论文标题

部分可观测时空混沌系统的无模型预测

RPCA-Based High Resolution Through-the-Wall Human Motion Detection and Classification

论文作者

An, Qiang, Wang, Shuoguang, Zhang, Wenji, Lv, Hao, Wang, Jianqi, Li, Shiyong, Hoorfar, Ahmad

论文摘要

近年来,基于雷达的辅助生活已经获得了大量的研究兴趣。通过采用室内人类动作的微型多普勒特征,可以准确识别和分类不同类型的运动。尽管大多数现有作品仅专注于自由空间检测,但在壁壁情景下对人类运动的发现和识别的文献仍处于起步阶段。可以预见的是,墙壁媒体和室内静态非人类目标将导致临时,并严重破坏墙后人类受试者的运动信息。但是,没有报告有效解决此问题的相关工作。在目前的工作中,我们旨在填补空白,并提议使用低频率的超宽带(UWB)雷达系统来探测后面的墙壁场景。然后,基于强大的主组件分析(RPCA)的子空间分解技术,作为其首次报道的实现,不仅被用来删除原始范围慢速映射中的固定剪辑,而且还可以减轻时间差异图中的多径效应。进行了单层混凝土壁后面的人类运动的现场实验,以研究该技术的性能。最后,提供了基于二维(2D)-PCA算法的运动分类,以进一步验证提出的技术的有效性。分类结果表明,使用拟议的技术在室内人类运动的检测和分类中,可以实现增强的识别能力。

Radar based assisted living has received great amount of research interest in recent years. By employing the micro-Doppler features of indoor human motions, accurate recognition and classification of different types of movements become possible. Whereas, most of the existing works are focused only on free space detection, the literature on detection and recognition of human motions in through-the-wall scenarios is still in its infancy. As can be anticipated, the wall media and indoor static non-human targets would cause clutters and significantly corrupt the motion information of human subjects behind wall. However, no relevant work is reported to effectively handle this problem. In the present work, we aim to fill the gap and propose to use a low center-frequency ultra-wideband (UWB) radar system to probe the behind wall scene. Then, a Robust Principal Component Analysis (RPCA) based subspace decomposition technique, as its first reported implementation, is employed not only to remove the stationary clutters in raw range slow-time map but also to mitigate the multipath effects in the time-frequency map. Onsite experiments of detecting human motions behind a single layer of concrete wall is carried out to investigate the performance of the technique. Lastly, a two dimensional (2D)-PCA algorithm-based motion classification is provided to further verify the effectiveness of the proposed technique. Classification result shows that an enhanced recognition capability can be achieved using the proposed technique in detection and classification of indoor human motions.

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