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RAMBA: 4D Radar Mapping by Bundle Adjustment

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4D radar is increasingly attractive for robotic mapping because it provides range, azimuth, elevation, and Doppler measurements while remaining robust in adverse visibility conditions. Although recent radar and radar--inertial odometry methods have achieved promising online state estimation performance, offline global map refinement for 4D radar remains underexplored. This paper presents RAMBA, a radar bundle-adjustment framework for globally consistent 4D radar mapping. Given initial poses and radar frames from a radar--inertial odometry front-end, RAMBA jointly refines radar frame states using covariance-weighted geometric residuals, IMU preintegration factors, and radar ego-velocity constraints. The geometric residuals extend pairwise GICP to a multi-frame optimization by forming voxel-based correspondences across selected frames and weighting each residual with point covariances. To improve robustness against drift and revisits, RAMBA enforces temporal consistency during correspondence formation while explicitly supporting loop-closure constraints. Experiments on the ColoRadar and SNAIL Radar datasets show that RAMBA improves map consistency and usually enhances trajectory accuracy over radar--inertial odometry and pose-graph optimization baselines.

Jianzhu Huai, Yiwen Chen, Binliang Wang• 2026

Related benchmarks

TaskDatasetResultRank
Radar Odometry and MappingSNAIL Radar (Seq. 20231105 4)
ATE RMSE (m)5.94
5
Radar Odometry and MappingSNAIL Radar Seq. 20231105 6
ATE RMSE (m)0.9
5
Radar Odometry and MappingSNAIL Radar (Seq. 20231208/1)
ATE RMSE (m)0.35
5
Radar Odometry and MappingColoRadar Seq. edgar-classroom 0
ATE RMSE (m)0.47
5
Radar Odometry and MappingColoRadar (Seq. outdoors/0)
ATE RMSE (m)0.71
5
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