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U-KAN Makes Strong Backbone for Medical Image Segmentation and Generation

About

U-Net has become a cornerstone in various visual applications such as image segmentation and diffusion probability models. While numerous innovative designs and improvements have been introduced by incorporating transformers or MLPs, the networks are still limited to linearly modeling patterns as well as the deficient interpretability. To address these challenges, our intuition is inspired by the impressive results of the Kolmogorov-Arnold Networks (KANs) in terms of accuracy and interpretability, which reshape the neural network learning via the stack of non-linear learnable activation functions derived from the Kolmogorov-Anold representation theorem. Specifically, in this paper, we explore the untapped potential of KANs in improving backbones for vision tasks. We investigate, modify and re-design the established U-Net pipeline by integrating the dedicated KAN layers on the tokenized intermediate representation, termed U-KAN. Rigorous medical image segmentation benchmarks verify the superiority of U-KAN by higher accuracy even with less computation cost. We further delved into the potential of U-KAN as an alternative U-Net noise predictor in diffusion models, demonstrating its applicability in generating task-oriented model architectures. These endeavours unveil valuable insights and sheds light on the prospect that with U-KAN, you can make strong backbone for medical image segmentation and generation. Project page:\url{https://yes-u-kan.github.io/}.

Chenxin Li, Xinyu Liu, Wuyang Li, Cheng Wang, Hengyu Liu, Yifan Liu, Zhen Chen, Yixuan Yuan• 2024

Related benchmarks

TaskDatasetResultRank
Medical Image SegmentationBUSI (test)
Dice76.42
121
Medical Image SegmentationKvasir-Seg
Dice Score85.78
75
Medical Image SegmentationCVC-ClinicDB
Dice Score89.88
68
Medical Image SegmentationISIC
DICE91.9
64
Medical Image SegmentationBUSI
Dice Score76.95
61
Medical Image SegmentationISIC 2017
Dice Score83.46
52
Medical Image SegmentationGlaS (test)
Dice Score93.37
44
Semantic segmentationCSDD (test)
F1 Score (w/bg)77.41
34
Semantic segmentationCSDD original (test)
F1 Score (w/bg)69.81
34
Binary SegmentationCVC-ColonDB
DSC (%)84.66
28
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