Code release for the paper “Worldsheet Wrapping the World in a 3D Sheet for View Synthesis from a Single Image”, ICCV 2021.

Overview

Worldsheet: Wrapping the World in a 3D Sheet for View Synthesis from a Single Image

This repository contains the code for the following paper:

  • R. Hu, N. Ravi, A. Berg, D. Pathak, Worldsheet: Wrapping the World in a 3D Sheet for View Synthesis from a Single Image. in ICCV, 2021. (PDF)
@inproceedings{hu2021worldsheet,
  title={Worldsheet: Wrapping the World in a 3D Sheet for View Synthesis from a Single Image},
  author={Hu, Ronghang and Ravi, Nikhila and Berg, Alex and Pathak, Deepak},
  booktitle={Proceedings of the IEEE International Conference on Computer Vision (ICCV)},
  year={2021}
}

Project Page: https://worldsheet.github.io/

Installation

Our Worldsheet implementation is based on MMF and PyTorch3D. This repository is adapted from the MMF repository (https://github.com/facebookresearch/mmf).

This code is designed to be run on GPU, CPU training/inference is not supported.

  1. Create a new conda environment:
conda create -n worldsheet python=3.8
conda activate worldsheet
  1. Download this repository or clone with Git, and then enter the root directory of the repository git clone https://github.com/facebookresearch/worldsheet.git && cd worldsheet

  2. Install the MMF dependencies: pip install -r requirements.txt

  3. Install PyTorch3D as follows (we used v0.2.5):

# Install using conda
conda install -c pytorch3d pytorch3d=0.2.5

# Or install from GitHub directly
git clone https://github.com/facebookresearch/pytorch3d.git && cd pytorch3d
git checkout v0.2.5
rm -rf build/ **/*.so
FORCE_CUDA=1 pip install -e .
cd ..

# or pip install from github 
pip install "git+https://github.com/facebookresearch/[email protected]"
  1. Extra dependencies
pip install scikit-image

Train and evaluate on the Matterport3D and Replica datasets

In this work, we use the same Matterport3D and Replica datasets as in SynSin, based on the Habitat environment. In our codebase and config files, these two datasets are referred to as synsin_habitat (synsin_mp3d and synsin_replica) (note that here the synsin_ prefix only refers to the datasets used in SynSin; the underlying model being trained and evaluated is our Worldsheet model, not SynSin).

Extract the image frames

In our project, we extract those training, validation, and test image frames and camera matrices using the SynSin codebase for direct comparisons with SynSin and other previous work.

Please install our modified SynSin codebase from synsin_for_data_and_eval branch of this repository to extract the Matterport3D and Replica image frames:

git clone https://github.com/facebookresearch/worldsheet.git -b synsin_for_data_and_eval synsin && cd synsin

and install habitat-sim and habitat-api as additional SynSin dependencies following the official SynSin installation instructions. For convenience, we provide the corresponding versions of habitat-sim and habitat-api for SynSin in habitat-sim-for-synsin and habitat-sim-for-synsin branches of this repository.

After installing the SynSin codebase from synsin_for_data_and_eval branch, set up Matterport3D and Replica datasets following the instructions in the SynSin codebase, and run the following to save the image frames to disk (you can change MP3D_SAVE_IMAGE_DIR to a location on your machine).

# this is where Matterport3D and Replica image frames will be extracted
export MP3D_SAVE_IMAGE_DIR=/checkpoint/ronghanghu/neural_rendering_datasets

# clone the SynSin repo from `synsin_for_data_and_eval` branch
git clone https://github.com/facebookresearch/worldsheet.git -b synsin_for_data_and_eval ../synsin
cd ../synsin

# Matterport3D train
DEBUG="" python evaluation/dump_train_to_mmf.py \
     --result_folder ${MP3D_SAVE_IMAGE_DIR}/synsin_mp3d/train \
     --old_model modelcheckpoints/mp3d/synsin.pth \
     --batch_size 8 --num_workers 10  --images_before_reset 1000
# Matterport3D val
DEBUG="" python evaluation/dump_val_to_mmf.py \
     --result_folder ${MP3D_SAVE_IMAGE_DIR}/synsin_mp3d/val \
     --old_model modelcheckpoints/mp3d/synsin.pth \
     --batch_size 8 --num_workers 10  --images_before_reset 200
# Matterport3D test
DEBUG="" python evaluation/dump_test_to_mmf.py \
     --result_folder ${MP3D_SAVE_IMAGE_DIR}/synsin_mp3d/test \
     --old_model modelcheckpoints/mp3d/synsin.pth \
     --batch_size 8 --num_workers 10  --images_before_reset 200
# Replica test
DEBUG="" python evaluation/dump_test_to_mmf.py \
     --result_folder ${MP3D_SAVE_IMAGE_DIR}/synsin_replica/test \
     --old_model modelcheckpoints/mp3d/synsin.pth \
     --batch_size 8 --num_workers 10  --images_before_reset 200 \
     --dataset replica
# Matterport3D val with 20-degree angle change
DEBUG="" python evaluation/dump_val_to_mmf.py \
     --result_folder ${MP3D_SAVE_IMAGE_DIR}/synsin_mp3d/val_jitter_angle20 \
     --old_model modelcheckpoints/mp3d/synsin.pth \
     --batch_size 8 --num_workers 10 --images_before_reset 200 \
     --render_ids 0 --jitter_quaternions_angle 20
# Matterport3D test with 20-degree angle change
DEBUG="" python evaluation/dump_test_to_mmf.py \
     --result_folder ${MP3D_SAVE_IMAGE_DIR}/synsin_mp3d/test_jitter_angle20 \
     --old_model modelcheckpoints/mp3d/synsin.pth \
     --batch_size 8 --num_workers 10 --images_before_reset 200 \
     --render_ids 0 --jitter_quaternions_angle 20

cd ../worldsheet  # assuming `synsin` repo and `worldsheet` repo are under the same parent directory

Training

Run the following to perform training and evaluation. In our experiments, we use a single machine with 4 NVIDIA V100-32GB GPUs.

# set to the same path as in image frame extraction above
export MP3D_SAVE_IMAGE_DIR=/checkpoint/ronghanghu/neural_rendering_datasets

# train the scene mesh prediction in Worldsheet
./run_mp3d_and_replica/train_mp3d.sh mp3d_nodepth_perceptual_l1laplacian

# train the inpainter with frozen scene mesh prediction
./run_mp3d_and_replica/train_mp3d.sh mp3d_nodepth_perceptual_l1laplacian_inpaintGonly_freezemesh

Pretrained models

Instead of performing the training above, one can also directly download the pretrained models via

./run_mp3d_and_replica/download_pretrained_models.sh

and run the evaluation below.

Evaluation

The evaluation scripts below will print the performance (PSNR, SSIM, Perc-Sim) on different test data.

Evaluate on the default test sets with the same camera changes as the training data (Table 1):

# set to the same path as in image frame extraction above
export MP3D_SAVE_IMAGE_DIR=/checkpoint/ronghanghu/neural_rendering_datasets

# Matterport3D, without inpainter (Table 1 line 6)
./run_mp3d_and_replica/eval_mp3d_test_iter.sh mp3d_nodepth_perceptual_l1laplacian 40000

# Matterport3D, full model (Table 1 line 7)
./run_mp3d_and_replica/eval_mp3d_test_iter.sh mp3d_nodepth_perceptual_l1laplacian_inpaintGonly_freezemesh 40000

# Replica, full model (Table 1 line 7)
./run_mp3d_and_replica/eval_replica_test_iter.sh mp3d_nodepth_perceptual_l1laplacian_inpaintGonly_freezemesh 40000

Evaluate the full model on 2X camera changes (Table 2):

# set to the same path as in image frame extraction above
export MP3D_SAVE_IMAGE_DIR=/checkpoint/ronghanghu/neural_rendering_datasets

# Matterport3D, without inpainter (Table 2 line 4)
./run_mp3d_and_replica/eval_mp3d_test_jitter_angle20_iter.sh mp3d_nodepth_perceptual_l1laplacian 40000

# Matterport3D, full model (Table 2 line 5)
./run_mp3d_and_replica/eval_mp3d_test_jitter_angle20_iter.sh mp3d_nodepth_perceptual_l1laplacian_inpaintGonly_freezemesh 40000

# Replica, full model (Table 2 line 5)
./run_mp3d_and_replica/eval_replica_test_jitter_angle20_iter.sh mp3d_nodepth_perceptual_l1laplacian_inpaintGonly_freezemesh 40000

Visualization

One can visualize the model predictions using the script run_mp3d_and_replica/visualize_mp3d_val_iter.sh to visualize the Matterport3D validation set (and this script can be modified to visualize other splits). For example, run the following to visualize the predictions from the full model:

export MP3D_SAVE_IMAGE_DIR=/checkpoint/ronghanghu/neural_rendering_datasets

./run_mp3d_and_replica/visualize_mp3d_val_iter.sh mp3d_nodepth_perceptual_l1laplacian_inpaintGonly_freezemesh 40000

Then, you can inspect the predictions using the notebook run_mp3d_and_replica/visualize_predictions.ipynb.

Train and evaluate on the RealEstate10K dataset

In this work, we use the same RealEstate10K dataset as in SynSin.

Setting up the RealEstate10K dataset

Please set up the dataset following the instructions in SynSin. The scripts below assumes this dataset has been downloaded to /checkpoint/ronghanghu/neural_rendering_datasets/realestate10K/RealEstate10K/frames/. You can modify its path in mmf/configs/datasets/synsin_realestate10k/defaults.yaml.

Training

Run the following to perform the training and evaluation. In our experiments, we use a single machine with 4 NVIDIA V100-32GB GPUs.

# train 33x33 mesh
./run_realestate10k/train.sh realestate10k_dscale2_lowerL1_200

# initialize 65x65 mesh from trained 33x33 mesh
python ./run_realestate10k/init_65x65_from_33x33.py \
    --input ./save/synsin_realestate10k/realestate10k_dscale2_lowerL1_200/models/model_50000.ckpt \
    --output ./save/synsin_realestate10k/realestate10k_dscale2_stride4ft_lowerL1_200/init.ckpt

# train 65x65 mesh
./run_realestate10k/train.sh realestate10k_dscale2_stride4ft_lowerL1_200

Pretrained models

Instead of performing the training above, one can also directly download the pretrained models via

./run_realestate10k/download_pretrained_models.sh

and run the evaluation below.

Evaluation

Note: as mentioned in the paper, following the evaluation protocol of SynSin on RealEstate10K, the best metrics of two separate predictions based on each view were reported for single-view methods. We follow this evaluation protocol for consistency with SynSin on RealEstate10K in Table 3. We also report averaged metrics over all predictions in the supplemental.

The script below evaluates the performance on RealEstate10K with averaged metrics over all predictions, as reported in the supplemental Table C.1:

# Evaluate 33x33 mesh (Supplemental Table C.1 line 6)
./run_realestate10k/eval_test_iter.sh realestate10k_dscale2_lowerL1_200 50000

# Evaluate 65x65 mesh (Supplemental Table C.1 line 7)
./run_realestate10k/eval_test_iter.sh realestate10k_dscale2_stride4ft_lowerL1_200 50000

To evaluate with the SynSin protocol using the best metrics of two separate predictions as in Table 3, one needs to first save the predicted novel views as PNG files, and then use the SynSin codebase for evaluation. Please install our modified SynSin codebase from synsin_for_data_and_eval branch of this repository following the Matterport3D and Replica instructions above. Then evaluate as follows:

# Save prediction PNGs for 33x33 mesh
./run_realestate10k/write_pred_pngs_test_iter.sh realestate10k_dscale2_lowerL1_200 50000

# Save prediction PNGs for 65x65 mesh
./run_realestate10k/write_pred_pngs_test_iter.sh realestate10k_dscale2_stride4ft_lowerL1_200 50000

cd ../synsin  # assuming `synsin` repo and `worldsheet` repo under the same directory

# Evaluate 33x33 mesh (Table 3 line 9)
python evaluation/evaluate_realestate10k_all.py \
    --take_every_other \
    --folder ../worldsheet/save/prediction_synsin_realestate10k/realestate10k_dscale2_lowerL1_200/50000/realestate10k_test

# Evaluate 65x65 mesh (Table 3 line 10)
python evaluation/evaluate_realestate10k_all.py \
    --take_every_other \
    --folder ../worldsheet/save/prediction_synsin_realestate10k/realestate10k_dscale2_stride4ft_lowerL1_200/50000/realestate10k_test

(The --take_every_other flag above performs best-of-two-prediction evaluation; without this flag, it should give the average-over-all-prediction results as in Supplemental Table C.1.)

Visualization

One can visualize the model's predictions using the script run_realestate10k/eval_val_iter.sh for the RealEstate10K validation set (run_realestate10k/visualize_test_iter.sh for the test set). For example, run the following to visualize the predictions from the 65x65 mesh:

./run_realestate10k/visualize_val_iter.sh realestate10k_dscale2_stride4ft_lowerL1_200 50000

Then, you can inspect the predictions using notebook run_realestate10k/visualize_predictions.ipynb.

We also provide a notebook for interactive predictions in run_realestate10k/make_interactive_videos.ipynb, where one can walk through the scene and generate a continuous video of the predicted novel views.

Wrapping sheets with external depth prediction

In Sec. 4.3 of the paper, we test the limits of wrapping a mesh sheet over a large variety of images. We provide a notebook for this analysis in external_depth/make_interactive_videos_with_midas_depth.ipynb, where one can interactively generate a continuous video of the predicted novel views.

The structure of Worldsheet codebase

Worldsheet is implemented as a MMF model. This codebase largely follows the structure of typical MMF models and datasets.

The Worldsheet model is defined under the MMF model name mesh_renderer in the following files:

  • model definition: mmf/models/mesh_renderer.py
  • mesh and rendering utilities, losses, and metrics: mmf/neural_rendering/
  • config base: mmf/configs/models/mesh_renderer/defaults.yaml

The experimental config files for the Matterport and Replica experiments are in the following files:

  • Habitat dataset definition: mmf/datasets/builders/synsin_habitat/
  • Habitat dataset config base: mmf/configs/datasets/synsin_habitat/defaults.yaml
  • experimental configs: projects/neural_rendering/configs/synsin_habitat/

The experimental config files for the RealEstate10K experiments are in the following files:

  • RealEstate10K dataset definition: mmf/datasets/builders/synsin_realestate10k/
  • RealEstate10K dataset config base: mmf/configs/datasets/synsin_realestate10k/defaults.yaml
  • experimental configs: projects/neural_rendering/configs/synsin_realestate10k/

Acknowledgements

This repository is modified from the MMF library from Facebook AI Research. A large part of the codebase has been modified from the pix2pixHD codebase. Our PSNR, SSIM, and Perc-Sim evaluation scripts are modified from the SynSin codebase and we also use SynSin for image frame extraction on Matterport3D and Replica. A part of our differentiable rendering implementation is built upon the Softmax Splatting codebase. All appropriate licenses are included in the files in which the code is used.

Licence

Worldsheet is released under the BSD License.

Simple tools for logging and visualizing, loading and training

TNT TNT is a library providing powerful dataloading, logging and visualization utilities for Python. It is closely integrated with PyTorch and is desi

1.5k Jan 02, 2023
NAS-FCOS: Fast Neural Architecture Search for Object Detection (CVPR 2020)

NAS-FCOS: Fast Neural Architecture Search for Object Detection This project hosts the train and inference code with pretrained model for implementing

Ning Wang 180 Dec 06, 2022
PyBullet CartPole and Quadrotor environments—with CasADi symbolic a priori dynamics—for learning-based control and reinforcement learning

safe-control-gym Physics-based CartPole and Quadrotor Gym environments (using PyBullet) with symbolic a priori dynamics (using CasADi) for learning-ba

Dynamic Systems Lab 300 Dec 28, 2022
[IJCAI-2021] A benchmark of data-free knowledge distillation from paper "Contrastive Model Inversion for Data-Free Knowledge Distillation"

DataFree A benchmark of data-free knowledge distillation from paper "Contrastive Model Inversion for Data-Free Knowledge Distillation" Authors: Gongfa

ZJU-VIPA 47 Jan 09, 2023
[CVPR 2021] Counterfactual VQA: A Cause-Effect Look at Language Bias

Counterfactual VQA (CF-VQA) This repository is the Pytorch implementation of our paper "Counterfactual VQA: A Cause-Effect Look at Language Bias" in C

Yulei Niu 94 Dec 03, 2022
Open source person re-identification library in python

Open-ReID Open-ReID is a lightweight library of person re-identification for research purpose. It aims to provide a uniform interface for different da

Tong Xiao 1.3k Jan 01, 2023
(JMLR' 19) A Python Toolbox for Scalable Outlier Detection (Anomaly Detection)

Python Outlier Detection (PyOD) Deployment & Documentation & Stats & License PyOD is a comprehensive and scalable Python toolkit for detecting outlyin

Yue Zhao 6.6k Jan 05, 2023
This is the code for CVPR 2021 oral paper: Jigsaw Clustering for Unsupervised Visual Representation Learning

JigsawClustering Jigsaw Clustering for Unsupervised Visual Representation Learning Pengguang Chen, Shu Liu, Jiaya Jia Introduction This project provid

DV Lab 73 Sep 18, 2022
Differentiable Simulation of Soft Multi-body Systems

Differentiable Simulation of Soft Multi-body Systems Yi-Ling Qiao, Junbang Liang, Vladlen Koltun, Ming C. Lin [Paper] [Code] Updates The C++ backend s

YilingQiao 26 Dec 23, 2022
GBK-GNN: Gated Bi-Kernel Graph Neural Networks for Modeling Both Homophily and Heterophily

GBK-GNN: Gated Bi-Kernel Graph Neural Networks for Modeling Both Homophily and Heterophily Abstract Graph Neural Networks (GNNs) are widely used on a

10 Dec 20, 2022
MvtecAD unsupervised Anomaly Detection

MvtecAD unsupervised Anomaly Detection This respository is the unofficial implementations of DFR: Deep Feature Reconstruction for Unsupervised Anomaly

0 Feb 25, 2022
Lite-HRNet: A Lightweight High-Resolution Network

LiteHRNet Benchmark 🔥 🔥 Based on MMsegmentation 🔥 🔥 Cityscapes FCN resize concat config mIoU last mAcc last eval last mIoU best mAcc best eval bes

16 Dec 12, 2022
A short and easy PyTorch implementation of E(n) Equivariant Graph Neural Networks

Simple implementation of Equivariant GNN A short implementation of E(n) Equivariant Graph Neural Networks for HOMO energy prediction. Just 50 lines of

Arsenii Senya Ashukha 97 Dec 23, 2022
COVID-VIT: Classification of Covid-19 from CT chest images based on vision transformer models

COVID-ViT COVID-VIT: Classification of Covid-19 from CT chest images based on vision transformer models This code is to response to te MIA-COV19 compe

17 Dec 30, 2022
PyTorch code of "SLAPS: Self-Supervision Improves Structure Learning for Graph Neural Networks"

SLAPS-GNN This repo contains the implementation of the model proposed in SLAPS: Self-Supervision Improves Structure Learning for Graph Neural Networks

60 Dec 22, 2022
An official implementation of "Exploiting a Joint Embedding Space for Generalized Zero-Shot Semantic Segmentation" (ICCV 2021) in PyTorch.

Exploiting a Joint Embedding Space for Generalized Zero-Shot Semantic Segmentation This is an official implementation of the paper "Exploiting a Joint

CV Lab @ Yonsei University 35 Oct 26, 2022
Implicit Graph Neural Networks

Implicit Graph Neural Networks This repository is the official PyTorch implementation of "Implicit Graph Neural Networks". Fangda Gu*, Heng Chang*, We

Heng Chang 48 Nov 29, 2022
A fast implementation of bss_eval metrics for blind source separation

fast_bss_eval Do you have a zillion BSS audio files to process and it is taking days ? Is your simulation never ending ? Fear no more! fast_bss_eval i

Robin Scheibler 99 Dec 13, 2022
The Hailo Model Zoo includes pre-trained models and a full building and evaluation environment

Hailo Model Zoo The Hailo Model Zoo provides pre-trained models for high-performance deep learning applications. Using the Hailo Model Zoo you can mea

Hailo 50 Dec 07, 2022
PyTorch reimplementation of REALM and ORQA

PyTorch reimplementation of REALM and ORQA

Li-Huai (Allan) Lin 17 Aug 20, 2022