SparseRadNet: Sparse Perception Neural Network
on Subsampled Radar Data
Jialong Wu1,2 • Mirko Meuter2 • Markus Schoeler2 • Matthias Rottmann1
1 Department of Mathematics, University of Wuppertal, Wuppertal, Germany
2 Aptiv Services Deutschland GmbH
European Conference on Computer Vision (ECCV), 2024
Abstract
Radar-based perception has gained increasing attention in autonomous driving, yet the inherent sparsity of radars poses challenges. Radar raw data often contains excessive noise, whereas radar point clouds retain only limited information. In this work, we holistically treat the sparse nature of radar data by introducing an adaptive subsampling method together with a tailored network architecture that exploits the sparsity patterns to discover global and local dependencies in the radar signal. Our subsampling module selects a subset of pixels from range-doppler (RD) spectra that contribute most to the downstream perception tasks. To improve the feature extraction on sparse subsampled data, we propose a new way of applying graph neural networks on radar data and design a novel two-branch backbone to capture both global and local neighbor information. An attentive fusion module is applied to combine features from both branches. Experiments on the RADIal dataset show that our SparseRadNet exceeds state-of-the-art (SOTA) performance in object detection and achieves close to SOTA accuracy in freespace segmentation, meanwhile using sparse subsampled input data.
Resources & Links
Acknowledgments
J.W. and M.R. acknowledge support by the German Federal Ministry of Education and Research within the junior research group project “UnrEAL” (grant no. 01IS22069).
Citation
@inproceedings{wu2024sparseradnet,
title={SparseRadNet: Sparse Perception Neural Network on Subsampled Radar Data},
author={Wu, Jialong and Meuter, Mirko and Schoeler, Markus and Rottmann, Matthias},
booktitle={European Conference on Computer Vision},
pages={52--69},
year={2024},
organization={Springer}
}
Contact
Have questions or want to collaborate? Reach out:
- Email: jialong.wu@uni-wuppertal.de