Division of Automotive Technology, Daegu Gyeongbuk Institute of Science and Technology (DGIST), Daegu 42988, Korea.
Department of Interdisciplinary Engineering, Daegu Gyeongbuk Institute of Science and Technology (DGIST), Daegu 42988, Korea.
Sensors (Basel). 2021 Jun 7;21(11):3937. doi: 10.3390/s21113937.
Recently, Doppler radar-based foot gesture recognition has attracted attention as a hands-free tool. Doppler radar-based recognition for various foot gestures is still very challenging. So far, no studies have yet dealt deeply with recognition of various foot gestures based on Doppler radar and a deep learning model. In this paper, we propose a method of foot gesture recognition using a new high-compression radar signature image and deep learning. By means of a deep learning AlexNet model, a new high-compression radar signature is created by extracting dominant features via Singular Value Decomposition (SVD) processing; four different foot gestures including kicking, swinging, sliding, and tapping are recognized. Instead of using an original radar signature, the proposed method improves the memory efficiency required for deep learning training by using a high-compression radar signature. Original and reconstructed radar images with high compression values of 90%, 95%, and 99% were applied for the deep learning AlexNet model. As experimental results, movements of all four different foot gestures and of a rolling baseball were recognized with an accuracy of approximately 98.64%. In the future, due to the radar's inherent robustness to the surrounding environment, this foot gesture recognition sensor using Doppler radar and deep learning will be widely useful in future automotive and smart home industry fields.
最近,基于多普勒雷达的脚部手势识别作为一种免提工具引起了关注。基于多普勒雷达的各种脚部手势识别仍然极具挑战性。到目前为止,还没有研究深入探讨基于多普勒雷达和深度学习模型的各种脚部手势识别。在本文中,我们提出了一种使用新的高压缩雷达特征图像和深度学习的脚部手势识别方法。通过深度学习 AlexNet 模型,通过奇异值分解 (SVD) 处理提取主导特征,创建新的高压缩雷达特征;识别包括踢腿、摆腿、滑动和轻敲在内的四种不同的脚部手势。与使用原始雷达特征不同,所提出的方法通过使用高压缩雷达特征提高了深度学习训练所需的内存效率。将原始和重构的雷达图像应用于高压缩值为 90%、95%和 99%的深度学习 AlexNet 模型。作为实验结果,使用大约 98.64%的准确率识别了所有四种不同的脚部手势和滚动棒球的运动。在未来,由于雷达对周围环境具有固有稳健性,因此这种使用多普勒雷达和深度学习的脚部手势识别传感器将在未来的汽车和智能家居行业领域得到广泛应用。