Detecting exercise-induced fatigue using thermal imaging and deep learning

Miguel Bordallo López, Carlos R. del-Blanco, N. García
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引用次数: 24

Abstract

Fatigue has adverse effects in both physical and cognitive abilities. Hence, automatically detecting exercise-induced fatigue is of importance, especially in order to assist in the planning of effort and resting during exercise sessions. Thermal imaging and facial analysis provide a mean to detect changes in the human body unobtrusively and in variant conditions of pose and illumination. In this context, this paper proposes the automatic detection of exercise-induced fatigue using thermal cameras and facial images, analyzing them using deep convolutional neural networks. Our results indicate that classification of fatigued individuals is possible, obtaining an accuracy that reaches over 80% when utilizing single thermal images.
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利用热成像和深度学习检测运动引起的疲劳
疲劳对身体和认知能力都有不利影响。因此,自动检测运动引起的疲劳是很重要的,特别是为了帮助计划运动期间的努力和休息。热成像和面部分析提供了一种在姿势和照明的不同条件下不显眼地检测人体变化的方法。在此背景下,本文提出了使用热像仪和面部图像自动检测运动引起的疲劳,并使用深度卷积神经网络对其进行分析。我们的研究结果表明,疲劳个体的分类是可能的,当使用单张热图像时,获得的准确率达到80%以上。
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