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Shape, Light, and Material Decomposition from Images using Monte Carlo Rendering and Denoising

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Recent advances in differentiable rendering have enabled high-quality reconstruction of 3D scenes from multi-view images. Most methods rely on simple rendering algorithms: pre-filtered direct lighting or learned representations of irradiance. We show that a more realistic shading model, incorporating ray tracing and Monte Carlo integration, substantially improves decomposition into shape, materials & lighting. Unfortunately, Monte Carlo integration provides estimates with significant noise, even at large sample counts, which makes gradient-based inverse rendering very challenging. To address this, we incorporate multiple importance sampling and denoising in a novel inverse rendering pipeline. This substantially improves convergence and enables gradient-based optimization at low sample counts. We present an efficient method to jointly reconstruct geometry (explicit triangle meshes), materials, and lighting, which substantially improves material and light separation compared to previous work. We argue that denoising can become an integral part of high quality inverse rendering pipelines.

Jon Hasselgren, Nikolai Hofmann, Jacob Munkberg• 2022

Related benchmarks

TaskDatasetResultRank
Novel Scene RelightingStanford-ORB 1.0 (test)
PSNR-H24.43
26
Novel View SynthesisStanford-ORB 1.0 (test)
PSNR-H28.03
18
RelightingSynthetic Scenes (test)
PSNR21.77
16
Albedo EstimationMII dataset
PSNR29.72
14
Geometry EstimationStanfordORB
Depth Error0.32
11
3D Reconstruction and RenderingRedOx
PSNR30.86
9
3D Reconstruction and RenderingHorse
PSNR27.15
9
3D Reconstruction and RenderingLays
PSNR29.31
9
3D Reconstruction and RenderingGreenOx
PSNR30.66
9
3D Reconstruction and RenderingCat
PSNR23.61
9
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