量化矢量导向舌色分类

Bo Huang, Kuanquan Wang, Xiangqian Wu, Dongyu Zhang, Naimin Li
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引用次数: 3

摘要

舌诊是一种独特而又必不可少的诊断方法。舌头的颜色类别可以用来发现舌头的病理变化,从而识别疾病。本文建立了一种新的舌形图像分类方案,将舌形图像分为不同的类别,包括涂层类别和物质类别。首先,提出了一种两级层次聚类方法,将所有像素量化为多个特征值向量;每个向量都可以在RGB色彩空间中编码一个非常小的子类。其次,我们利用这些子类的向量分布来表示舌头图像的近似颜色信息。然后,利用贝叶斯网络对这些量化向量与舌头颜色类别之间的关系进行建模。在418张舌形图像上对该方法进行了有效性测试,并给出了分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantified Vector Oriented Tongue Color Classification
Tongue diagnosis is a distinctive and essential diagnostic method. The color category of the tongue can be utilized to discover pathological changes on the tongues for identifying diseases. In this paper, a novel scheme is established which classify tongue images into various categories, including coating and substance categories. Firstly, we proposed a two level hierarch clustering method for quantizing all pixels into numerous vectors of feature value. Each vector can code a very small sub-class in RGB color space. Secondly, we utilized the vectors' distribution of these sub-classes to represent approximate chromatic information of tongue images. Then, a Bayesian Network is employed to model the relationship between these quantized vectors and tongue color categories. The effectiveness of this scheme is tested on a group of 418 tongue images, and the classification results are reported.
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