Hybrid Attention U-Net with Evolutionary Optimization for Skin Lesion Segmentation on ISIC 2018 Dataset

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Keywords:

Skin Lesion Segmentation, U-Net, Attention Mechanism, Evolutionary Optimization

Abstract

Skin lesion segmentation is a fundamental step in automated melanoma detection systems. Although deep learning architectures such as U-Net have significantly advanced the field, challenges persist due to variations in lesion size, shape, color, and the presence of imaging artifacts. In this paper, we propose a Hybrid Attention U-Net (HA-UNet) that integrates channel-wise and spatial attention mechanisms to improve feature representation. To further enhance segmentation accuracy and reduce manual hyperparameter tuning, we employ Differential Evolution (DE) as an evolutionary optimization strategy. The proposed method is evaluated on the ISIC 2018 dataset, consisting of 2,594 dermoscopic images with corresponding ground truth masks. Experimental results show that HA-UNet with DE optimization achieves a Dice similarity coefficient of 0.908 and a mean Intersection over Union (IoU) of 0.862, outperforming standard U-Net and Attention U-Net. The results demonstrate that hybrid attention combined with evolutionary optimization provides a robust, automated solution for skin lesion segmentation.

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Published

2026-03-26

How to Cite

Hybrid Attention U-Net with Evolutionary Optimization for Skin Lesion Segmentation on ISIC 2018 Dataset. (2026). Academicia Review-A Multidisciplinary Online Journal, 2(03), 126-136. https://academicia.org/index.php/journal/article/view/61

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