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Main Authors: Fan, Cong, Zhang, Shengkai, Liu, Kezhong, Wang, Shuai, Yang, Zheng, Wang, Wei
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.17229
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author Fan, Cong
Zhang, Shengkai
Liu, Kezhong
Wang, Shuai
Yang, Zheng
Wang, Wei
author_facet Fan, Cong
Zhang, Shengkai
Liu, Kezhong
Wang, Shuai
Yang, Zheng
Wang, Wei
contents Complementary to prevalent LiDAR and camera systems, millimeter-wave (mmWave) radar is robust to adverse weather conditions like fog, rainstorms, and blizzards but offers sparse point clouds. Current techniques enhance the point cloud by the supervision of LiDAR's data. However, high-performance LiDAR is notably expensive and is not commonly available on vehicles. This paper presents mmEMP, a supervised learning approach that enhances radar point clouds using a low-cost camera and an inertial measurement unit (IMU), enabling crowdsourcing training data from commercial vehicles. Bringing the visual-inertial (VI) supervision is challenging due to the spatial agnostic of dynamic objects. Moreover, spurious radar points from the curse of RF multipath make robots misunderstand the scene. mmEMP first devises a dynamic 3D reconstruction algorithm that restores the 3D positions of dynamic features. Then, we design a neural network that densifies radar data and eliminates spurious radar points. We build a new dataset in the real world. Extensive experiments show that mmEMP achieves competitive performance compared with the SOTA approach training by LiDAR's data. In addition, we use the enhanced point cloud to perform object detection, localization, and mapping to demonstrate mmEMP's effectiveness.
format Preprint
id arxiv_https___arxiv_org_abs_2404_17229
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhancing mmWave Radar Point Cloud via Visual-inertial Supervision
Fan, Cong
Zhang, Shengkai
Liu, Kezhong
Wang, Shuai
Yang, Zheng
Wang, Wei
Robotics
Complementary to prevalent LiDAR and camera systems, millimeter-wave (mmWave) radar is robust to adverse weather conditions like fog, rainstorms, and blizzards but offers sparse point clouds. Current techniques enhance the point cloud by the supervision of LiDAR's data. However, high-performance LiDAR is notably expensive and is not commonly available on vehicles. This paper presents mmEMP, a supervised learning approach that enhances radar point clouds using a low-cost camera and an inertial measurement unit (IMU), enabling crowdsourcing training data from commercial vehicles. Bringing the visual-inertial (VI) supervision is challenging due to the spatial agnostic of dynamic objects. Moreover, spurious radar points from the curse of RF multipath make robots misunderstand the scene. mmEMP first devises a dynamic 3D reconstruction algorithm that restores the 3D positions of dynamic features. Then, we design a neural network that densifies radar data and eliminates spurious radar points. We build a new dataset in the real world. Extensive experiments show that mmEMP achieves competitive performance compared with the SOTA approach training by LiDAR's data. In addition, we use the enhanced point cloud to perform object detection, localization, and mapping to demonstrate mmEMP's effectiveness.
title Enhancing mmWave Radar Point Cloud via Visual-inertial Supervision
topic Robotics
url https://arxiv.org/abs/2404.17229