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Main Authors: Li, Zhiheng, Wang, Weihua, Shen, Qiang, Zhao, Yichen, Fang, Zheng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.09608
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author Li, Zhiheng
Wang, Weihua
Shen, Qiang
Zhao, Yichen
Fang, Zheng
author_facet Li, Zhiheng
Wang, Weihua
Shen, Qiang
Zhao, Yichen
Fang, Zheng
contents Conventional SLAM systems using visual or LiDAR data often struggle in poor lighting and severe weather. Although 4D radar is suited for such environments, its sparse and noisy point clouds hinder accurate odometry estimation, while the radar maps suffer from obscure and incomplete structures. Thus, we propose Super4DR, a 4D radar-centric framework for learning-based odometry estimation and gaussian-based map optimization. First, we design a cluster-aware odometry network that incorporates object-level cues from the clustered radar points for inter-frame matching, alongside a hierarchical self-supervision mechanism to overcome outliers through spatio-temporal consistency, knowledge transfer, and feature contrast. Second, we propose using 3D gaussians as an intermediate representation, coupled with a radar-specific growth strategy, selective separation, and multi-view regularization, to recover blurry map areas and those undetected based on image texture. Experiments show that Super4DR achieves a 67% performance gain over prior self-supervised methods, nearly matches supervised odometry, and narrows the map quality disparity with LiDAR while enabling multi-modal image rendering.
format Preprint
id arxiv_https___arxiv_org_abs_2512_09608
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Super4DR: 4D Radar-centric Self-supervised Odometry and Gaussian-based Map Optimization
Li, Zhiheng
Wang, Weihua
Shen, Qiang
Zhao, Yichen
Fang, Zheng
Robotics
Conventional SLAM systems using visual or LiDAR data often struggle in poor lighting and severe weather. Although 4D radar is suited for such environments, its sparse and noisy point clouds hinder accurate odometry estimation, while the radar maps suffer from obscure and incomplete structures. Thus, we propose Super4DR, a 4D radar-centric framework for learning-based odometry estimation and gaussian-based map optimization. First, we design a cluster-aware odometry network that incorporates object-level cues from the clustered radar points for inter-frame matching, alongside a hierarchical self-supervision mechanism to overcome outliers through spatio-temporal consistency, knowledge transfer, and feature contrast. Second, we propose using 3D gaussians as an intermediate representation, coupled with a radar-specific growth strategy, selective separation, and multi-view regularization, to recover blurry map areas and those undetected based on image texture. Experiments show that Super4DR achieves a 67% performance gain over prior self-supervised methods, nearly matches supervised odometry, and narrows the map quality disparity with LiDAR while enabling multi-modal image rendering.
title Super4DR: 4D Radar-centric Self-supervised Odometry and Gaussian-based Map Optimization
topic Robotics
url https://arxiv.org/abs/2512.09608