Source code for torchaug.ta_tensors._mask

# ==================================
# Copyright: CEA-LIST/DIASI/SIALV/
# Author : Torchaug Developers
# License: CECILL-C
# ==================================

# Code partially based on Torchvision (BSD 3-Clause License), available at:
#   https://github.com/pytorch/vision

from __future__ import annotations

from typing import Any, Optional, Union

import torch

from ._ta_tensor import TATensor


[docs] class Mask(TATensor): """:class:`torch.Tensor` subclass for segmentation and detection masks. Args: data: Any data that can be turned into a tensor with :func:`torch.as_tensor`. dtype: Desired data type. If omitted, will be inferred from ``data``. device: Desired device. If omitted and ``data`` is a :class:`torch.Tensor`, the device is taken from it. Otherwise, the mask is constructed on the CPU. requires_grad: Whether autograd should record operations. If omitted and ``data`` is a :class:`torch.Tensor`, the value is taken from it. Otherwise, defaults to ``False``. """ def __new__( cls, data: Any, *, dtype: Optional[torch.dtype] = None, device: Optional[Union[torch.device, str, int]] = None, requires_grad: Optional[bool] = None, ) -> Mask: tensor = cls._to_tensor(data, dtype=dtype, device=device, requires_grad=requires_grad) return tensor.as_subclass(cls)