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import logging |
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import warnings |
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from abc import ABCMeta, abstractmethod |
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from collections import OrderedDict |
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import mmcv |
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import numpy as np |
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import torch |
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import torch.distributed as dist |
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import torch.nn as nn |
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from mmcv.runner import auto_fp16 |
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class BaseSegmentor(nn.Module): |
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"""Base class for segmentors.""" |
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__metaclass__ = ABCMeta |
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def __init__(self): |
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super(BaseSegmentor, self).__init__() |
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self.fp16_enabled = False |
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@property |
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def with_neck(self): |
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"""bool: whether the segmentor has neck""" |
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return hasattr(self, 'neck') and self.neck is not None |
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@property |
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def with_auxiliary_head(self): |
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"""bool: whether the segmentor has auxiliary head""" |
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return hasattr(self, |
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'auxiliary_head') and self.auxiliary_head is not None |
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@property |
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def with_decode_head(self): |
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"""bool: whether the segmentor has decode head""" |
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return hasattr(self, 'decode_head') and self.decode_head is not None |
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@abstractmethod |
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def extract_feat(self, imgs): |
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"""Placeholder for extract features from images.""" |
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pass |
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@abstractmethod |
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def encode_decode(self, img, img_metas): |
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"""Placeholder for encode images with backbone and decode into a |
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semantic segmentation map of the same size as input.""" |
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pass |
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@abstractmethod |
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def forward_train(self, imgs, img_metas, **kwargs): |
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"""Placeholder for Forward function for training.""" |
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pass |
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@abstractmethod |
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def simple_test(self, img, img_meta, **kwargs): |
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"""Placeholder for single image test.""" |
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pass |
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@abstractmethod |
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def aug_test(self, imgs, img_metas, **kwargs): |
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"""Placeholder for augmentation test.""" |
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pass |
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def init_weights(self, pretrained=None): |
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"""Initialize the weights in segmentor. |
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Args: |
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pretrained (str, optional): Path to pre-trained weights. |
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Defaults to None. |
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""" |
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if pretrained is not None: |
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logger = logging.getLogger() |
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logger.info(f'load model from: {pretrained}') |
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def forward_test(self, imgs, img_metas, **kwargs): |
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""" |
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Args: |
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imgs (List[Tensor]): the outer list indicates test-time |
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augmentations and inner Tensor should have a shape NxCxHxW, |
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which contains all images in the batch. |
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img_metas (List[List[dict]]): the outer list indicates test-time |
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augs (multiscale, flip, etc.) and the inner list indicates |
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images in a batch. |
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""" |
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for var, name in [(imgs, 'imgs'), (img_metas, 'img_metas')]: |
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if not isinstance(var, list): |
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raise TypeError(f'{name} must be a list, but got ' |
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f'{type(var)}') |
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num_augs = len(imgs) |
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if num_augs != len(img_metas): |
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raise ValueError(f'num of augmentations ({len(imgs)}) != ' |
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f'num of image meta ({len(img_metas)})') |
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for img_meta in img_metas: |
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ori_shapes = [_['ori_shape'] for _ in img_meta] |
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assert all(shape == ori_shapes[0] for shape in ori_shapes) |
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img_shapes = [_['img_shape'] for _ in img_meta] |
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assert all(shape == img_shapes[0] for shape in img_shapes) |
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pad_shapes = [_['pad_shape'] for _ in img_meta] |
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assert all(shape == pad_shapes[0] for shape in pad_shapes) |
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if num_augs == 1: |
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return self.simple_test(imgs[0], img_metas[0], **kwargs) |
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else: |
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return self.aug_test(imgs, img_metas, **kwargs) |
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@auto_fp16(apply_to=('img', )) |
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def forward(self, img, img_metas, return_loss=True, **kwargs): |
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"""Calls either :func:`forward_train` or :func:`forward_test` depending |
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on whether ``return_loss`` is ``True``. |
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Note this setting will change the expected inputs. When |
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``return_loss=True``, img and img_meta are single-nested (i.e. Tensor |
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and List[dict]), and when ``resturn_loss=False``, img and img_meta |
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should be double nested (i.e. List[Tensor], List[List[dict]]), with |
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the outer list indicating test time augmentations. |
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""" |
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if return_loss: |
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return self.forward_train(img, img_metas, **kwargs) |
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else: |
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return self.forward_test(img, img_metas, **kwargs) |
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def train_step(self, data_batch, optimizer, **kwargs): |
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"""The iteration step during training. |
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This method defines an iteration step during training, except for the |
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back propagation and optimizer updating, which are done in an optimizer |
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hook. Note that in some complicated cases or models, the whole process |
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including back propagation and optimizer updating is also defined in |
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this method, such as GAN. |
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Args: |
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data (dict): The output of dataloader. |
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optimizer (:obj:`torch.optim.Optimizer` | dict): The optimizer of |
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runner is passed to ``train_step()``. This argument is unused |
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and reserved. |
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Returns: |
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dict: It should contain at least 3 keys: ``loss``, ``log_vars``, |
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``num_samples``. |
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``loss`` is a tensor for back propagation, which can be a |
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weighted sum of multiple losses. |
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``log_vars`` contains all the variables to be sent to the |
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logger. |
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``num_samples`` indicates the batch size (when the model is |
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DDP, it means the batch size on each GPU), which is used for |
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averaging the logs. |
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""" |
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losses = self(**data_batch) |
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loss, log_vars = self._parse_losses(losses) |
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outputs = dict( |
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loss=loss, |
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log_vars=log_vars, |
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num_samples=len(data_batch['img'].data)) |
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return outputs |
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def val_step(self, data_batch, **kwargs): |
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"""The iteration step during validation. |
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This method shares the same signature as :func:`train_step`, but used |
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during val epochs. Note that the evaluation after training epochs is |
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not implemented with this method, but an evaluation hook. |
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""" |
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output = self(**data_batch, **kwargs) |
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return output |
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@staticmethod |
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def _parse_losses(losses): |
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"""Parse the raw outputs (losses) of the network. |
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Args: |
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losses (dict): Raw output of the network, which usually contain |
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losses and other necessary information. |
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Returns: |
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tuple[Tensor, dict]: (loss, log_vars), loss is the loss tensor |
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which may be a weighted sum of all losses, log_vars contains |
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all the variables to be sent to the logger. |
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""" |
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log_vars = OrderedDict() |
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for loss_name, loss_value in losses.items(): |
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if isinstance(loss_value, torch.Tensor): |
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log_vars[loss_name] = loss_value.mean() |
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elif isinstance(loss_value, list): |
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log_vars[loss_name] = sum(_loss.mean() for _loss in loss_value) |
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else: |
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raise TypeError( |
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f'{loss_name} is not a tensor or list of tensors') |
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loss = sum(_value for _key, _value in log_vars.items() |
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if 'loss' in _key) |
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log_vars['loss'] = loss |
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for loss_name, loss_value in log_vars.items(): |
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if dist.is_available() and dist.is_initialized(): |
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loss_value = loss_value.data.clone() |
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dist.all_reduce(loss_value.div_(dist.get_world_size())) |
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log_vars[loss_name] = loss_value.item() |
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return loss, log_vars |
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def show_result(self, |
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img, |
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result, |
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palette=None, |
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win_name='', |
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show=False, |
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wait_time=0, |
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out_file=None): |
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"""Draw `result` over `img`. |
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Args: |
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img (str or Tensor): The image to be displayed. |
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result (Tensor): The semantic segmentation results to draw over |
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`img`. |
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palette (list[list[int]]] | np.ndarray | None): The palette of |
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segmentation map. If None is given, random palette will be |
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generated. Default: None |
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win_name (str): The window name. |
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wait_time (int): Value of waitKey param. |
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Default: 0. |
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show (bool): Whether to show the image. |
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Default: False. |
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out_file (str or None): The filename to write the image. |
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Default: None. |
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Returns: |
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img (Tensor): Only if not `show` or `out_file` |
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""" |
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img = mmcv.imread(img) |
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img = img.copy() |
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seg = result[0] |
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if palette is None: |
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if self.PALETTE is None: |
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palette = np.random.randint( |
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0, 255, size=(len(self.CLASSES), 3)) |
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else: |
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palette = self.PALETTE |
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palette = np.array(palette) |
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assert palette.shape[0] == len(self.CLASSES) |
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assert palette.shape[1] == 3 |
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assert len(palette.shape) == 2 |
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color_seg = np.zeros((seg.shape[0], seg.shape[1], 3), dtype=np.uint8) |
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for label, color in enumerate(palette): |
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color_seg[seg == label, :] = color |
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color_seg = color_seg[..., ::-1] |
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img = img * 0.5 + color_seg * 0.5 |
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img = img.astype(np.uint8) |
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if out_file is not None: |
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show = False |
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if show: |
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mmcv.imshow(img, win_name, wait_time) |
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if out_file is not None: |
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mmcv.imwrite(img, out_file) |
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if not (show or out_file): |
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warnings.warn('show==False and out_file is not specified, only ' |
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'result image will be returned') |
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return img |
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