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Qualitative Action Recognition by Wireless Radio Signals in Human–Machine Systems

机译:人机系统中无线无线电信号的定性动作识别

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摘要

Human-machine systems required a deep understanding of human behaviors. Most existing research on action recognition has focused on discriminating between different actions, however, the quality of executing an action has received little attention thus far. In this paper, we study the quality assessment of driving behaviors and present WiQ, a system to assess the quality of actions based on radio signals. This system includes three key components, a deep neural network based learning engine to extract the quality information from the changes of signal strength, a gradient-based method to detect the signal boundary for an individual action, and an activity-based fusion policy to improve the recognition performance in a noisy environment. By using the quality information, WiQ can differentiate a triple body status with an accuracy of 97%, whereas for identification among 15 drivers, the average accuracy is 88%. Our results show that, via dedicated analysis of radio signals, a fine-grained action characterization can be achieved, which can facilitate a large variety of applications, such as smart driving assistants.
机译:人机系统需要对人的行为有深刻的了解。现有的大多数有关动作识别的研究都集中于区分不同的动作,但是,迄今为止,执行动作的质量很少受到关注。在本文中,我们研究了驾驶行为的质量评估,并提出了WiQ,一种基于无线电信号评估行为质量的系统。该系统包括三个关键组件:一个基于深度神经网络的学习引擎,用于从信号强度的变化中提取质量信息;一种基于梯度的方法,用于检测单个动作的信号边界;以及一种基于活动的融合策略,用于改进在嘈杂环境中的识别性能。通过使用质量信息,WiQ可以以97%的准确度区分三重身体状态,而在15个驾驶员中进行识别时,平均准确度为88%。我们的结果表明,通过对无线电信号的专用分析,可以实现细粒度的动作表征,这可以促进各种应用程序的发展,例如智能驾驶助手。

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