Computer-Assisted Non-Invasive Diabetes Mellitus Detection System via Facial Key Block Analysis

Ting Shu, Bob Zhang, Yuanyan Tang
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引用次数: 2

Abstract

A Computer-assisted Non-invasive Diabetes Mellitus Detection System through facial key block analysis is designed and developed in this paper. There are four main steps in our system: facial image capture through a non-invasive device, automatic location of the key blocks based on the positions of the two pupils, key block texture feature extraction using Local Binary Pattern with cell-size 21, and classification with Support Vector Machines. In the first step of this system, a specially designed facial image capture device has been developed to capture the facial image of each patient in a standard designed environment. According to Traditional Chinese Medicine theory, various facial regions can reflect the health status of different inner organs. Based on this, four key blocks are located automatically using the positions of the two pupils and used in Diabetes Mellitus detection instead of employing the whole facial image. For the last two steps, an experiment which selects the best value of Local Binary Pattern cell-size and the better classifier of two traditional classifiers (k-Nearest Neighbors and Support Vector Machines) is implemented and its results are applied in this system. In order to test the system performance, the facial images of 200 volunteers consisting of 100 Diabetes Mellitus patients and 100 healthy persons are captured and analyzed through this system. Based on the test result, the Computer-assisted Non-invasive Diabetes Mellitus Detection System through facial key block analysis is proven to be effective and efficient at distinguishing Diabetes Mellitus from Healthy patients in real time.
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基于面部键块分析的计算机辅助无创糖尿病检测系统
本文设计并开发了一种基于面部键块分析的计算机辅助无创糖尿病检测系统。在我们的系统中有四个主要步骤:通过非侵入性设备捕获面部图像,基于两个瞳孔的位置自动定位关键块,使用细胞大小为21的局部二进制模式提取关键块纹理特征,以及使用支持向量机进行分类。在该系统的第一步,开发了一个专门设计的面部图像捕获设备,用于在标准设计的环境中捕获每个患者的面部图像。根据中医理论,面部的不同区域可以反映不同内脏的健康状况。在此基础上,利用两个瞳孔的位置自动定位四个关键块,用于糖尿病的检测,而不是使用整个面部图像。最后两步,在两种传统分类器(k-近邻和支持向量机)中选择局部二值模式单元大小的最佳值和更好的分类器进行实验,并将实验结果应用于本系统。为了测试系统的性能,通过该系统采集和分析了200名志愿者的面部图像,其中包括100名糖尿病患者和100名健康人。基于实验结果,验证了通过面部键块分析的计算机辅助无创糖尿病检测系统在实时区分糖尿病患者和健康患者方面的有效性和有效性。
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