img = F.pad(tensor, padding_size, value=pad_val) |
| padded_inputs.append(pad_img) |
| |
| if data_samples is not None: |
| data_sample = data_samples[i] |
| pad_shape = None |
| if 'gt_sem_seg' in data_sample: |
| gt_sem_seg = data_sample.gt_sem_seg.data |
| del data_sample.gt_sem_seg.data |
| data_sample.gt_sem_seg.data = F.pad( |
| gt_sem_seg, padding_size, value=seg_pad_val) |
| pad_shape = data_sample.gt_sem_seg.shape |
| if 'gt_edge_map' in data_sample: |
| gt_edge_map = data_sample.gt_edge_map.data |
| del data_sample.gt_edge_map.data |
| data_sample.gt_edge_map.data = F.pad( |
| gt_edge_map, padding_size, value=seg_pad_val) |
| pad_shape = data_sample.gt_edge_map.shape |
| if 'gt_depth_map' in data_sample: |
| gt_depth_map = data_sample.gt_depth_map.data |
| del data_sample.gt_depth_map.data |
| data_sample.gt_depth_map.data = F.pad( |
| gt_depth_map, padding_size, value=seg_pad_val) |
| pad_shape = data_sample.gt_depth_map.shape |
| data_sample.set_metainfo({ |
| 'img_shape': tensor.shape[-2:], |
| 'pad_shape': pad_shape, |
| 'padding_size': padding_size |
| }) |
| padded_samples.append(data_sample) |
| else: |
| padded_samples.append( |
| dict( |
| img_padding_size=padding_size, |
| pad_shape=pad_img.shape[-2:])) |
|
|
| return torch.stack(padded_inputs, dim=0), padded_samples |
|
|