Dense 3D Point Cloud Environmental Mapping Using Millimeter-Wave Radar

Sensors (Basel). 2024 Oct 12;24(20):6569. doi: 10.3390/s24206569.

Abstract

To address the challenges of sparse point clouds in current MIMO millimeter-wave radar environmental mapping, this paper proposes a dense 3D millimeter-wave radar point cloud environmental mapping algorithm. In the preprocessing phase, a radar SLAM-based approach is introduced to construct local submaps, which replaces the direct use of radar point cloud frames. This not only reduces data dimensionality but also enables the proposed method to handle scenarios involving vehicle motion with varying speeds. Building on this, a 3D-RadarHR cross-modal learning network is proposed, which uses LiDAR as the target output to train the radar submaps, thereby generating a dense millimeter-wave radar point cloud map. Experimental results across multiple scenarios, including outdoor environments and underground tunnels, demonstrate that the proposed method can increase the point cloud density of millimeter-wave radar environmental maps by over 50 times, with a point cloud accuracy better than 0.1 m. Compared to existing algorithms, the proposed method achieves superior environmental map reconstruction performance while maintaining a real-time processing rate of 15 Hz.

Keywords: convolutional neural network; millimeter-wave radar; radar mapping; radar point cloud processing.

Grants and funding

This research was funded by the National Key Research and Development Program of China (2022YFB4301401, 2022YFB4300401), the 9th Youth Talent Lifting Project of China Association for Science and Technology (No. YESS20230004), the Central Level Research Institutes Research Special Projects (182408, 182410).