Inverse Rendering for Complex Indoor Scenes: Shape, Spatially-Varying Lighting and SVBRDF From a Single Image

Overview

Inverse Rendering for Complex Indoor Scenes:
Shape, Spatially-Varying Lighting and SVBRDF
From a Single Image
(Project page)

Zhengqin Li, Mohammad Shafiei, Ravi Ramamoorthi, Kalyan Sunkavalli, Manmohan Chandraker

Useful links:

Results on our new dataset

This is the official code release of paper Inverse Rendering for Complex Indoor Scenes: Shape, Spatially-Varying Lighting and SVBRDF From a Single Image. The original models were trained by extending the SUNCG dataset with an SVBRDF-mapping. Since SUNCG is not available now due to copyright issues, we are not able to release the original models. Instead, we rebuilt a new high-quality synthetic indoor scene dataset and trained our models on it. We will release the new dataset in the near future. The geometry configurations of the new dataset are based on ScanNet [1], which is a large-scale repository of 3D scans of real indoor scenes. Some example images can be found below. A video is at this link Insverse rendering results of the models trained on the new datasets are shown below. Scene editing applications results on real images are shown below, including results on object insertion and material editing. Models trained on the new dataset achieve comparable performances compared with our previous models. Quantitaive comparisons are listed below, where [Li20] represents our previous models trained on the extended SUNCG dataset.

Download the trained models

The trained models can be downloaded from the link. To test the models, please copy the models to the same directory as the code and run the commands as shown below.

Train and test on the synthetic dataset

To train the full models on the synthetic dataset, please run the commands

  • python trainBRDF.py --cuda --cascadeLevel 0 --dataRoot DATA: Train the first cascade of MGNet.
  • python trainLight.py --cuda --cascadeLevel 0 --dataRoot DATA: Train the first cascade of LightNet.
  • python trainBRDFBilateral.py --cuda --cascadeLevel 0 --dataRoot DATA: Train the bilateral solvers.
  • python outputBRDFLight.py --cuda --dataRoot DATA: Output the intermediate predictions, which will be used to train the second cascade.
  • python trainBRDF.py --cuda --cascadeLevel 1 --dataRoot DATA: Train the first cascade of MGNet.
  • python trainLight.py --cuda --cascadeLevel 1 --dataRoot DATA: Train the first cascade of LightNet.
  • python trainBRDFBilateral.py --cuda --cascadeLevel 1 --dataRoot DATA: Train the bilateral solvers.

To test the full models on the synthetic dataset, please run the commands

  • python testBRDFBilateral.py --cuda --dataRoot DATA: Test the BRDF and geometry predictions.
  • python testLight.py --cuda --cascadeLevel 0 --dataRoot DATA: Test the light predictions of the first cascade.
  • python testLight.py --cuda --cascadeLevel 1 --dataRoot DATA: Test the light predictions of the first cascade.

Train and test on IIW dataset for intrinsic decomposition

To train on the IIW dataset, please first train on the synthetic dataset and then run the commands:

  • python trainFineTuneIIW.py --cuda --dataRoot DATA --IIWRoot IIW: Fine-tune the network on the IIW dataset.

To test the network on the IIW dataset, please run the commands

  • bash runIIW.sh: Output the predictions for the IIW dataset.
  • python CompareWHDR.py: Compute the WHDR on the predictions.

Please fixing the data route in runIIW.sh and CompareWHDR.py.

Train and test on NYU dataset for geometry prediction

To train on the BYU dataset, please first train on the synthetic dataset and then run the commands:

  • python trainFineTuneNYU.py --cuda --dataRoot DATA --NYURoot NYU: Fine-tune the network on the NYU dataset.
  • python trainFineTuneNYU_casacde1.py --cuda --dataRoot DATA --NYURoot NYU: Fine-tune the network on the NYU dataset.

To test the network on the NYU dataset, please run the commands

  • bash runNYU.sh: Output the predictions for the NYU dataset.
  • python CompareNormal.py: Compute the normal error on the predictions.
  • python CompareDepth.py: Compute the depth error on the predictions.

Please remember fixing the data route in runNYU.sh, CompareNormal.py and CompareDepth.py.

Train and test on Garon19 [2] dataset for object insertion

There is no fine-tuning for the Garon19 dataset. To test the network, download the images from this link. And then run bash runReal20.sh. Please remember fixing the data route in runReal20.sh.

All object insertion results and comparisons with prior works can be found from this link. The code to run object insertion can be found from this link.

Differences from the original paper

The current implementation has 3 major differences from the original CVPR20 implementation.

  • In the new models, we do not use spherical Gaussian parameters generated from optimization for supervision. That is mainly because the optimization proceess is time consuming and we have not finished that process yet. We will update the code once it is done. The performance with spherical Gaussian supervision is expected to be better.
  • The resolution of the second cascade is changed from 480x640 to 240x320. We find that the networks can generate smoother results with smaller resolution.
  • We remove the light source segmentation mask as an input. It does not have a major impact on the final results.

Reference

[1] Dai, A., Chang, A. X., Savva, M., Halber, M., Funkhouser, T., & Nießner, M. (2017). Scannet: Richly-annotated 3d reconstructions of indoor scenes. In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (pp. 5828-5839).

[2] Garon, M., Sunkavalli, K., Hadap, S., Carr, N., & Lalonde, J. F. (2019). Fast spatially-varying indoor lighting estimation. In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (pp. 6908-6917).

Lighting the Darkness in the Deep Learning Era: A Survey, An Online Platform, A New Dataset

Lighting the Darkness in the Deep Learning Era: A Survey, An Online Platform, A New Dataset This repository provides a unified online platform, LoLi-P

Chongyi Li 457 Jan 03, 2023
Unsupervised clustering of high content screen samples

Microscopium Unsupervised clustering and dataset exploration for high content screens. See microscopium in action Public dataset BBBC021 from the Broa

60 Dec 05, 2022
Code for "Layered Neural Rendering for Retiming People in Video."

Layered Neural Rendering in PyTorch This repository contains training code for the examples in the SIGGRAPH Asia 2020 paper "Layered Neural Rendering

Google 154 Dec 16, 2022
[NeurIPS 2021] Better Safe Than Sorry: Preventing Delusive Adversaries with Adversarial Training

Better Safe Than Sorry: Preventing Delusive Adversaries with Adversarial Training Code for NeurIPS 2021 paper "Better Safe Than Sorry: Preventing Delu

Lue Tao 29 Sep 20, 2022
Neural networks applied in recognizing guitar chords using python, AutoML.NET with C# and .NET Core

Chord Recognition Demo application The demo application is written in C# with .NETCore. As of July 9, 2020, the only version available is for windows

Andres Mauricio Rondon Patiño 24 Oct 22, 2022
Author's PyTorch implementation of TD3+BC, a simple variant of TD3 for offline RL

A Minimalist Approach to Offline Reinforcement Learning TD3+BC is a simple approach to offline RL where only two changes are made to TD3: (1) a weight

Scott Fujimoto 193 Dec 23, 2022
Code for our paper 'Generalized Category Discovery'

Generalized Category Discovery This repo is a placeholder for code for our paper: Generalized Category Discovery Abstract: In this paper, we consider

107 Dec 28, 2022
Pytorch Implementation of Spiking Neural Networks Calibration, ICML 2021

SNN_Calibration Pytorch Implementation of Spiking Neural Networks Calibration, ICML 2021 Feature Comparison of SNN calibration: Features SNN Direct Tr

Yuhang Li 60 Dec 27, 2022
Fully Automatic Page Turning on Real Scores

Fully Automatic Page Turning on Real Scores This repository contains the corresponding code for our extended abstract Henkel F., Schwaiger S. and Widm

Florian Henkel 7 Jan 02, 2022
Author's PyTorch implementation of TD3 for OpenAI gym tasks

Addressing Function Approximation Error in Actor-Critic Methods PyTorch implementation of Twin Delayed Deep Deterministic Policy Gradients (TD3). If y

Scott Fujimoto 1.3k Dec 25, 2022
Kaggle Ultrasound Nerve Segmentation competition [Keras]

Ultrasound nerve segmentation using Keras (1.0.7) Kaggle Ultrasound Nerve Segmentation competition [Keras] #Install (Ubuntu {14,16}, GPU) cuDNN requir

179 Dec 28, 2022
A Kernel fuzzer focusing on race bugs

Razzer: Finding kernel race bugs through fuzzing Environment setup $ source scripts/envsetup.sh scripts/envsetup.sh sets up necessary environment var

Systems and Software Security Lab at Seoul National University (SNU) 328 Dec 26, 2022
Open-Set Recognition: A Good Closed-Set Classifier is All You Need

Open-Set Recognition: A Good Closed-Set Classifier is All You Need Code for our paper: "Open-Set Recognition: A Good Closed-Set Classifier is All You

194 Jan 03, 2023
Region-aware Contrastive Learning for Semantic Segmentation, ICCV 2021

Region-aware Contrastive Learning for Semantic Segmentation, ICCV 2021 Abstract Recent works have made great success in semantic segmentation by explo

Hanzhe Hu 30 Dec 29, 2022
Azua - build AI algorithms to aid efficient decision-making with minimum data requirements.

Project Azua 0. Overview Many modern AI algorithms are known to be data-hungry, whereas human decision-making is much more efficient. The human can re

Microsoft 197 Jan 06, 2023
PyTorch implementation of SmoothGrad: removing noise by adding noise.

SmoothGrad implementation in PyTorch PyTorch implementation of SmoothGrad: removing noise by adding noise. Vanilla Gradients SmoothGrad Guided backpro

SSKH 143 Jan 05, 2023
Code for Learning Manifold Patch-Based Representations of Man-Made Shapes, in ICLR 2021.

LearningPatches | Webpage | Paper | Video Learning Manifold Patch-Based Representations of Man-Made Shapes Dmitriy Smirnov, Mikhail Bessmeltsev, Justi

Dima Smirnov 22 Nov 14, 2022
Realistic lighting in ursina!

Ursina Lighting Realistic lighting in ursina! If you want to have realistic lighting in ursina, import the UrsinaLighting.py in your project and use t

17 Jul 07, 2022
Shared Attention for Multi-label Zero-shot Learning

Shared Attention for Multi-label Zero-shot Learning Overview This repository contains the implementation of Shared Attention for Multi-label Zero-shot

dathuynh 26 Dec 14, 2022
This repository contains the code for the binaural-detection model used in the publication arXiv:2111.04637

This repository contains the code for the binaural-detection model used in the publication arXiv:2111.04637 Dependencies The model depends on the foll

Jörg Encke 2 Oct 14, 2022