Xiaochao DangKai FanFenfang LiYangyang TangYifei GaoYue Wang
Human action recognition has many application prospects in human-computer interactions, innovative furniture, healthcare, and other fields. The traditional human motion recognition methods have limitations in privacy protection, complex environments, and multi-person scenarios. Millimeter-wave radar has attracted attention due to its ultra-high resolution and all-weather operation. Many existing studies have discussed the application of millimeter-wave radar in single-person scenarios, but only some have addressed the problem of action recognition in multi-person scenarios. This paper uses a commercial millimeter-wave radar device for human action recognition in multi-person scenarios. In order to solve the problems of severe interference and complex target segmentation in multiplayer scenarios, we propose a filtering method based on millimeter-wave inter-frame differences to filter the collected human point cloud data. We then use the DBSCAN algorithm and the Hungarian algorithm to segment the target, and finally input the data into a neural network for classification. The classification accuracy of the system proposed in this paper reaches 92.2% in multi-person scenarios through experimental tests with the five actions we set.
Tiancheng ShaoZ. Z. DuChuanyou LiTianxing WuMeng Wang
Yinan ZhaoZihao ZhangZhaolin Zhang
Biao JINKangsheng SUNHao WUZixuan LIZhenkai ZHANGYan CAIRongmin LIXiangqun ZHANGGenyuan DU
Xiaochao DangWenze KeZhanjun HaoPeng JinHan DengYing Sheng