mmdet.models.utils.misc 源代码
# Copyright (c) OpenMMLab. All rights reserved.
from torch.nn import functional as F
[文档]def interpolate_as(source, target, mode='bilinear', align_corners=False):
"""Interpolate the `source` to the shape of the `target`.
The `source` must be a Tensor, but the `target` can be a Tensor or a
np.ndarray with the shape (..., target_h, target_w).
Args:
source (Tensor): A 3D/4D Tensor with the shape (N, H, W) or
(N, C, H, W).
target (Tensor | np.ndarray): The interpolation target with the shape
(..., target_h, target_w).
mode (str): Algorithm used for interpolation. The options are the
same as those in F.interpolate(). Default: ``'bilinear'``.
align_corners (bool): The same as the argument in F.interpolate().
Returns:
Tensor: The interpolated source Tensor.
"""
assert len(target.shape) >= 2
def _interpolate_as(source, target, mode='bilinear', align_corners=False):
"""Interpolate the `source` (4D) to the shape of the `target`."""
target_h, target_w = target.shape[-2:]
source_h, source_w = source.shape[-2:]
if target_h != source_h or target_w != source_w:
source = F.interpolate(
source,
size=(target_h, target_w),
mode=mode,
align_corners=align_corners)
return source
if len(source.shape) == 3:
source = source[:, None, :, :]
source = _interpolate_as(source, target, mode, align_corners)
return source[:, 0, :, :]
else:
return _interpolate_as(source, target, mode, align_corners)