人类活动识别:从传感器到应用

F. Fereidoonian, F. Firouzi, Bahareh J. Farahani
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引用次数: 9

摘要

人体活动识别(HAR)是近几十年来一个动态的研究课题,因为它在医疗保健,游戏,安全和监控以及体育等无数应用中都有很高的需求。尽管研究人员在这一研究领域做出了大量的工作,但在未来的工作中仍有许多具有挑战性的方面和开放的问题需要解决。本文从传感器、模型和开放性挑战三个方面综述了HAR的现状。首先,我们总结了现有的传感系统,包括基于传感器的、基于视觉的传感器和多模态解决方案。接下来,讨论了HAR算法的最新进展-从分层融合方法到手工特征到深度特征,从传统的机器学习算法到深度学习技术。最后,对未来研究中应解决的主要问题和挑战进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Activity Recognition: From Sensors to Applications
Human activity recognition (HAR) being a dynamic research topic in recent decades due to its high demand in countless applications, for instance, in healthcare, gaming, security and surveillance, and sports. Despite the amount of work contributed by the researcher to this well-researched field, there are still many challenging aspects and open issues that should be addressed in future works. In this paper, the current state-of-the-art in HAR from three holistic aspects is surveyed: sensors, models, and open challenges. First, we summarize the existing sensory systems, including sensor-based, vision-based sensors, and multimodal solutions. Next, the recent advances in HAR algorithms – from hierarchical fusion methods to handcrafted features to deep features, traditional machine learning algorithms to deep learning techniques – are discussed. Finally, the principal issues and challenges that should be addressed in future research are discussed.
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