基于无线传感的手势翻页识别算法研究

Lin Tang;Sumin Wang;Meng Zhou;Yinfan Ding;Chao Wang;Shengbo Wang;Zhen Sun;Jie Wu
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引用次数: 0

摘要

当人体在Wi-Fi信号覆盖范围内运动时,人体各部位反射的Wi-Fi信号会改变传播路径,因此对通道状态数据的分析可以实现对人体运动的感知。通过从Wi-Fi信号中提取与人体运动相关的信道状态信息(Channel State Information, CSI),并利用引入的机器学习分类算法进行分析,可以感知空间环境中的人体运动。在此理论的基础上,本文提出了一种基于CSI无线传感的人体行为识别算法,实现无设备、空中滑动转弯。该算法采集会议室场景中含有向上或向下波动的环境信息,利用局部离群因子检测算法对动作进行分割,然后提取时域特征,训练支持向量机(SVM)和极限梯度提升(XGBoost)分类模块。实验结果表明,XGBoost模块感知幻灯片翻转的平均准确率可以达到94%,SVM模块可以达到89%,因此该模块可以扩展到智能教室领域,显著提高语音效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on recognition algorithm for gesture page turning based on wireless sensing
When a human body moves within the coverage range of Wi-Fi signals, the reflected Wi-Fi signals by the various parts of the human body change the propagation path, so analysis of the channel state data can achieve the perception of the human motion. By extracting the Channel State Information (CSI) related to human motion from the Wi-Fi signals and analyzing it with the introduced machine learning classification algorithm, the human motion in the spatial environment can be perceived. On the basis of this theory, this paper proposed an algorithm of human behavior recognition based on CSI wireless sensing to realize deviceless and over-the-air slide turning. This algorithm collects the environmental information containing upward or downward wave in a conference room scene, uses the local outlier factor detection algorithm to segment the actions, and then the time domain features are extracted to train Support Vector Machine (SVM) and eXtreme Gradient Boosting (XGBoost) classification modules. The experimental results show that the average accuracy of the XGBoost module sensing slide flipping can reach 94%, and the SVM module can reach 89%, so the module could be extended to the field of smart classroom and significantly improve speech efficiency.
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