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Ouroboros: Single-step Diffusion Models for Cycle-consistent Forward and Inverse Rendering

About

While multi-step diffusion models have advanced both forward and inverse rendering, existing approaches often treat these problems independently, leading to cycle inconsistency and slow inference speed. In this work, we present Ouroboros, a framework composed of two single-step diffusion models that handle forward and inverse rendering with mutual reinforcement. Our approach extends intrinsic decomposition to both indoor and outdoor scenes and introduces a cycle consistency mechanism that ensures coherence between forward and inverse rendering outputs. Experimental results demonstrate state-of-the-art performance across diverse scenes while achieving substantially faster inference speed compared to other diffusion-based methods. We also demonstrate that Ouroboros can transfer to video decomposition in a training-free manner, reducing temporal inconsistency in video sequences while maintaining high-quality per-frame inverse rendering.

Shanlin Sun, Yifan Wang, Hanwen Zhang, Yifeng Xiong, Qin Ren, Ruogu Fang, Xiaohui Xie, Chenyu You• 2025

Related benchmarks

TaskDatasetResultRank
Albedo EstimationMAW
Intensity (×100)0.48
26
Albedo PredictionInteriorVerse
PSNR22.07
13
Albedo PredictionHypersim
PSNR18.98
6
Albedo PredictionMatrixCity
PSNR25.38
6
Normal PredictionHypersim 61
Mean Error11.98
6
Normal PredictionInteriorVerse 39
Mean Angular Error9.58
6
Normal PredictionMatrixCity 85
Mean Error18.12
6
Single-image RelightingMIT Multi-Illumination Images in the Wild (MIIW) (test)
PSNR19.38
6
Metallicity PredictionMatrixCity
PSNR26.32
4
Metallicity PredictionInteriorVerse
PSNR13.85
4
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