| |
| from numbers import Number |
| from typing import Any, Dict, List, Optional, Sequence |
|
|
| import torch |
| from mmengine.model import BaseDataPreprocessor |
|
|
| from mmseg.registry import MODELS |
| from mmseg.utils import stack_batch |
|
|
|
|
| @MODELS.register_module() |
| class SegDataPreProcessor(BaseDataPreprocessor): |
| """Image pre-processor for segmentation tasks. |
| |
| Comparing with the :class:`mmengine.ImgDataPreprocessor`, |
| |
| 1. It won't do normalization if ``mean`` is not specified. |
| 2. It does normalization and color space conversion after stacking batch. |
| 3. It supports batch augmentations like mixup and cutmix. |
| |
| |
| It provides the data pre-processing as follows |
| |
| - Collate and move data to the target device. |
| - Pad inputs to the input size with defined ``pad_val``, and pad seg map |
| with defined ``seg_pad_val``. |
| - Stack inputs to batch_inputs. |
| - Convert inputs from bgr to rgb if the shape of input is (3, H, W). |
| - Normalize image with defined std and mean. |
| - Do batch augmentations like Mixup and Cutmix during training. |
| |
| Args: |
| mean (Sequence[Number], optional): The pixel mean of R, G, B channels. |
| Defaults to None. |
| std (Sequence[Number], optional): The pixel standard deviation of |
| R, G, B channels. Defaults to None. |
| size (tuple, optional): Fixed padding size. |
| size_divisor (int, optional): The divisor of padded size. |
| pad_val (float, optional): Padding value. Default: 0. |
| seg_pad_val (float, optional): Padding value of segmentation map. |
| Default: 255. |
| padding_mode (str): Type of padding. Default: constant. |
| - constant: pads with a constant value, this value is specified |
| with pad_val. |
| bgr_to_rgb (bool): whether to convert image from BGR to RGB. |
| Defaults to False. |
| rgb_to_bgr (bool): whether to convert image from RGB to RGB. |
| Defaults to False. |
| batch_augments (list[dict], optional): Batch-level augmentations |
| test_cfg (dict, optional): The padding size config in testing, if not |
| specify, will use `size` and `size_divisor` params as default. |
| Defaults to None, only supports keys `size` or `size_divisor`. |
| """ |
|
|
| def __init__( |
| self, |
| mean: Sequence[Number] = None, |
| std: Sequence[Number] = None, |
| size: Optional[tuple] = None, |
| size_divisor: Optional[int] = None, |
| pad_val: Number = 0, |
| seg_pad_val: Number = 255, |
| bgr_to_rgb: bool = False, |
| rgb_to_bgr: bool = False, |
| batch_augments: Optional[List[dict]] = None, |
| test_cfg: dict = None, |
| ): |
| super().__init__() |
| self.size = size |
| self.size_divisor = size_divisor |
| self.pad_val = pad_val |
| self.seg_pad_val = seg_pad_val |
|
|
| assert not (bgr_to_rgb and rgb_to_bgr), ( |
| '`bgr2rgb` and `rgb2bgr` cannot be set to True at the same time') |
| self.channel_conversion = rgb_to_bgr or bgr_to_rgb |
|
|
| if mean is not None: |
| assert std is not None, 'To enable the normalization in ' \ |
| 'preprocessing, please specify both ' \ |
| '`mean` and `std`.' |
| |
| self._enable_normalize = True |
| self.register_buffer('mean', |
| torch.tensor(mean).view(-1, 1, 1), False) |
| self.register_buffer('std', |
| torch.tensor(std).view(-1, 1, 1), False) |
| else: |
| self._enable_normalize = False |
|
|
| |
| self.batch_augments = batch_augments |
|
|
| |
| self.test_cfg = test_cfg |
|
|
| def forward(self, data: dict, training: bool = False) -> Dict[str, Any]: |
| """Perform normalization、padding and bgr2rgb conversion based on |
| ``BaseDataPreprocessor``. |
| |
| Args: |
| data (dict): data sampled from dataloader. |
| training (bool): Whether to enable training time augmentation. |
| |
| Returns: |
| Dict: Data in the same format as the model input. |
| """ |
| data = self.cast_data(data) |
| inputs = data['inputs'] |
| data_samples = data.get('data_samples', None) |
| |
| if self.channel_conversion and inputs[0].size(0) == 3: |
| inputs = [_input[[2, 1, 0], ...] for _input in inputs] |
|
|
| inputs = [_input.float() for _input in inputs] |
| if self._enable_normalize: |
| inputs = [(_input - self.mean) / self.std for _input in inputs] |
|
|
| if training: |
| assert data_samples is not None, ('During training, ', |
| '`data_samples` must be define.') |
| inputs, data_samples = stack_batch( |
| inputs=inputs, |
| data_samples=data_samples, |
| size=self.size, |
| size_divisor=self.size_divisor, |
| pad_val=self.pad_val, |
| seg_pad_val=self.seg_pad_val) |
|
|
| if self.batch_augments is not None: |
| inputs, data_samples = self.batch_augments( |
| inputs, data_samples) |
| else: |
| img_size = inputs[0].shape[1:] |
| assert all(input_.shape[1:] == img_size for input_ in inputs), \ |
| 'The image size in a batch should be the same.' |
| |
| if self.test_cfg: |
| inputs, padded_samples = stack_batch( |
| inputs=inputs, |
| size=self.test_cfg.get('size', None), |
| size_divisor=self.test_cfg.get('size_divisor', None), |
| pad_val=self.pad_val, |
| seg_pad_val=self.seg_pad_val) |
| for data_sample, pad_info in zip(data_samples, padded_samples): |
| data_sample.set_metainfo({**pad_info}) |
| else: |
| inputs = torch.stack(inputs, dim=0) |
|
|
| return dict(inputs=inputs, data_samples=data_samples) |
|
|