Micro-Doppler based Human Activity Recognition using ABOA based Dual Spatial Convolution with Gated Recurrent Unit

Joseph Michael Jerard V, Sarojini Yarramsetti, Vennira Selvi G, Natteshan N V S
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Abstract

The through-wall capability, device-free detection of radar-based human activity recognition are drawing a lot of interest from both academics and industry. The majority of radar-based systems do not yet combine signal analysis and feature extraction in the frequency domain and the time domain. Applications like smart homes, assisted living, and monitoring rely on human identification and activity recognition (HIAR). Radar has a number of advantages over other sensing modalities, such as the ability to shield users' privacy and conduct contactless sensing. The article introduces a new human tracking system that uses radar and a classifier called Dual Spatial Convolution Gated Recurrent Unit (DSC-GRU) to identify the subject and their behavior. The system follows the person and identifies the type of motion whenever it detects movement. One important feature is the integration of the GRU with the DSC unit, which allows the model to simultaneously capture the spatiotemporal dependence. Present prediction models just take into account spatial features that are immediately adjacent to each other, disregarding or just superimposing global spatial features when taking spatial correlation into account. A new dependency graph is created by calculating the correlation among nodes using the correlation coefficient; this graph represents the global spatial dependence, while the classic static graph represents the neighboring spatial dependence in the DSC unit. The DSC unit goes a step further by using a modified gated mechanism to quantify the various contributions of both local and global spatial correlation. While previous models performed worse, the suggested model outperformed them with an accuracy of 99.45 percent and a precision of 97.15 percent.
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利用基于 ABOA 的双空间卷积和门控递归单元进行基于微多普勒的人体活动识别
基于雷达的人类活动识别系统具有穿墙能力和无设备检测功能,这引起了学术界和工业界的极大兴趣。大多数基于雷达的系统尚未将频域和时域的信号分析和特征提取结合起来。智能家居、辅助生活和监控等应用都依赖于人体识别和活动识别(HIAR)。与其他传感模式相比,雷达具有许多优势,例如可以保护用户隐私和进行非接触式传感。文章介绍了一种新型人体跟踪系统,该系统利用雷达和一种名为双空间卷积门控递归单元(DSC-GRU)的分类器来识别主体及其行为。只要检测到移动,系统就会跟踪人并识别移动类型。该系统的一个重要特点是将 GRU 与 DSC 单元整合在一起,从而使模型能够同时捕捉时空相关性。目前的预测模型只考虑紧邻的空间特征,在考虑空间相关性时忽略或仅叠加全局空间特征。通过使用相关系数计算节点之间的相关性,可以创建一个新的依赖关系图;该图代表全局空间依赖关系,而经典的静态图则代表 DSC 单元中的相邻空间依赖关系。DSC 单元更进一步,使用改进的门控机制来量化局部和全局空间相关性的各种贡献。虽然以前的模型表现较差,但建议的模型却优于它们,准确率达到 99.45%,精确度达到 97.15%。
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