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MambaLiteUNet: Cross-Gated Adaptive Feature Fusion for Robust Skin Lesion Segmentation

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Recent segmentation models have demonstrated promising efficiency by aggressively reducing parameter counts and computational complexity. However, these models often struggle to accurately delineate fine lesion boundaries and texture patterns essential for early skin cancer diagnosis and treatment planning. In this paper, we propose MambaLiteUNet, a compact yet robust segmentation framework that integrates Mamba state space modeling into a U-Net architecture, along with three key modules: Adaptive Multi-Branch Mamba Feature Fusion (AMF), Local-Global Feature Mixing (LGFM), and Cross-Gated Attention (CGA). These modules are designed to enhance local-global feature interaction, preserve spatial details, and improve the quality of skip connections. MambaLiteUNet achieves an average IoU of 87.12% and average Dice score of 93.09% across ISIC2017, ISIC2018, HAM10000, and PH2 benchmarks, outperforming state-of-the-art models. Compared to U-Net, our model improves average IoU and Dice by 7.72 and 4.61 points, respectively, while reducing parameters by 93.6% and GFLOPs by 97.6%. Additionally, in domain generalization with six unseen lesion categories, MambaLiteUNet achieves 77.61% IoU and 87.23% Dice, performing best among all evaluated models. Our extensive experiments demonstrate that MambaLiteUNet achieves a strong balance between accuracy and efficiency, making it a competitive and practical solution for dermatological image segmentation. Our code is publicly available at: https://github.com/maklachur/MambaLiteUNet.

Md Maklachur Rahman, Soon Ki Jung, Tracy Hammond• 2026

Related benchmarks

TaskDatasetResultRank
Medical Image SegmentationBUSI (test)
Dice87.44
228
Medical Image SegmentationISIC 2018--
187
Medical Image SegmentationISIC 2017--
102
Skin Lesion SegmentationISIC 2018
Dice Coefficient91.07
94
Skin Lesion SegmentationPH2
DIC0.8993
87
Skin Lesion SegmentationPH2 (test)
DSC93.92
70
2D skin lesion segmentationISIC 2017
mIoU85.55
60
Lesion SegmentationHAM10000
HD958.65
38
Skin Lesion SegmentationHAM10000
Dice Coefficient95.16
34
Lesion SegmentationISIC 2018--
26
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