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Deep Convolutional Neural Networks for Classifying Body Constitution

机译:深度卷积神经网络用于人体成分分类

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Body constitution is a classification of individuals into different types of physical condition in order to prevent disease and promote health. The problem of standardizing constitutional classification has become a constraint on the development of Chinese medical constitution. Traditional recognition methods, such as questionnaire and medical examination have the shortcoming of inefficiency and low accuracy. We present an advanced deep convolutional neural network (CNN) to simulate the function of pulse diagnosis, which is able to classify an individuals constitution based only his or her pulse. The CNN model employed the latest activation unit, rectified linear unit and stochastic optimization. This model takes the lead in trying to classify individual constitution using CNN. During the experiment, the CNN model attained a recognition accuracy 95 % on classifying 9 constitutional types.
机译:身体构成是将个人分为不同类型的身体状况,以预防疾病和促进健康。规范体质分类的问题已成为制约中医体质发展的问题。传统的识别方法,如问卷调查和医学检查,存在效率低下和准确性低的缺点。我们提出了一种先进的深层卷积神经网络(CNN),以模拟脉冲诊断的功能,该功能能够仅根据他或她的脉搏对个人体质进行分类。 CNN模型采用了最新的激活单元,整流线性单元和随机优化方法。该模型率先尝试使用CNN对个人构成进行分类。在实验过程中,CNN模型在对9种构成类型进行分类时达到了95%的识别精度。

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