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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Noninvasive Diabetes Mellitus Detection Using Facial Block Color With a Sparse Representation Classifier
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Noninvasive Diabetes Mellitus Detection Using Facial Block Color With a Sparse Representation Classifier

机译:使用面部方块颜色和稀疏表示分类器的无创糖尿病检测

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摘要

Diabetes mellitus (DM) is gradually becoming an epidemic, affecting almost every single country. This has placed a tremendous amount of burden on governments and healthcare officials. In this paper, we propose a new noninvasive method to detect DM based on facial block color features with a sparse representation classifier (SRC). A noninvasive capture device with image correction is initially used to capture a facial image consisting of four facial blocks strategically placed around the face. Six centroids from a facial color gamut are applied to calculate the facial color features of each block. This means that a given facial block can be represented by its facial color features. For SRC, two subdictionaries, a Healthy facial color features subdictionary and DM facial color features subdictionary, are employed in the SRC process. Experimental results are shown for a dataset consisting of 142 Healthy and 284 DM samples. Using a combination of the facial blocks, the SRC can distinguish Healthy and DM classes with an average accuracy of 97.54%.
机译:糖尿病(DM)逐渐流行,几乎影响到每个国家。这给政府和卫生官员带来了巨大的负担。在本文中,我们提出了一种基于稀疏表示分类器(SRC)的基于面部色块颜色特征的DM检测方法。最初使用具有图像校正的非侵入性捕获设备来捕获由策略性地放置在面部周围的四个面部块组成的面部图像。应用面部色域中的六个质心来计算每个块的面部颜色特征。这意味着给定的面部块可以通过其面部颜色特征来表示。对于SRC,在SRC过程中使用了两个子词典,即“健康人脸颜色特征”子词典和“ DM人脸颜色特征”子词典。显示了由142个健康样本和284个DM样本组成的数据集的实验结果。通过结合使用面部块,SRC可以以97.54%的平均准确度区分健康等级和糖尿病等级。

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