Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

NeRO: Neural Geometry and BRDF Reconstruction of Reflective Objects from Multiview Images

About

We present a neural rendering-based method called NeRO for reconstructing the geometry and the BRDF of reflective objects from multiview images captured in an unknown environment. Multiview reconstruction of reflective objects is extremely challenging because specular reflections are view-dependent and thus violate the multiview consistency, which is the cornerstone for most multiview reconstruction methods. Recent neural rendering techniques can model the interaction between environment lights and the object surfaces to fit the view-dependent reflections, thus making it possible to reconstruct reflective objects from multiview images. However, accurately modeling environment lights in the neural rendering is intractable, especially when the geometry is unknown. Most existing neural rendering methods, which can model environment lights, only consider direct lights and rely on object masks to reconstruct objects with weak specular reflections. Therefore, these methods fail to reconstruct reflective objects, especially when the object mask is not available and the object is illuminated by indirect lights. We propose a two-step approach to tackle this problem. First, by applying the split-sum approximation and the integrated directional encoding to approximate the shading effects of both direct and indirect lights, we are able to accurately reconstruct the geometry of reflective objects without any object masks. Then, with the object geometry fixed, we use more accurate sampling to recover the environment lights and the BRDF of the object. Extensive experiments demonstrate that our method is capable of accurately reconstructing the geometry and the BRDF of reflective objects from only posed RGB images without knowing the environment lights and the object masks. Codes and datasets are available at https://github.com/liuyuan-pal/NeRO.

Yuan Liu, Peng Wang, Cheng Lin, Xiaoxiao Long, Jiepeng Wang, Lingjie Liu, Taku Komura, Wenping Wang• 2023

Related benchmarks

TaskDatasetResultRank
Surface ReconstructionDTU
Chamfer Distance (CD)1.04
120
Geometry ReconstructionSynthetic Objects (test)
Chamfer Distance (CD)0.0015
24
Novel View SynthesisSynthetic dynamic scenes
PSNR30.61
19
Novel View SynthesisShiny Blender
PSNR28.33
13
Material EstimationSynthetic Objects (test)
Roughness MSE0.002
12
View Synthesis and Surface ReconstructionShiny Blender
PSNR29.84
11
RelightingTensoSDF synthetic dataset (full)
PSNR23.204
11
3D Reconstruction and RenderingCat
PSNR24.51
9
3D Reconstruction and RenderingLays
PSNR26.68
9
3D Reconstruction and RenderingHorse
PSNR22.22
9
Showing 10 of 22 rows

Other info

Follow for update