人体运动分类中最优传感器定位与分类器的研究

Anuar Mohamed, N. A. Othman, H. Ahmad, M. Hassan
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摘要

如今,通过可穿戴技术进行人体运动监测并不少见。这表明人们越来越意识到健康生活方式的重要性。人体运动包括多个肌肉和关节的运动。然而,传感器放置在身体上记录日常活动中运动的最佳位置尚未得到很好的理解。这项研究的目的是在身体的三个位置中,即背部,小腿或手腕上,找到最佳的传感器位置。此外,本研究旨在寻找人类日常活动的最佳分类算法。在这三个地点记录的数据在Orange软件和MATLAB中使用几种分类算法进行分析。结果表明,腕部传感器的分类效果最好,说明腕部是人体运动监测传感器的最佳放置位置。在分类算法方面,我们发现与其他算法相比,神经网络提供了最准确的分类。未来可穿戴设备的发展应该考虑在系统中集成分类算法,这样人体运动监测将提供更丰富的信息,而不仅仅局限于步数和卡路里消耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of the Optimal Sensor Location and Classifier for Human Motion Classification
Human motion monitoring by means of wearable technologies is not uncommon nowadays. This demonstrates the growing awareness of the importance of healthy lifestyle. Human body motion involves the movement of multiple muscles and joints. However, the optimal location of sensor placement on the body to record the motion in daily activities has not been well understood. This study aims to find the best sensor location for this purpose among three locations on the body, that is on the back, shank, or wrist. In addition, this study seeks to find the best classification algorithm for human daily activities. The data recorded at these three locations were analysed using several classification algorithms in both Orange software and MATLAB. The results show that the sensor on the wrist provided the best classification result, thereby suggesting that wrist is the best place on the body to place the sensor for human motion monitoring. With regards to classification algorithm, we found that Neural Network provides the most accurate classification as compared to other algorithms. Future development of wearables should look into integrating classification algorithm in the system, thus the human motion monitoring will provide a richer information and not only limited to number of steps and calories burned.
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