Skin Lesion Segmentation Based on Improved U-net

Lina Liu, Lichao Mou, Xiaoxiang Zhu, M. Mandal
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引用次数: 28

Abstract

Melanoma is one of the most common and dangerous skin cancers, accounting for 75% of deaths associated with skin cancer. Detection of melanoma in early stages can significantly improve the survival rate. Automatic segmentation of melanoma is an important and essential step for accurate detection of melanoma. Many existing works based on traditional segmentation methods and deep learning methods have been proposed for high-resolution dermoscopy images. However, due to the intrinsic visual complexity and ambiguity among different skin conditions, automatic melanoma segmentation is still a challenging task for existing methods. Among these methods, the deep learning methods have obtained more attention recently due to its high performance by training an end-to-end framework, which needs no human interaction. U-net is a very popular deep learning model for medical image segmentation. In this paper, we propose an efficient skin lesion segmentation based on improved U-net model. Experiments conducted on the 2017 ISIC Challenge dataset towards melanoma detection shows that the proposed method can obtain state-of-the-art performance on skin lesion segmentation task.
基于改进U-net的皮肤病变分割
黑色素瘤是最常见和最危险的皮肤癌之一,占皮肤癌相关死亡人数的75%。早期发现黑色素瘤可以显著提高生存率。黑色素瘤的自动分割是准确检测黑色素瘤的重要步骤。针对高分辨率皮肤镜图像,已有许多基于传统分割方法和深度学习方法的工作被提出。然而,由于不同皮肤状况之间固有的视觉复杂性和模糊性,对于现有的方法来说,黑色素瘤的自动分割仍然是一个具有挑战性的任务。在这些方法中,深度学习方法由于其训练端到端框架的高性能,无需人工交互,近年来受到越来越多的关注。U-net是一种非常流行的医学图像分割深度学习模型。本文提出了一种基于改进U-net模型的高效皮肤病灶分割方法。在2017年针对黑色素瘤检测的ISIC Challenge数据集上进行的实验表明,该方法可以在皮肤病变分割任务中获得最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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