首页> 外文期刊>Journal of healthcare engineering. >A Fast SVM-Based Tongue’s Colour Classification Aided by k-Means Clustering Identifiers and Colour Attributes as Computer-Assisted Tool for Tongue Diagnosis
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A Fast SVM-Based Tongue’s Colour Classification Aided by k-Means Clustering Identifiers and Colour Attributes as Computer-Assisted Tool for Tongue Diagnosis

机译:基于快速的SVM舌舌的颜色分类,辅助K-means聚类标识符和颜色属性作为用于舌诊断的计算机辅助工具

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摘要

In tongue diagnosis, colour information of tongue body has kept valuable information regarding the state of disease and its correlation with the internal organs. Qualitatively, practitioners may have difficulty in their judgement due to the instable lighting condition and naked eyes ability to capture the exact colour distribution on the tongue especially the tongue with multicolour substance. To overcome this ambiguity, this paper presents a two-stage tongues multicolour classification based on a support vector machine (SVM) whose support vectors are reduced by our proposed k-means clustering identifiers and red colour range for precise tongue colour diagnosis. In the first stage, k-means clustering is used to cluster a tongue image into four clusters of image background (black), deep red region, red/light red region, and transitional region. In the second-stage classification, red/light red tongue images are further classified into red tongue or light red tongue based on the red colour range derived in our work. Overall, true rate classification accuracy of the proposed two-stage classification to diagnose red, light red, and deep red tongue colours is 94%. The number of support vectors in SVM is improved by 41.2%, and the execution time for one image is recorded as 48 seconds.
机译:在舌诊断中,舌头的颜色信息使有关疾病状态的有价值的信息及其与内脏的相关性。在定性方面,从业者可能难以遇到判断,因为不稳定的照明条件和肉眼的能力捕获舌头上的精确颜色分布,尤其是具有多色物质的舌头。为了克服这种模糊性,本文介绍了一种基于支持向量机(SVM)的两级舌头,其支持向量通过我们所提出的K-Means聚类标识符和红色颜色范围减少了精确的舌彩诊断。在第一阶段,K-Means聚类用于将舌片簇聚集成四个图像背景(黑色),深红地区域,红色/浅红色区域和过渡区域。在第二阶段分类中,基于我们工作中的红色范围,红色/浅红色舌片进一步分为红色舌或浅红色舌。总体而言,真实率分类准确性提出的两级分类诊断红色,浅红色和深舌颜色为94%。 SVM中的支持向量的数量提高了41.2%,并且一个图像的执行时间记录为48秒。

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