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Implementation of boundary-aware ShapeLoss #4205
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1a615e3
New: boundary-aware ShapeLoss
arnauddhaene 225123a
Merge branch 'Project-MONAI:dev' into dev
arnauddhaene 112c0d6
Fix: changes following @wyli's comments
arnauddhaene 80dc739
Merge branch 'dev' of https://github.com/arnauddhaene/MONAI into dev
arnauddhaene 1b7307e
Fix: minor changes
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# Copyright (c) MONAI Consortium | ||
# Licensed under the Apache License, Version 2.0 (the "License"); | ||
# you may not use this file except in compliance with the License. | ||
# You may obtain a copy of the License at | ||
# http://www.apache.org/licenses/LICENSE-2.0 | ||
# Unless required by applicable law or agreed to in writing, software | ||
# distributed under the License is distributed on an "AS IS" BASIS, | ||
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. | ||
# See the License for the specific language governing permissions and | ||
# limitations under the License. | ||
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import warnings | ||
from itertools import product | ||
from typing import Callable, Optional, Union | ||
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import numpy as np | ||
import torch | ||
from torch.nn.modules.loss import _Loss | ||
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from monai.networks import one_hot | ||
from monai.utils import LossReduction, convert_data_type, optional_import | ||
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distance_transform_edt, _ = optional_import("scipy.ndimage", name="distance_transform_edt") | ||
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class ShapeDistLoss(_Loss): | ||
def __init__( | ||
self, | ||
include_background: bool = True, | ||
to_onehot_y: bool = False, | ||
sigmoid: bool = False, | ||
softmax: bool = False, | ||
other_act: Optional[Callable] = None, | ||
smooth_nr: float = 1e-8, | ||
smooth_k: float = 2e-1, | ||
reduction: Union[LossReduction, str] = LossReduction.MEAN, | ||
) -> None: | ||
""" | ||
Shape Information Loss inspired by [Huang et al., 2021](https://ieeexplore.ieee.org/document/9433775) | ||
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Args: | ||
include_background: if False, channel index 0 (background category) is excluded from the calculation. | ||
if the non-background segmentations are small compared to the total image size they can get overwhelmed | ||
by the signal from the background so excluding it in such cases helps convergence. | ||
to_onehot_y: whether to convert `y` into the one-hot format. Defaults to False. | ||
sigmoid: if True, apply a sigmoid function to the prediction. | ||
softmax: if True, apply a softmax function to the prediction. | ||
other_act: if don't want to use `sigmoid` or `softmax`, use other callable function to execute | ||
other activation layers, Defaults to ``None``. for example: | ||
`other_act = torch.tanh`. | ||
smooth_nr: a small constant added to the numerator to avoid zero. | ||
smooth_k: smoothness factor used in the Heaviside function | ||
reduction: {``"none"``, ``"mean"``, ``"sum"``} | ||
Specifies the reduction to apply to the output. Defaults to ``"mean"``. | ||
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- ``"none"``: no reduction will be applied. | ||
- ``"mean"``: the sum of the output will be divided by the number of elements in the output. | ||
- ``"sum"``: the output will be summed. | ||
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Raises: | ||
TypeError: When ``other_act`` is not an ``Optional[Callable]``. | ||
ValueError: When more than 1 of [``sigmoid=True``, ``softmax=True``, ``other_act is not None``]. | ||
Incompatible values. | ||
""" | ||
super().__init__(reduction=LossReduction(reduction).value) | ||
if other_act is not None and not callable(other_act): | ||
raise TypeError(f"other_act must be None or callable but is {type(other_act).__name__}.") | ||
if int(sigmoid) + int(softmax) + int(other_act is not None) > 1: | ||
raise ValueError("Incompatible values: more than 1 of [sigmoid=True, softmax=True, other_act is not None].") | ||
self.include_background = include_background | ||
self.to_onehot_y = to_onehot_y | ||
self.sigmoid = sigmoid | ||
self.softmax = softmax | ||
self.other_act = other_act | ||
self.smooth_nr = float(smooth_nr) | ||
self.smooth_k = float(smooth_k) | ||
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def distance_map(self, mask: torch.Tensor) -> torch.Tensor: | ||
"""Creates a distance map from a 2D binary mask. | ||
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Args: | ||
mask (torch.Tensor): Binary mask of shape [WD]. | ||
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Returns: | ||
torch.Tensor: Boundary distance map of shape [WD] | ||
""" | ||
# Convert to NumPy to use with SciPy | ||
roi, _, _ = convert_data_type(mask, np.ndarray) | ||
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# Compute normalized distance transform | ||
dt: np.ndarray = distance_transform_edt(roi) | ||
dt /= dt.max() + self.smooth_nr | ||
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# apply Heaviside function to softly normalize into [0, 1] | ||
result: np.ndarray = 1 / (1 + np.exp(-(1 - dt) / self.smooth_k)) | ||
# mask using region of interest | ||
result *= roi | ||
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return torch.Tensor(result) | ||
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def forward(self, input: torch.Tensor, target: torch.Tensor) -> torch.Tensor: | ||
""" | ||
Args: | ||
input: the shape should be BNH[WD], where N is the number of classes. | ||
target: the shape should be BNH[WD] or B1H[WD], where N is the number of classes. | ||
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Raises: | ||
AssertionError: When input and target (after one hot transform if set) | ||
have different shapes. | ||
ValueError: When ``self.reduction`` is not one of ["mean", "sum", "none"]. | ||
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Example: | ||
>>> from monai.losses.dice import * # NOQA | ||
>>> import torch | ||
>>> from monai.losses.dice import ShapeLoss | ||
>>> B, C, H, W = 7, 5, 3, 2 | ||
>>> input = torch.rand(B, C, H, W) | ||
>>> target_idx = torch.randint(low=0, high=C - 1, size=(B, H, W)).long() | ||
>>> target = one_hot(target_idx[:, None, ...], num_classes=C) | ||
>>> self = ShapeLoss(reduction='none') | ||
>>> loss = self(input, target) | ||
>>> assert np.broadcast_shapes(loss.shape, input.shape) == input.shape | ||
""" | ||
if self.sigmoid: | ||
input = torch.sigmoid(input) | ||
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n_pred_ch = input.shape[1] | ||
if self.softmax: | ||
if n_pred_ch == 1: | ||
warnings.warn("single channel prediction, `softmax=True` ignored.") | ||
else: | ||
input = torch.softmax(input, 1) | ||
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if self.other_act is not None: | ||
input = self.other_act(input) | ||
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if self.to_onehot_y: | ||
if n_pred_ch == 1: | ||
warnings.warn("single channel prediction, `to_onehot_y=True` ignored.") | ||
else: | ||
target = one_hot(target, num_classes=n_pred_ch) | ||
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if not self.include_background: | ||
if n_pred_ch == 1: | ||
warnings.warn("single channel prediction, `include_background=False` ignored.") | ||
else: | ||
# if skipping background, removing first channel | ||
target = target[:, 1:] | ||
input = input[:, 1:] | ||
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if target.shape != input.shape: | ||
raise AssertionError(f"ground truth has different shape ({target.shape}) from input ({input.shape})") | ||
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distance_maps = torch.empty(size=target.size()).to(input.device) | ||
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for im, ch in product(*map(range, target.shape[:2])): | ||
distance_maps[im, ch] = self.distance_map(target[im, ch]) | ||
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f = (distance_maps - input).abs().sum(dim=(2, 3)) / input.sum(dim=(2, 3)) | ||
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if self.reduction == LossReduction.MEAN.value: | ||
f = torch.mean(f) # the batch and channel average | ||
elif self.reduction == LossReduction.SUM.value: | ||
f = torch.sum(f) # sum over the batch and channel dims | ||
elif self.reduction == LossReduction.NONE.value: | ||
# If we are not computing voxelwise loss components at least | ||
# make sure a none reduction maintains a broadcastable shape | ||
broadcast_shape = list(f.shape[0:2]) + [1] * (len(input.shape) - 2) | ||
f = f.view(broadcast_shape) | ||
else: | ||
raise ValueError(f'Unsupported reduction: {self.reduction}, available options are ["mean", "sum", "none"].') | ||
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return f |
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would be great to create a test case for this class, you can follow this one https://github.com/Project-MONAI/MONAI/blob/dev/tests/test_local_normalized_cross_correlation_loss.py
you can run a single test case within the codebase:
pip install -U -r requirements-dev.txt # install testing tools python -m tests.test_local_normalized_cross_correlation_loss