| import torch |
| import torch.nn as nn |
| import torch.nn.functional as F |
|
|
| from annotator.mmpkg.mmseg.core import add_prefix |
| from annotator.mmpkg.mmseg.ops import resize |
| from .. import builder |
| from ..builder import SEGMENTORS |
| from .base import BaseSegmentor |
|
|
|
|
| @SEGMENTORS.register_module() |
| class EncoderDecoder(BaseSegmentor): |
| """Encoder Decoder segmentors. |
| |
| EncoderDecoder typically consists of backbone, decode_head, auxiliary_head. |
| Note that auxiliary_head is only used for deep supervision during training, |
| which could be dumped during inference. |
| """ |
|
|
| def __init__(self, |
| backbone, |
| decode_head, |
| neck=None, |
| auxiliary_head=None, |
| train_cfg=None, |
| test_cfg=None, |
| pretrained=None): |
| super(EncoderDecoder, self).__init__() |
| self.backbone = builder.build_backbone(backbone) |
| if neck is not None: |
| self.neck = builder.build_neck(neck) |
| self._init_decode_head(decode_head) |
| self._init_auxiliary_head(auxiliary_head) |
|
|
| self.train_cfg = train_cfg |
| self.test_cfg = test_cfg |
|
|
| self.init_weights(pretrained=pretrained) |
|
|
| assert self.with_decode_head |
|
|
| def _init_decode_head(self, decode_head): |
| """Initialize ``decode_head``""" |
| self.decode_head = builder.build_head(decode_head) |
| self.align_corners = self.decode_head.align_corners |
| self.num_classes = self.decode_head.num_classes |
|
|
| def _init_auxiliary_head(self, auxiliary_head): |
| """Initialize ``auxiliary_head``""" |
| if auxiliary_head is not None: |
| if isinstance(auxiliary_head, list): |
| self.auxiliary_head = nn.ModuleList() |
| for head_cfg in auxiliary_head: |
| self.auxiliary_head.append(builder.build_head(head_cfg)) |
| else: |
| self.auxiliary_head = builder.build_head(auxiliary_head) |
|
|
| def init_weights(self, pretrained=None): |
| """Initialize the weights in backbone and heads. |
| |
| Args: |
| pretrained (str, optional): Path to pre-trained weights. |
| Defaults to None. |
| """ |
|
|
| super(EncoderDecoder, self).init_weights(pretrained) |
| self.backbone.init_weights(pretrained=pretrained) |
| self.decode_head.init_weights() |
| if self.with_auxiliary_head: |
| if isinstance(self.auxiliary_head, nn.ModuleList): |
| for aux_head in self.auxiliary_head: |
| aux_head.init_weights() |
| else: |
| self.auxiliary_head.init_weights() |
|
|
| def extract_feat(self, img): |
| """Extract features from images.""" |
| x = self.backbone(img) |
| if self.with_neck: |
| x = self.neck(x) |
| return x |
|
|
| def encode_decode(self, img, img_metas): |
| """Encode images with backbone and decode into a semantic segmentation |
| map of the same size as input.""" |
| x = self.extract_feat(img) |
| out = self._decode_head_forward_test(x, img_metas) |
| out = resize( |
| input=out, |
| size=img.shape[2:], |
| mode='bilinear', |
| align_corners=self.align_corners) |
| return out |
|
|
| def _decode_head_forward_train(self, x, img_metas, gt_semantic_seg): |
| """Run forward function and calculate loss for decode head in |
| training.""" |
| losses = dict() |
| loss_decode = self.decode_head.forward_train(x, img_metas, |
| gt_semantic_seg, |
| self.train_cfg) |
|
|
| losses.update(add_prefix(loss_decode, 'decode')) |
| return losses |
|
|
| def _decode_head_forward_test(self, x, img_metas): |
| """Run forward function and calculate loss for decode head in |
| inference.""" |
| seg_logits = self.decode_head.forward_test(x, img_metas, self.test_cfg) |
| return seg_logits |
|
|
| def _auxiliary_head_forward_train(self, x, img_metas, gt_semantic_seg): |
| """Run forward function and calculate loss for auxiliary head in |
| training.""" |
| losses = dict() |
| if isinstance(self.auxiliary_head, nn.ModuleList): |
| for idx, aux_head in enumerate(self.auxiliary_head): |
| loss_aux = aux_head.forward_train(x, img_metas, |
| gt_semantic_seg, |
| self.train_cfg) |
| losses.update(add_prefix(loss_aux, f'aux_{idx}')) |
| else: |
| loss_aux = self.auxiliary_head.forward_train( |
| x, img_metas, gt_semantic_seg, self.train_cfg) |
| losses.update(add_prefix(loss_aux, 'aux')) |
|
|
| return losses |
|
|
| def forward_dummy(self, img): |
| """Dummy forward function.""" |
| seg_logit = self.encode_decode(img, None) |
|
|
| return seg_logit |
|
|
| def forward_train(self, img, img_metas, gt_semantic_seg): |
| """Forward function for training. |
| |
| Args: |
| img (Tensor): Input images. |
| img_metas (list[dict]): List of image info dict where each dict |
| has: 'img_shape', 'scale_factor', 'flip', and may also contain |
| 'filename', 'ori_shape', 'pad_shape', and 'img_norm_cfg'. |
| For details on the values of these keys see |
| `mmseg/datasets/pipelines/formatting.py:Collect`. |
| gt_semantic_seg (Tensor): Semantic segmentation masks |
| used if the architecture supports semantic segmentation task. |
| |
| Returns: |
| dict[str, Tensor]: a dictionary of loss components |
| """ |
|
|
| x = self.extract_feat(img) |
|
|
| losses = dict() |
|
|
| loss_decode = self._decode_head_forward_train(x, img_metas, |
| gt_semantic_seg) |
| losses.update(loss_decode) |
|
|
| if self.with_auxiliary_head: |
| loss_aux = self._auxiliary_head_forward_train( |
| x, img_metas, gt_semantic_seg) |
| losses.update(loss_aux) |
|
|
| return losses |
|
|
| |
| def slide_inference(self, img, img_meta, rescale): |
| """Inference by sliding-window with overlap. |
| |
| If h_crop > h_img or w_crop > w_img, the small patch will be used to |
| decode without padding. |
| """ |
|
|
| h_stride, w_stride = self.test_cfg.stride |
| h_crop, w_crop = self.test_cfg.crop_size |
| batch_size, _, h_img, w_img = img.size() |
| num_classes = self.num_classes |
| h_grids = max(h_img - h_crop + h_stride - 1, 0) // h_stride + 1 |
| w_grids = max(w_img - w_crop + w_stride - 1, 0) // w_stride + 1 |
| preds = img.new_zeros((batch_size, num_classes, h_img, w_img)) |
| count_mat = img.new_zeros((batch_size, 1, h_img, w_img)) |
| for h_idx in range(h_grids): |
| for w_idx in range(w_grids): |
| y1 = h_idx * h_stride |
| x1 = w_idx * w_stride |
| y2 = min(y1 + h_crop, h_img) |
| x2 = min(x1 + w_crop, w_img) |
| y1 = max(y2 - h_crop, 0) |
| x1 = max(x2 - w_crop, 0) |
| crop_img = img[:, :, y1:y2, x1:x2] |
| crop_seg_logit = self.encode_decode(crop_img, img_meta) |
| preds += F.pad(crop_seg_logit, |
| (int(x1), int(preds.shape[3] - x2), int(y1), |
| int(preds.shape[2] - y2))) |
|
|
| count_mat[:, :, y1:y2, x1:x2] += 1 |
| assert (count_mat == 0).sum() == 0 |
| if torch.onnx.is_in_onnx_export(): |
| |
| count_mat = torch.from_numpy( |
| count_mat.cpu().detach().numpy()).to(device=img.device) |
| preds = preds / count_mat |
| if rescale: |
| preds = resize( |
| preds, |
| size=img_meta[0]['ori_shape'][:2], |
| mode='bilinear', |
| align_corners=self.align_corners, |
| warning=False) |
| return preds |
|
|
| def whole_inference(self, img, img_meta, rescale): |
| """Inference with full image.""" |
|
|
| seg_logit = self.encode_decode(img, img_meta) |
| if rescale: |
| |
| if torch.onnx.is_in_onnx_export(): |
| size = img.shape[2:] |
| else: |
| size = img_meta[0]['ori_shape'][:2] |
| seg_logit = resize( |
| seg_logit, |
| size=size, |
| mode='bilinear', |
| align_corners=self.align_corners, |
| warning=False) |
|
|
| return seg_logit |
|
|
| def inference(self, img, img_meta, rescale): |
| """Inference with slide/whole style. |
| |
| Args: |
| img (Tensor): The input image of shape (N, 3, H, W). |
| img_meta (dict): Image info dict where each dict has: 'img_shape', |
| 'scale_factor', 'flip', and may also contain |
| 'filename', 'ori_shape', 'pad_shape', and 'img_norm_cfg'. |
| For details on the values of these keys see |
| `mmseg/datasets/pipelines/formatting.py:Collect`. |
| rescale (bool): Whether rescale back to original shape. |
| |
| Returns: |
| Tensor: The output segmentation map. |
| """ |
|
|
| assert self.test_cfg.mode in ['slide', 'whole'] |
| ori_shape = img_meta[0]['ori_shape'] |
| assert all(_['ori_shape'] == ori_shape for _ in img_meta) |
| if self.test_cfg.mode == 'slide': |
| seg_logit = self.slide_inference(img, img_meta, rescale) |
| else: |
| seg_logit = self.whole_inference(img, img_meta, rescale) |
| output = F.softmax(seg_logit, dim=1) |
| flip = img_meta[0]['flip'] |
| if flip: |
| flip_direction = img_meta[0]['flip_direction'] |
| assert flip_direction in ['horizontal', 'vertical'] |
| if flip_direction == 'horizontal': |
| output = output.flip(dims=(3, )) |
| elif flip_direction == 'vertical': |
| output = output.flip(dims=(2, )) |
|
|
| return output |
|
|
| def simple_test(self, img, img_meta, rescale=True): |
| """Simple test with single image.""" |
| seg_logit = self.inference(img, img_meta, rescale) |
| seg_pred = seg_logit.argmax(dim=1) |
| if torch.onnx.is_in_onnx_export(): |
| |
| seg_pred = seg_pred.unsqueeze(0) |
| return seg_pred |
| seg_pred = seg_pred.cpu().numpy() |
| |
| seg_pred = list(seg_pred) |
| return seg_pred |
|
|
| def aug_test(self, imgs, img_metas, rescale=True): |
| """Test with augmentations. |
| |
| Only rescale=True is supported. |
| """ |
| |
| assert rescale |
| |
| seg_logit = self.inference(imgs[0], img_metas[0], rescale) |
| for i in range(1, len(imgs)): |
| cur_seg_logit = self.inference(imgs[i], img_metas[i], rescale) |
| seg_logit += cur_seg_logit |
| seg_logit /= len(imgs) |
| seg_pred = seg_logit.argmax(dim=1) |
| seg_pred = seg_pred.cpu().numpy() |
| |
| seg_pred = list(seg_pred) |
| return seg_pred |
|
|