Shortcuts

Source code for mmtrack.structures.reid_data_sample

# Copyright (c) OpenMMLab. All rights reserved.
from numbers import Number
from typing import Sequence, Union

import mmengine
import numpy as np
import torch
from mmengine.structures import BaseDataElement, LabelData


def format_label(value: Union[torch.Tensor, np.ndarray, Sequence, int],
                 num_classes: int = None) -> LabelData:
    """Convert label of various python types to :obj:`mmengine.LabelData`.

    Supported types are: :class:`numpy.ndarray`, :class:`torch.Tensor`,
    :class:`Sequence`, :class:`int`.

    Args:
        value (torch.Tensor | numpy.ndarray | Sequence | int): Label value.
        num_classes (int, optional): The number of classes. If not None, set
            it to the metainfo. Defaults to None.

    Returns:
        :obj:`mmengine.LabelData`: The foramtted label data.
    """

    # Handle single number
    if isinstance(value, (torch.Tensor, np.ndarray)) and value.ndim == 0:
        value = int(value.item())

    if isinstance(value, np.ndarray):
        value = torch.from_numpy(value)
    elif isinstance(value, Sequence) and not mmengine.utils.is_str(value):
        value = torch.tensor(value)
    elif isinstance(value, int):
        value = torch.LongTensor([value])
    elif not isinstance(value, torch.Tensor):
        raise TypeError(f'Type {type(value)} is not an available label type.')

    metainfo = {}
    if num_classes is not None:
        metainfo['num_classes'] = num_classes
        if value.max() >= num_classes:
            raise ValueError(f'The label data ({value}) should not '
                             f'exceed num_classes ({num_classes}).')
    label = LabelData(label=value, metainfo=metainfo)
    return label


[docs]class ReIDDataSample(BaseDataElement): """A data structure interface of ReID task. It's used as interfaces between different components. Meta field: img_shape (Tuple): The shape of the corresponding input image. Used for visualization. ori_shape (Tuple): The original shape of the corresponding image. Used for visualization. num_classes (int): The number of all categories. Used for label format conversion. Data field: gt_label (LabelData): The ground truth label. pred_label (LabelData): The predicted label. scores (torch.Tensor): The outputs of model. """ @property def gt_label(self): return self._gt_label @gt_label.setter def gt_label(self, value: LabelData): self.set_field(value, '_gt_label', dtype=LabelData) @gt_label.deleter def gt_label(self): del self._gt_label
[docs] def set_gt_label( self, value: Union[np.ndarray, torch.Tensor, Sequence[Number], Number] ) -> 'ReIDDataSample': """Set label of ``gt_label``.""" label = format_label(value, self.get('num_classes')) if 'gt_label' in self: # setting for the second time self.gt_label.label = label.label else: # setting for the first time self.gt_label = label return self
[docs] def set_gt_score(self, value: torch.Tensor) -> 'ReIDDataSample': """Set score of ``gt_label``.""" assert isinstance(value, torch.Tensor), \ f'The value should be a torch.Tensor but got {type(value)}.' assert value.ndim == 1, \ f'The dims of value should be 1, but got {value.ndim}.' if 'num_classes' in self: assert value.size(0) == self.num_classes, \ f"The length of value ({value.size(0)}) doesn't "\ f'match the num_classes ({self.num_classes}).' metainfo = {'num_classes': self.num_classes} else: metainfo = {'num_classes': value.size(0)} if 'gt_label' in self: # setting for the second time self.gt_label.score = value else: # setting for the first time self.gt_label = LabelData(score=value, metainfo=metainfo) return self
@property def pred_feature(self): return self._pred_feature @pred_feature.setter def pred_feature(self, value: torch.Tensor): self.set_field(value, '_pred_feature', dtype=torch.Tensor) @pred_feature.deleter def pred_feature(self): del self._pred_feature
Read the Docs v: 1.x
Versions
latest
stable
1.x
dev-1.x
Downloads
pdf
html
epub
On Read the Docs
Project Home
Builds

Free document hosting provided by Read the Docs.