Communication, Sensing and Imaging Group, James Watt School of Engineering, University of Glasgow, Glasgow, G12 8QQ, UK.
MS3 Group, Department of Microelectronics, Delft University of Technology, Delft, The Netherlands.
Sci Rep. 2023 Mar 1;13(1):3473. doi: 10.1038/s41598-023-30631-x.
Radar systems are increasingly being employed in healthcare applications for human activity recognition due to their advantages in terms of privacy, contactless sensing, and insensitivity to lighting conditions. The proposed classification algorithms are however often complex, focusing on a single domain of radar, and requiring significant computational resources that prevent their deployment in embedded platforms which often have limited memory and computational resources. To address this issue, we present an adaptive magnitude thresholding approach for highlighting the region of interest in the multi-domain micro-Doppler signatures. The region of interest is beneficial to extract salient features, meanwhile it ensures the simplicity of calculations with less computational cost. The results for the proposed approach show an accuracy of up to 93.1% for six activities, outperforming state-of-the-art deep learning methods on the same dataset with an over tenfold reduction in both training time and memory footprint, and a twofold reduction in inference time compared to a series of deep learning implementations. These results can help bridge the gap toward embedded platform deployment.
雷达系统由于其在隐私、非接触式感应和对光照条件不敏感等方面的优势,越来越多地被应用于医疗保健领域的人体活动识别。然而,所提出的分类算法通常很复杂,仅关注雷达的单一领域,并且需要大量的计算资源,这使得它们无法在嵌入式平台上部署,而嵌入式平台通常内存和计算资源有限。为了解决这个问题,我们提出了一种自适应幅度阈值方法,用于突出多域微多普勒特征中的感兴趣区域。该感兴趣区域有利于提取显著特征,同时确保计算的简单性,计算成本更低。所提出方法的结果表明,在相同的数据集上,对于六种活动,准确率高达 93.1%,优于最先进的深度学习方法,同时在训练时间和内存占用方面减少了十倍以上,与一系列深度学习实现相比,推理时间减少了两倍。这些结果有助于缩小向嵌入式平台部署的差距。