色域
舌头
人工智能
色空间
计算机科学
特征(语言学)
模式识别(心理学)
色差
计算机视觉
颜色分析
数学
医学
图像(数学)
病理
哲学
GSM演进的增强数据速率
语言学
作者
Bob Zhang,Xingzheng Wang,Jane You,David Zhang
摘要
An in-depth systematic tongue color analysis system for medical applications is proposed. Using the tongue color gamut, tongue foreground pixels are first extracted and assigned to one of 12 colors representing this gamut. The ratio of each color for the entire image is calculated and forms a tongue color feature vector. Experimenting on a large dataset consisting of 143 Healthy and 902 Disease (13 groups of more than 10 samples and one miscellaneous group), a given tongue sample can be classified into one of these two classes with an average accuracy of 91.99%. Further testing showed that Disease samples can be split into three clusters, and within each cluster most if not all the illnesses are distinguished from one another. In total 11 illnesses have a classification rate greater than 70%. This demonstrates a relationship between the state of the human body and its tongue color.
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