A time-reversed reconstruction method couples visual language models with constrained diffusion to generate past scene frames from current thermal traces in controlled scenarios.
See the past: Time-Reversed Scene Reconstruction from Thermal Traces Using Visual Language Models
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abstract
Recovering the past from present observations is an intriguing challenge with potential applications in forensics and scene analysis. Thermal imaging, operating in the infrared range, provides access to otherwise invisible information. Since humans are typically warmer (37 C -98.6 F) than their surroundings, interactions such as sitting, touching, or leaning leave residual heat traces. These fading imprints serve as passive temporal codes, allowing for the inference of recent events that exceed the capabilities of RGB cameras. This work proposes a time-reversed reconstruction framework that uses paired RGB and thermal images to recover scene states from a few seconds earlier. The proposed approach couples Visual-Language Models (VLMs) with a constrained diffusion process, where one VLM generates scene descriptions and another guides image reconstruction, ensuring semantic and structural consistency. The method is evaluated in three controlled scenarios, demonstrating the feasibility of reconstructing plausible past frames up to 120 seconds earlier, providing a first step toward time-reversed imaging from thermal traces.
fields
cs.CV 1years
2025 1verdicts
UNVERDICTED 1representative citing papers
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See the past: Time-Reversed Scene Reconstruction from Thermal Traces Using Visual Language Models
A time-reversed reconstruction method couples visual language models with constrained diffusion to generate past scene frames from current thermal traces in controlled scenarios.