论文标题

Exersense:使用IMU传感器进行实验室体育锻炼细分,分类和计数算法

ExerSense: Real-Tme Physical Exercise Segmentation, Classification, and Counting Algorithm Using an IMU Sensor

论文作者

Ishii, Shun, Nkurikiyeyezu, Kizito, Yokokubo, Anna, Lopez, Guillaume

论文摘要

即使众所周知,体育锻炼具有许多情绪和身体健康的益处,但保持常规的锻炼常规却很具有挑战性。幸运的是,存在促进体育锻炼的技术。但是,几乎所有这些技术都仅针对狭窄的体育活动(例如,跑步或步行,但两者兼而有之),并且仅适用于室内或室外环境,但在这两种环境中都无法正常工作。本文介绍了一种实时细分和分类算法,该算法可以识别体育锻炼,并且在室内和室外环境中都可以很好地工作。所提出的算法实现了五个室内和室外练习的95 \%分类精度,包括分割错误。这种准确性比以前仅处理室内锻炼的工作相似或更好,而这些锻炼是使用基于视觉的方法的。此外,虽然基于机器学习的方法需要大量培训数据,但提出的基于相关的方法需要每个目标练习的运动数据示例。

Even though it is well known that physical exercises have numerous emotional and physical health benefits, maintaining a regular exercise routine is quite challenging. Fortunately, there exist technologies that promote physical activity. Nonetheless, almost all of these technologies only target a narrow set of physical activities (e.g., either running or walking but not both) and are only applicable either in indoor or in outdoor environments, but do not work well in both environments. This paper introduces a real-time segmentation and classification algorithm that recognizes physical exercises and that works well in both indoor and outdoor environments. The proposed algorithm achieves a 95\% classification accuracy for five indoor and outdoor exercises, including segmentation error. This accuracy is similar or better than previous works that handled only indoor workouts and those use a vision-based approach. Moreover, while comparable machine learning-based approaches need a lot of training data, the proposed correlation-based method needs one sample of motion data of each target exercises.

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