基于遗传编程的智能手机多通道传感器的运动识别

Feng Xie, A. Song, V. Ciesielski
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引用次数: 3

摘要

对坐、站、走、跑等活动的识别可以显著改善人与机器之间的互动,尤其是在移动设备上。在这项研究中,我们提出了一种基于GP的方法,该方法可以使用多传感器数据自动进化识别程序。研究表明,GP不仅对多类问题,而且对二类问题都有较好的识别效果。使用这种方法,不需要关于活动的领域知识。此外,不需要提取时间序列特征。调查还表明,这些改进的GP解决方案体积小,执行速度快。它们适用于可能需要实时性能的实际应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Activity recognition by smartphone based multi-channel sensors with genetic programming
Recognition of activities such as sitting, standing, walking and running can significantly improve the interaction between human and machine, especially on mobile devices. In this study we present a GP based method which can automatically evolve recognition programs for various activities using multisensor data. This investigation shows that GP is capable of achieving good recognition on binary problems as well as on multi-class problems. With this method domain knowledge about an activity is not required. Furthermore, extraction of time series features is not necessary. The investigation also shows that these evolved GP solutions are small in size and fast in execution. They are suitable for real-world applications which may require real-time performance.
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