Skin disorder diagnosis with ambiguity reduction assisted by lesion color adaptation

Q3 Engineering
N. Petrellis
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引用次数: 0

Abstract

A smart phone application based on a low complexity image processing technique and a novel fuzzy-like classification method are presented for skin disorder diagnosis. The proposed classification method takes into consideration the size and color features of skin lesions rather than their shape and texture. The classification rules are determined after processing statistically a small number of representative training photographs. Consequently, they can be defined by an end user that is not necessarily skilled in computer science. The application presented in this paper can serve as a complementary tool for a dermatologist to continuously monitor remotely his patients. The accuracy of the diagnosis that is based only on the image processing outcomes, ranges between 85.3% and 97.7% using 5 only representative photographs as a "training set" (corresponding from 9% to 24% of the test set per disease). The achieved accuracy can be improved (up to 17%), if the photographs are processed using a specific color adaptation technique. The small fraction of training photographs can be scaled up if the size of the test set is increased but it is expected that a limited number of training photographs will be sufficient in order to achieve an acceptable accuracy for a test set of any size. This accuracy can be further improved if other factors are taken into consideration (progression of the symptoms, information provided by the user, etc).
病变颜色适应辅助模糊度降低的皮肤病诊断
提出了一种基于低复杂度图像处理技术和新型模糊分类方法的智能手机应用于皮肤病诊断。所提出的分类方法考虑了皮肤病变的大小和颜色特征,而不是它们的形状和质地。分类规则是在统计处理少量具有代表性的训练照片后确定的。因此,它们可以由不一定精通计算机科学的最终用户来定义。本文中提出的应用程序可以作为皮肤科医生持续远程监测患者的补充工具。仅基于图像处理结果的诊断准确率在85.3%至97.7%之间,使用5张仅具有代表性的照片作为“训练集”(对应于每种疾病测试集的9%至24%)。如果使用特定的颜色自适应技术对照片进行处理,则可以提高所实现的精度(高达17%)。如果增加测试集的大小,可以放大训练照片的一小部分,但预计有限数量的训练照片将足以实现任何大小的测试集的可接受精度。如果考虑其他因素(症状的进展、用户提供的信息等),这种准确性可以进一步提高。
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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来源期刊
AIMS Electronics and Electrical Engineering
AIMS Electronics and Electrical Engineering Engineering-Control and Systems Engineering
CiteScore
2.40
自引率
0.00%
发文量
19
审稿时长
8 weeks
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