Human motion recognition (HMR) based on wireless sensing is a low-cost technique for scene understanding. Current HMR systems adopt support vector machines (SVMs) and convolutional neural networks (CNNs) to classify radar signals. However, whether a deeper learning model could improve the system performance is currently not known. On the other hand, training a machine learning model requires a large dataset, but data gathering from experiment is cost-expensive and time-consuming. Although wireless channel models can be adopted for dataset generation, current channel models are mostly designed for communication rather than sensing. To address the above problems, this paper proposes a deep spectrogram network (DSN) by leveraging the residual mapping technique to enhance the HMR performance. Furthermore, a primitive based autoregressive hybrid (PBAH) channel model is developed, which facilitates efficient training and testing dataset generation for HMR in a virtual environment. Experimental results demonstrate that the proposed PBAH channel model matches the actual experimental data very well and the proposed DSN achieves significantly smaller recognition error than that of CNN.
翻译:以无线遥感为基础的人类运动识别(HMR)是一种低成本的现场理解技术。目前的HMR系统采用辅助矢量机(SVMs)和进化神经网络(CNNs)来对雷达信号进行分类,然而,目前尚不知道更深的学习模式能否改进系统性能。另一方面,培训机器学习模式需要大型数据集,但从实验中收集数据既费钱又费时。虽然为数据集的生成可以采用无线信道模型,但目前的频道模型主要是为通信而不是感测而设计的。为解决上述问题,本文件建议利用残余绘图技术来提高HMR的性能,从而建立一个深光谱网络(DSN)。此外,还开发了一个原始的自动反向混合(PBAH)信道模型,该模型有助于在虚拟环境中为HMR提供有效的培训和测试数据集生成。实验结果表明,拟议的PBAHAH频道模型与实际实验数据非常匹配,而提议的DSN的识别错误比CNN要小得多。