SOTAVerified

Inverse Rendering

Inverse Rendering is the task of recovering the properties of a scene, such as shape, material, and lighting, from an image or a video. The goal of inverse rendering is to determine the properties of a scene given an observation of it, and to generate new images or videos based on these properties.

Papers

Showing 171180 of 271 papers

TitleStatusHype
Deep Direct Volume Rendering: Learning Visual Feature Mappings From Exemplary Images0
Deep Face Feature for Face Alignment0
Deep Generative Models: Deterministic Prediction with an Application in Inverse Rendering0
Deep Learning compatible Differentiable X-ray Projections for Inverse Rendering0
Deep Polarization Cues for Single-shot Shape and Subsurface Scattering Estimation0
DeepShaRM: Multi-View Shape and Reflectance Map Recovery Under Unknown Lighting0
Deep Structure for end-to-end inverse rendering0
Deep Uncalibrated Photometric Stereo via Inter-Intra Image Feature Fusion0
DEL: Discrete Element Learner for Learning 3D Particle Dynamics with Neural Rendering0
DiffCSG: Differentiable CSG via Rasterization0
Show:102550
← PrevPage 18 of 28Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Neural-PBIRHDR-PSNR26.01Unverified
2NVDiffRecMCHDR-PSNR24.43Unverified
3InvRenderHDR-PSNR23.76Unverified
4NeRFactorHDR-PSNR23.54Unverified
5NeRDHDR-PSNR23.29Unverified
6NVDiffRecHDR-PSNR22.91Unverified
7PhySGHDR-PSNR21.81Unverified