基于支持向量机的二维人脸图像BMI估计

Joshua C. Gonzales, Joshua Ron G. Garcia, J. Villaverde
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引用次数: 0

摘要

一些基于面部图像预测身体质量指数(BMI)的研究已经开展。然而,缺乏使用机器学习来预测BMI的研究。此外,这些研究只包括白种人和非洲人,表明亚洲人是缺乏的。本研究开发了一种利用支持向量机(SVM)算法通过分析面部特征对二维人脸图像进行BMI分类的系统。采用Raspberry Pi 3 Model B+作为主微型计算机,使用Raspberry Pi Camera 1.3版本进行人脸采集。该分类器模型使用5102(502)个样本进行训练,包括不同的种族、年龄组和体重类别。他们体重过轻、正常、超重和肥胖。该系统在四(4)个BMI类别中每个类别的25(25)个受试者中进行了测试,总共有100(100)个样本。使用混淆矩阵对系统的结果进行评估,获得了91%的准确率。这说明SVM用于BMI估计具有较高的准确率。
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BMI Estimation from 2D Face Images Using Support Vector Machine
Several studies on predicting Body Mass Index (BMI) based on face images have already been conducted. However, a lack of study employs machine learning to predict BMI. Furthermore, these studies only include Caucasian and African subjects, indicating that Asians are lacking. A system that utilizes the Support Vector Machine (SVM) algorithm was developed in this study to classify BMI from 2D face images by analyzing facial features. The Raspberry Pi 3 Model B+ was employed as the main microcomputer, and Raspberry Pi Camera version 1.3 was utilized to capture face images. The classifier model was trained with five hundred two (502) samples, including various ethnicities, age groups, and weight categories. They are underweight, normal, overweight, and obese. The system was tested on twenty-five (25) subjects for each of the four (4) BMI classes with a total of one hundred (100) samples. The results of the system were evaluated using a confusion matrix and obtained an accuracy score of 91%. This demonstrates that the SVM for BMI estimation has a high accuracy rate.
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