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Intrinsic Image Diffusion for Indoor Single-view Material Estimation

About

We present Intrinsic Image Diffusion, a generative model for appearance decomposition of indoor scenes. Given a single input view, we sample multiple possible material explanations represented as albedo, roughness, and metallic maps. Appearance decomposition poses a considerable challenge in computer vision due to the inherent ambiguity between lighting and material properties and the lack of real datasets. To address this issue, we advocate for a probabilistic formulation, where instead of attempting to directly predict the true material properties, we employ a conditional generative model to sample from the solution space. Furthermore, we show that utilizing the strong learned prior of recent diffusion models trained on large-scale real-world images can be adapted to material estimation and highly improves the generalization to real images. Our method produces significantly sharper, more consistent, and more detailed materials, outperforming state-of-the-art methods by $1.5dB$ on PSNR and by $45\%$ better FID score on albedo prediction. We demonstrate the effectiveness of our approach through experiments on both synthetic and real-world datasets.

Peter Kocsis, Vincent Sitzmann, Matthias Nie{\ss}ner (1) __INSTITUTION_3__ Technical University of Munich, (2) MIT EECS)• 2023

Related benchmarks

TaskDatasetResultRank
Albedo EstimationARAP
LMSE0.03
19
Albedo EstimationARAP (test)
LMSE0.03
11
Albedo EstimationIIW v1.1 (test)
WHDR 10%26.1
11
Albedo EstimationMAW
Intensity (×100)1.13
10
Albedo EstimationSynthetic Dataset (val)
PSNR21.83
10
SVBRDF Multi-view Consistency5 synthetic scenes (test)
Basecolor Consistency0.124
10
Intrinsic Image Decomposition (Albedo)Hypersim (test)
PSNR12.1
10
Albedo EstimationInteriorverse (test)
PSNR12.2
10
Metallic EstimationInteriorVerse 2633 images (test)
PSNR17.95
9
Roughness EstimationInteriorVerse 2633 images (test)
PSNR14.83
9
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