FourierLoss: Shape-Aware Loss Function with Fourier Descriptors
Mehmet Bahadir Erden, Selahattin Cansiz, Onur Caki, Haya Khattak,, Durmus Etiz, Melek Cosar Yakar, Kerem Duruer, Berke Barut, Cigdem, Gunduz-Demir

TL;DR
This paper introduces FourierLoss, a shape-aware loss function utilizing Fourier descriptors with trainable hyperparameters, enabling neural networks to better preserve object shapes in medical image segmentation, especially under low contrast.
Contribution
The paper proposes FourierLoss, an adaptive, shape-aware loss function with trainable hyperparameters that dynamically emphasizes shape details during training.
Findings
Improved liver segmentation accuracy on CT images.
Statistically significant performance gains over existing loss functions.
Effective dynamic adjustment of shape detail learning during training.
Abstract
Encoder-decoder networks become a popular choice for various medical image segmentation tasks. When they are trained with a standard loss function, these networks are not explicitly enforced to preserve the shape integrity of an object in an image. However, this ability of the network is important to obtain more accurate results, especially when there is a low-contrast difference between the object and its surroundings. In response to this issue, this work introduces a new shape-aware loss function, which we name FourierLoss. This loss function relies on quantifying the shape dissimilarity between the ground truth and the predicted segmentation maps through the Fourier descriptors calculated on their objects, and penalizing this dissimilarity in network training. Different than the previous studies, FourierLoss offers an adaptive loss function with trainable hyperparameters that control…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
MethodsAdaptive Robust Loss
