机器学习在生活方式中的应用:卷积神经网络的加权图像分类

Warisara Asawaponwiput, Panyawut Sriiesaranusorn, Thawat Mohchit, N. Thatphithakkul, D. Surangsrirat
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引用次数: 0

摘要

如今,人们越来越关注他们的健康,因为健康被视为一项有利可图的投资。肥胖是导致多种疾病的最常见的健康问题之一。我们与开发移动应用程序的团队合作,鼓励用户改变他们的饮食和活动习惯,以改善他们的健康,基于虚拟竞争平台。参赛者需要在挑战前上传称重照片以验证自己的体重。手动验证这些图像既耗时又容易出错,因为每次比赛中都有大量的图像。在这项研究中,我们提出了一种图像分类方法,以帮助筛选不正确的图像权重照片的虚拟竞争。对训练图像进行图像增强,然后输入分类模型。由于目标是在移动应用程序中部署模型,因此合适的模型必须足够小且有效,以便在资源有限的环境中使用。因此,选择VGGNet-16和MobileNet-V2作为分类模型。实验结果表明,该模型可以从预处理后的图像中学习,并从预训练的VGGNet-16中获得满意的分类结果,准确率最高,f1得分分别为95.00%和95.23%。MobileNet-V2的推理时间提高了约10倍,但性能较低,最高准确率和f1分数分别为93.00%和93.32%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Machine Learning in Lifestyle: Weight-In Image Classification using Convolutional Neural Networks
Nowadays, people are increasingly concerned for their health as being healthy is regarded as a profitable investment. Obesity is one of the most common health problems that leads to multiple diseases. We work with the team that developed a mobile application to encourage users to change their eating and activity behaviors to improve their health based on a virtual competition platform. Participants are required to upload a weight-in photo to verify their weight before the challenge. Manually verifying these images can be time-consuming and error-prone due to the large number of images in each competition. In this study, we proposed an image classification approach to help screen incorrect images of the weight-in photo for the virtual competition. The image augmentation techniques were applied to the training images before being input into the classification model. Since the goal is to deploy the model in a mobile application, the suitable model must be small and efficient enough for use in a limited resources environment. Therefore, VGGNet-16 and MobileNet-V2 were selected as the classification models. The experimental results show that the model could learn from the preprocessed images and obtain satisfactory classification results from pre-trained VGGNet-16 with the highest accuracy and F1-score of 95.00% and 95.23%, respectively. MobileNet-V2 inference time was approximately 10 times faster but the performance was lower with the highest accuracy and F1-score of 93.00% and 93.32%, respectively.
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