Thermal is Always Wild: Characterizing and Addressing Challenges in Thermal-Only Novel View Synthesis

arXiv cs.CV / 3/24/2026

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Key Points

  • The paper explains why thermal-only novel view synthesis (NVS) is substantially harder than RGB-based NVS, mainly due to low dynamic range and unstable photometry combined with slow radiometric drift.
  • It identifies how these sensor properties destabilize correspondence estimation and cause high-frequency “floater” artifacts when RGB guidance is unavailable beyond camera pose.
  • The authors propose a lightweight preprocessing and splatting pipeline that expands usable dynamic range and stabilizes per-frame photometric behavior.
  • Reported results show state-of-the-art performance on thermal-only NVS benchmarks without dataset-specific tuning, suggesting improved robustness for practical thermal imaging setups.

Abstract

Thermal cameras provide reliable visibility in darkness and adverse conditions, but thermal imagery remains significantly harder to use for novel view synthesis (NVS) than visible-light images. This difficulty stems primarily from two characteristics of affordable thermal sensors. First, thermal images have extremely low dynamic range, which weakens appearance cues and limits the gradients available for optimization. Second, thermal data exhibit rapid frame-to-frame photometric fluctuations together with slow radiometric drift, both of which destabilize correspondence estimation and create high-frequency floater artifacts during view synthesis, particularly when no RGB guidance (beyond camera pose) is available. Guided by these observations, we introduce a lightweight preprocessing and splatting pipeline that expands usable dynamic range and stabilizes per-frame photometry. Our approach achieves state-of-the-art performance across thermal-only NVS benchmarks, without requiring any dataset-specific tuning.