TRGS-SLAM: IMU-Aided Gaussian Splatting SLAM for Blurry, Rolling Shutter, and Noisy Thermal Images
arXiv cs.RO / 3/24/2026
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Key Points
- The paper introduces TRGS-SLAM, an IMU-aided thermal SLAM system built on 3D Gaussian Splatting designed to work despite motion blur, rolling shutter distortions, and fixed pattern noise common to uncooled microbolometer thermal cameras.
- It proposes a model-aware 3DGS rendering approach plus SLAM-specific innovations such as B-spline trajectory optimization with a two-stage IMU loss, view-diversity-based opacity resetting, and pose drift correction to improve robustness on degraded thermal imagery.
- Experimental results claim accurate tracking in real-world fast-motion, high-noise thermal conditions where other tested SLAM methods fail.
- The authors further report that offline refinement can restore thermal images with performance competitive to prior restoration methods that depended on ground-truth poses, indicating dual utility for both mapping and imaging quality improvement.
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