Faculty of Technology, Bielefeld University, 33615 Bielefeld, Germany.
Department of Biomedical Engineering, Colombian School of Engineering Julio Garavito, Bogotá 111166, Colombia.
Sensors (Basel). 2022 Aug 30;22(17):6524. doi: 10.3390/s22176524.
Physical exercise has become an essential tool for treating various non-communicable diseases (also known as chronic diseases). Due to this, physical exercise allows to counter different symptoms and reduce some risk of death factors without medication. A solution to support people in doing exercises is to use artificial systems that monitor their exercise progress. While one crucial aspect is to monitor the correct physical motions for rehabilitative exercise, another essential element is to give encouraging feedback during workouts. A coaching system can track a user's exhaustion and give motivating feedback accordingly to boost exercise adherence. For this purpose, this research investigates whether it is possible to predict the subjective exhaustion level based on non-invasive and non-wearable technology. A novel data set was recorded with the facial record as the primary predictor and individual exhaustion levels as the predicted variable. 60 participants (30 male, 30 female) took part in the data recording. 17 facial action units (AU) were extracted as predictor variables for the perceived subjective exhaustion measured using the BORG scale. Using the predictor and the target variables, several regression and classification methods were evaluated aiming to predict exhaustion. The results showed that the decision tree and support vector methods provide reasonable prediction results. The limitation of the results, depending on participants being in the training data set and subjective variables (e.g., participants smiling during the exercises) were further discussed.
体育锻炼已成为治疗各种非传染性疾病(又称慢性病)的重要手段。由于这个原因,体育锻炼可以在不使用药物的情况下对抗各种症状,降低某些死亡因素的风险。支持人们锻炼的一个解决方案是使用人工系统来监测他们的锻炼进展。虽然一个关键方面是监测康复运动的正确身体动作,但另一个重要元素是在锻炼过程中给予鼓励性反馈。一个教练系统可以跟踪用户的疲劳程度,并根据需要提供激励性反馈,以提高锻炼的坚持度。为此,本研究调查了是否可以基于非侵入性和非穿戴式技术来预测主观疲劳水平。记录了一个新的数据集,其中面部记录作为主要预测因子,个体疲劳水平作为预测变量。60 名参与者(30 名男性,30 名女性)参与了数据记录。从 17 个面部动作单元(AU)中提取了预测变量,用于通过 Borg 量表测量感知的主观疲劳。使用预测变量和目标变量,评估了几种回归和分类方法,旨在预测疲劳。结果表明,决策树和支持向量机方法提供了合理的预测结果。进一步讨论了结果的局限性,这取决于参与者是否在训练数据集中以及主观变量(例如,参与者在锻炼时微笑)。