基于二元支持向量机的舌形图像分类

Jie Ding, Guitao Cao, Dan Meng
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引用次数: 7

摘要

舌诊是中医的重要组成部分之一。建立客观、定量的识别模型对中医药现代化具有重要意义。目前,舌头图像数字诊断的主要问题是提取合适的特征和构建高性能的分类器。为了解决这两个问题,我们提出了一个强大的方法来推断病理特征。与其他方法相比,该方法充分利用了舌像的局部信息和舌像之间的相似性。我们的方法包括以下三个步骤:(1)基于局部物体外观和形状理论提取HOG特征;(2)找出属于同一标签和属于不同标签的最相似的舌头图像,然后将其用于构建新的样本用于Doublet;(3)利用SVM分类器和双元计算距离度量M;(4)进行预测。实验结果表明,该方法的预测准确率为89.1%,特异性为61.3%。灵敏度为95.8%。这项工作对医学领域的疾病检测和预防有一定的帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Tongue Images Based on Doublet SVM
Tongue diagnosis is one of the main components of traditional Chinese medicine (TCM). Developing an objective and quantitative recognition model is very importantly and useful in the modernization of TCM. Currently, major problems in digital diagnoses of tongue images are extracting suitable features and building a high-performance classifier. To address these two issues, we present a robust approach to infer the pathological characteristics. In contrast to other methods, this method makes full use of the local information of tongue images and similarities among tongue images. Our method includes the following three steps: (1) we exact HOG features based on theory of local object appearance and shape; (2) the most similar tongue images are found that belongs to the same label and belongs to the different label, which are then used to build a new sample for Doublet; (3) we calculate the distance metric M by the SVM classifier and doublets; and (4) we make prediction. Experimental results show that prediction accuracy of our method is 89.1% and achieves a specificity of 61.3%. Moreover, the Sensitivity is 95.8%. The work is helpful in the area of medical for detection and prevention of diseases.
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