English

High Resolution Point Clouds from mmWave Radar

Robotics 2023-07-18 v2 Networking and Internet Architecture Signal Processing

Abstract

This paper explores a machine learning approach for generating high resolution point clouds from a single-chip mmWave radar. Unlike lidar and vision-based systems, mmWave radar can operate in harsh environments and see through occlusions like smoke, fog, and dust. Unfortunately, current mmWave processing techniques offer poor spatial resolution compared to lidar point clouds. This paper presents RadarHD, an end-to-end neural network that constructs lidar-like point clouds from low resolution radar input. Enhancing radar images is challenging due to the presence of specular and spurious reflections. Radar data also doesn't map well to traditional image processing techniques due to the signal's sinc-like spreading pattern. We overcome these challenges by training RadarHD on a large volume of raw I/Q radar data paired with lidar point clouds across diverse indoor settings. Our experiments show the ability to generate rich point clouds even in scenes unobserved during training and in the presence of heavy smoke occlusion. Further, RadarHD's point clouds are high-quality enough to work with existing lidar odometry and mapping workflows.

Keywords

Cite

@article{arxiv.2206.09273,
  title  = {High Resolution Point Clouds from mmWave Radar},
  author = {Akarsh Prabhakara and Tao Jin and Arnav Das and Gantavya Bhatt and Lilly Kumari and Elahe Soltanaghaei and Jeff Bilmes and Swarun Kumar and Anthony Rowe},
  journal= {arXiv preprint arXiv:2206.09273},
  year   = {2023}
}
R2 v1 2026-06-24T11:56:10.203Z