Applied Sciences (Aug 2024)

Multi-Person Action Recognition Based on Millimeter-Wave Radar Point Cloud

  • Xiaochao Dang,
  • Kai Fan,
  • Fenfang Li,
  • Yangyang Tang,
  • Yifei Gao,
  • Yue Wang

DOI
https://doi.org/10.3390/app14167253
Journal volume & issue
Vol. 14, no. 16
p. 7253

Abstract

Read online

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.

Keywords