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Thermal odometry and dense mapping using learned odometry and Gaussian splatting

About

Thermal infrared sensors, with wavelengths longer than smoke particles, can capture imagery independent of darkness, dust, and smoke. This robustness has made them increasingly valuable for motion estimation and environmental perception in robotics, particularly in adverse conditions. Existing thermal odometry and mapping approaches, however, are predominantly geometric and often fail across diverse datasets while lacking the ability to produce dense maps. Motivated by the efficiency and high-quality reconstruction ability of recent Gaussian Splatting (GS) techniques, we propose TOM-GS, a thermal odometry and mapping method that integrates learning-based odometry with GS-based dense mapping. TOM-GS is among the first GS-based SLAM systems tailored for thermal cameras, featuring dedicated thermal image enhancement and monocular depth integration. Extensive experiments on motion estimation and novel-view rendering demonstrate that TOM-GS outperforms existing learning-based methods, confirming the benefits of learning-based pipelines for robust thermal odometry and dense reconstruction.

Tianhao Zhou, Yujia Chen, Zhihao Zhan, Yuhang Ming, Jianzhu Huai• 2026

Related benchmarks

TaskDatasetResultRank
Monocular Visual OdometryVIVID Mean over sequences
ATE RMSE0.37
20
Monocular Visual OdometryVIVID in_rob_local
ATE RMSE0.06
18
Monocular Visual OdometryVIVID in_rob_global
ATE RMSE0.07
17
Monocular Visual OdometryVIVID in_unst_local
ATE RMSE0.04
17
Monocular Visual OdometryVIVID in_rob_dark
ATE RMSE0.05
16
Monocular Visual OdometryVIVID in_unst_global
ATE RMSE0.06
15
Monocular Visual OdometryVIVID in_agg_global
ATE RMSE0.09
14
Monocular Visual OdometryVIVID in_unst_dark
ATE RMSE0.06
13
Monocular Visual OdometryVIVID in_agg_dark
ATE RMSE0.63
12
Monocular OdometryRRXIO Thermal 1.0
Error (Easy)0.02
10
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