Universal computational thermal imaging overcoming the ghosting effect
Hongyi Xu, Du Wang, Chenjun Zhao, Jiashuo Chen, Jiale Lin, Liqin Cao, Yanfei Zhong, Yiyuan She, Fanglin Bao

TL;DR
This paper introduces TAG, a universal computational thermal imaging framework that overcomes ghosting effects in night vision by recovering textures in diverse scenes, surpassing previous methods like HADAR.
Contribution
The authors develop a nonparametric, hyperspectral photon stream-based thermal imaging method that universally addresses material non-uniformity and ghosting effects in night vision.
Findings
TAG outperforms HADAR across various scenes.
Demonstrates thermal 3D topological alignment and mood detection.
Achieves unprecedented facial texture and expression recovery.
Abstract
Thermal imaging is crucial for night vision but fundamentally hampered by the ghosting effect, a loss of detailed texture in cluttered photon streams. While conventional ghosting mitigation has relied on data post-processing, the recent breakthrough in heat-assisted detection and ranging (HADAR) opens a promising frontier for hyperspectral computational thermal imaging that produces night vision with day-like visibility. However, universal anti-ghosting imaging remains elusive, as state-of-the-art HADAR applies only to limited scenes with uniform materials, whereas material non-uniformity is ubiquitous in the real world. Here, we propose a universal computational thermal imaging framework, TAG (thermal anti-ghosting), to address material non-uniformity and overcome ghosting for high-fidelity night vision. TAG takes hyperspectral photon streams for nonparametric texture recovery,…
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