斯里兰卡常见皮肤病的智能分割和分类方法

L. Wijesinghe, Dmr Kulasekera, W. Ilmini
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引用次数: 1

摘要

皮肤病在世界范围内普遍存在,患者的生活质量和整体健康往往因此受到阻碍。早期发现和治疗是快速康复的关键。识别皮肤疾病的自动化系统可以作为辅助医生和医护人员的工具。本文介绍了一个智能系统,该系统使用图像处理、遗传算法和机器学习对斯里兰卡三种常见的皮肤病——花斑癣、特应性皮炎和牛皮癣进行分割和分类。采用基于YUV的颜色分割方法提取受影响区域,然后提取纹理和颜色特征进行分类。利用遗传算法获得优化后的特征子集。然后训练一个基于SVM的分类器,成功地对三种皮肤病进行了分类,总体准确率为86.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent Approach to Segmentation and Classification of Common Skin Diseases in Sri Lanka
Skin diseases prevail worldwide, and the quality of life and overall health of patients are often hindered as a result. Early detection and treatment are key to a quick recovery. An automated system to identify skin diseases can act as a tool to assist doctors and healthcare workers. This paper presents an intelligent system to segment and classify three common skin diseases in Sri Lanka - tinea versicolor, atopic dermatitis and psoriasis - using image processing, genetic algorithm and machine learning. YUV -based color segmentation was applied to extract the affected region, then the texture and color features were extracted for classification. Genetic algorithm was utilized to obtain the optimized feature subset. An SVM based classifier was then trained and succeeded in classifying the three skin diseases with an overall accuracy of 86.7%.
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