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Main Authors: Wu, Xiuchao, Zhu, Pengfei, Lyu, Jiangjing, Liu, Xinguo, Guo, Jie, Guo, Yanwen, Xu, Weiwei, Lyu, Chengfei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.19789
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author Wu, Xiuchao
Zhu, Pengfei
Lyu, Jiangjing
Liu, Xinguo
Guo, Jie
Guo, Yanwen
Xu, Weiwei
Lyu, Chengfei
author_facet Wu, Xiuchao
Zhu, Pengfei
Lyu, Jiangjing
Liu, Xinguo
Guo, Jie
Guo, Yanwen
Xu, Weiwei
Lyu, Chengfei
contents Recovering material information from images has been extensively studied in computer graphics and vision. Recent works in material estimation leverage diffusion model showing promising results. However, these diffusion-based methods adopt a multi-step denoising strategy, which is time-consuming for each estimation. Such stochastic inference also conflicts with the deterministic material estimation task, leading to a high variance estimated results. In this paper, we introduce StableIntrinsic, a one-step diffusion model for multi-view material estimation that can produce high-quality material parameters with low variance. To address the overly-smoothing problem in one-step diffusion, StableIntrinsic applies losses in pixel space, with each loss designed based on the properties of the material. Additionally, StableIntrinsic introduces a Detail Injection Network (DIN) to eliminate the detail loss caused by VAE encoding, while further enhancing the sharpness of material prediction results. The experimental results indicate that our method surpasses the current state-of-the-art techniques by achieving a $9.9\%$ improvement in the Peak Signal-to-Noise Ratio (PSNR) of albedo, and by reducing the Mean Square Error (MSE) for metallic and roughness by $44.4\%$ and $60.0\%$, respectively.
format Preprint
id arxiv_https___arxiv_org_abs_2508_19789
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle StableIntrinsic: Detail-preserving One-step Diffusion Model for Multi-view Material Estimation
Wu, Xiuchao
Zhu, Pengfei
Lyu, Jiangjing
Liu, Xinguo
Guo, Jie
Guo, Yanwen
Xu, Weiwei
Lyu, Chengfei
Computer Vision and Pattern Recognition
Recovering material information from images has been extensively studied in computer graphics and vision. Recent works in material estimation leverage diffusion model showing promising results. However, these diffusion-based methods adopt a multi-step denoising strategy, which is time-consuming for each estimation. Such stochastic inference also conflicts with the deterministic material estimation task, leading to a high variance estimated results. In this paper, we introduce StableIntrinsic, a one-step diffusion model for multi-view material estimation that can produce high-quality material parameters with low variance. To address the overly-smoothing problem in one-step diffusion, StableIntrinsic applies losses in pixel space, with each loss designed based on the properties of the material. Additionally, StableIntrinsic introduces a Detail Injection Network (DIN) to eliminate the detail loss caused by VAE encoding, while further enhancing the sharpness of material prediction results. The experimental results indicate that our method surpasses the current state-of-the-art techniques by achieving a $9.9\%$ improvement in the Peak Signal-to-Noise Ratio (PSNR) of albedo, and by reducing the Mean Square Error (MSE) for metallic and roughness by $44.4\%$ and $60.0\%$, respectively.
title StableIntrinsic: Detail-preserving One-step Diffusion Model for Multi-view Material Estimation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.19789