基于k均值聚类去除不需要区域的皮肤病变分割

Nechirvan Asaad Zebari, Emin Tenekeci̇
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引用次数: 0

摘要

皮肤病变的分割是计算机系统早期准确识别皮肤癌的关键。由于毛发、凝胶气泡、标尺标记、模糊边界和低对比度等挑战,很难在皮肤镜图像中自动区分皮肤病变。我们提出了一种基于k均值和可训练机器学习系统的有效方法来分割皮肤癌图像的兴趣区域(ROI)。该方法分几个阶段实现,包括灰度图像转换,对比度图像增强,降噪去除伪影,使用k均值聚类从图像中分割皮肤病变,以及使用可训练机器学习系统从不需要的对象中分割ROI。使用ISIC 2017公开可用的数据集对提议的模型进行了评估。该方法的准确率为90.09,优于文献中的几种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Skin Lesion Segmentation Using K-means Clustering with Removal Unwanted Regions
The segmentation of skin lesions is crucial to the early and accurate identification of skin cancer by computerized systems. It is difficult to automatically divide skin lesions in dermoscopic images because of challenges such as hairs, gel bubbles, ruler marks, fuzzy boundaries, and low contrast. We proposed an effective method based on K-means and a trainable machine learning system to segment regions of interest (ROI) in skin cancer images. The proposed method was implemented in several stages, including grayscale image conversion, contrast image enhancement, artifact removal with noise reduction, skin lesion segmentation from image using K-means clustering, and ROI segmentation from unwanted objects using a trainable machine learning system. The proposed model has been evaluated using the ISIC 2017 publicly available dataset. The proposed method obtained a 90.09 accuracy rate, outperforming several methods in the literature.
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