# Copyright (c) OpenMMLab. All rights reserved. from typing import List, Optional from mmengine.structures import BaseDataElement, InstanceData, PixelData class DetDataSample(BaseDataElement): """A data structure interface of MMDetection. They are used as interfaces between different components. The attributes in ``DetDataSample`` are divided into several parts: - ``proposals``(InstanceData): Region proposals used in two-stage detectors. - ``gt_instances``(InstanceData): Ground truth of instance annotations. - ``pred_instances``(InstanceData): Instances of model predictions. - ``ignored_instances``(InstanceData): Instances to be ignored during training/testing. - ``gt_panoptic_seg``(PixelData): Ground truth of panoptic segmentation. - ``pred_panoptic_seg``(PixelData): Prediction of panoptic segmentation. - ``gt_sem_seg``(PixelData): Ground truth of semantic segmentation. - ``pred_sem_seg``(PixelData): Prediction of semantic segmentation. Examples: >>> import torch >>> import numpy as np >>> from mmengine.structures import InstanceData >>> from mmdet.structures import DetDataSample >>> data_sample = DetDataSample() >>> img_meta = dict(img_shape=(800, 1196, 3), ... pad_shape=(800, 1216, 3)) >>> gt_instances = InstanceData(metainfo=img_meta) >>> gt_instances.bboxes = torch.rand((5, 4)) >>> gt_instances.labels = torch.rand((5,)) >>> data_sample.gt_instances = gt_instances >>> assert 'img_shape' in data_sample.gt_instances.metainfo_keys() >>> len(data_sample.gt_instances) 5 >>> print(data_sample) ) at 0x7f21fb1b9880> >>> pred_instances = InstanceData(metainfo=img_meta) >>> pred_instances.bboxes = torch.rand((5, 4)) >>> pred_instances.scores = torch.rand((5,)) >>> data_sample = DetDataSample(pred_instances=pred_instances) >>> assert 'pred_instances' in data_sample >>> data_sample = DetDataSample() >>> gt_instances_data = dict( ... bboxes=torch.rand(2, 4), ... labels=torch.rand(2), ... masks=np.random.rand(2, 2, 2)) >>> gt_instances = InstanceData(**gt_instances_data) >>> data_sample.gt_instances = gt_instances >>> assert 'gt_instances' in data_sample >>> assert 'masks' in data_sample.gt_instances >>> data_sample = DetDataSample() >>> gt_panoptic_seg_data = dict(panoptic_seg=torch.rand(2, 4)) >>> gt_panoptic_seg = PixelData(**gt_panoptic_seg_data) >>> data_sample.gt_panoptic_seg = gt_panoptic_seg >>> print(data_sample) gt_panoptic_seg: ) at 0x7f66c2bb7280> >>> data_sample = DetDataSample() >>> gt_segm_seg_data = dict(segm_seg=torch.rand(2, 2, 2)) >>> gt_segm_seg = PixelData(**gt_segm_seg_data) >>> data_sample.gt_segm_seg = gt_segm_seg >>> assert 'gt_segm_seg' in data_sample >>> assert 'segm_seg' in data_sample.gt_segm_seg """ @property def proposals(self) -> InstanceData: return self._proposals @proposals.setter def proposals(self, value: InstanceData): self.set_field(value, '_proposals', dtype=InstanceData) @proposals.deleter def proposals(self): del self._proposals @property def gt_instances(self) -> InstanceData: return self._gt_instances @gt_instances.setter def gt_instances(self, value: InstanceData): self.set_field(value, '_gt_instances', dtype=InstanceData) @gt_instances.deleter def gt_instances(self): del self._gt_instances @property def pred_instances(self) -> InstanceData: return self._pred_instances @pred_instances.setter def pred_instances(self, value: InstanceData): self.set_field(value, '_pred_instances', dtype=InstanceData) @pred_instances.deleter def pred_instances(self): del self._pred_instances @property def ignored_instances(self) -> InstanceData: return self._ignored_instances @ignored_instances.setter def ignored_instances(self, value: InstanceData): self.set_field(value, '_ignored_instances', dtype=InstanceData) @ignored_instances.deleter def ignored_instances(self): del self._ignored_instances @property def gt_panoptic_seg(self) -> PixelData: return self._gt_panoptic_seg @gt_panoptic_seg.setter def gt_panoptic_seg(self, value: PixelData): self.set_field(value, '_gt_panoptic_seg', dtype=PixelData) @gt_panoptic_seg.deleter def gt_panoptic_seg(self): del self._gt_panoptic_seg @property def pred_panoptic_seg(self) -> PixelData: return self._pred_panoptic_seg @pred_panoptic_seg.setter def pred_panoptic_seg(self, value: PixelData): self.set_field(value, '_pred_panoptic_seg', dtype=PixelData) @pred_panoptic_seg.deleter def pred_panoptic_seg(self): del self._pred_panoptic_seg @property def gt_sem_seg(self) -> PixelData: return self._gt_sem_seg @gt_sem_seg.setter def gt_sem_seg(self, value: PixelData): self.set_field(value, '_gt_sem_seg', dtype=PixelData) @gt_sem_seg.deleter def gt_sem_seg(self): del self._gt_sem_seg @property def pred_sem_seg(self) -> PixelData: return self._pred_sem_seg @pred_sem_seg.setter def pred_sem_seg(self, value: PixelData): self.set_field(value, '_pred_sem_seg', dtype=PixelData) @pred_sem_seg.deleter def pred_sem_seg(self): del self._pred_sem_seg SampleList = List[DetDataSample] OptSampleList = Optional[SampleList]