基于热成像的CNN预训练模型微调用于肥胖早期检测

Hendrik Leo, F. Arnia, K. Munadi
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引用次数: 1

摘要

肥胖是一种严重影响健康的复杂疾病,如糖尿病、心血管疾病、癌症和中风。为了防止肥胖人数的增加,需要一种早期的肥胖诊断/检测方法。本研究旨在:(i)对预训练的卷积神经网络(CNN)模型进行微调,以建立肥胖的早期检测;(ii)从分类性能、计算速度和学习性能方面评估模型的性能。对18名正常受试者和15名肥胖受试者进行热图像采集,构建肥胖热图像数据集。使用获取的数据集作为输入,对预训练的CNN模型:VGG19、MobileNet、ResNet152V和DenseNet201进行修改和训练。训练结果表明,DenseNet201模型的分类准确率为83.33%,学习性能优于其他模型。同时,MobileNet模型在训练时间为12秒/epoch的计算速度方面优于其他模型。提出的DenseNet201模型适合作为卫生工作者或医生的肥胖早期筛查系统实施。同时,提出的MobileNet模型适用于移动应用对肥胖的早期检测/诊断。
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Fine Tuning CNN Pre-trained Model Based on Thermal Imaging for Obesity Early Detection
Obesity is a complex disease that causes serious impact health, such as diabetes mellitus, cardiovascular disease, cancer, and stroke. An early obesity diagnosis/ detection method is required to prevent the increasing number of obese people. This study aims to: (i) fine-tune the pre-trained Convolutional Neural Network (CNN) models to build an early detection of obesity and (ii) evaluate the model performance in terms of classifying performance, computation speed, and learning performance. The thermal images acquisition procedure was conducted with 18 normal subjects and 15 obese subjects to build a thermal images dataset of obesity. Pre-trained CNN models: VGG19, MobileNet, ResNet152V, and DenseNet201 were modified and trained using the acquired dataset as the input. The training results show that the DenseNet201 model outperformed other models regarding classifying accuracy: 83.33 % and learning performances. At the same time, the MobileNet model outperformed other models in terms of computation speed with training elapsed time: 12 seconds/epoch. The proposed DenseNet201 model was suitable for implementation as an early screening system of obesity for health workers or physicians. Meanwhile, the proposed MobileNet model was suitable for mobile applications' early detection/diagnosis of obesity.
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