Geometry-Free View Synthesis: Transformers and no 3D Priors

Overview

Geometry-Free View Synthesis: Transformers and no 3D Priors

teaser

Geometry-Free View Synthesis: Transformers and no 3D Priors
Robin Rombach*, Patrick Esser*, Björn Ommer
* equal contribution

arXiv | BibTeX | Colab

Interactive Scene Exploration Results

RealEstate10K:
realestate
Videos: short (2min) / long (12min)

ACID:
acid
Videos: short (2min) / long (9min)

Demo

For a quickstart, you can try the Colab demo, but for a smoother experience we recommend installing the local demo as described below.

Installation

The demo requires building a PyTorch extension. If you have a sane development environment with PyTorch, g++ and nvcc, you can simply

pip install git+https://github.com/CompVis/geometry-free-view-synthesis#egg=geometry-free-view-synthesis

If you run into problems and have a GPU with compute capability below 8, you can also use the provided conda environment:

git clone https://github.com/CompVis/geometry-free-view-synthesis
conda env create -f geometry-free-view-synthesis/environment.yaml
conda activate geofree
pip install geometry-free-view-synthesis/

Running

After installation, running

braindance.py

will start the demo on a sample scene. Explore the scene interactively using the WASD keys to move and arrow keys to look around. Once positioned, hit the space bar to render the novel view with GeoGPT.

You can move again with WASD keys. Mouse control can be activated with the m key. Run braindance.py to run the demo on your own images. By default, it uses the re-impl-nodepth (trained on RealEstate without explicit transformation and no depth input) which can be changed with the --model flag. The corresponding checkpoints will be downloaded the first time they are required. Specify an output path using --video path/to/vid.mp4 to record a video.

> braindance.py -h
usage: braindance.py [-h] [--model {re_impl_nodepth,re_impl_depth,ac_impl_nodepth,ac_impl_depth}] [--video [VIDEO]] [path]

What's up, BD-maniacs?

key(s)       action                  
=====================================
wasd         move around             
arrows       look around             
m            enable looking with mouse
space        render with transformer 
q            quit                    

positional arguments:
  path                  path to image or directory from which to select image. Default example is used if not specified.

optional arguments:
  -h, --help            show this help message and exit
  --model {re_impl_nodepth,re_impl_depth,ac_impl_nodepth,ac_impl_depth}
                        pretrained model to use.
  --video [VIDEO]       path to write video recording to. (no recording if unspecified).

Training

Data Preparation

We support training on RealEstate10K and ACID. Both come in the same format as described here and the preparation is the same for both of them. You will need to have colmap installed and available on your $PATH.

We assume that you have extracted the .txt files of the dataset you want to prepare into $TXT_ROOT, e.g. for RealEstate:

> tree $TXT_ROOT
├── test
│   ├── 000c3ab189999a83.txt
│   ├── ...
│   └── fff9864727c42c80.txt
└── train
    ├── 0000cc6d8b108390.txt
    ├── ...
    └── ffffe622a4de5489.txt

and that you have downloaded the frames (we downloaded them in resolution 640 x 360) into $IMG_ROOT, e.g. for RealEstate:

> tree $IMG_ROOT
├── test
│   ├── 000c3ab189999a83
│   │   ├── 45979267.png
│   │   ├── ...
│   │   └── 55255200.png
│   ├── ...
│   ├── 0017ce4c6a39d122
│   │   ├── 40874000.png
│   │   ├── ...
│   │   └── 48482000.png
├── train
│   ├── ...

To prepare the $SPLIT split of the dataset ($SPLIT being one of train, test for RealEstate and train, test, validation for ACID) in $SPA_ROOT, run the following within the scripts directory:

python sparse_from_realestate_format.py --txt_src ${TXT_ROOT}/${SPLIT} --img_src ${IMG_ROOT}/${SPLIT} --spa_dst ${SPA_ROOT}/${SPLIT}

You can also simply set TXT_ROOT, IMG_ROOT and SPA_ROOT as environment variables and run ./sparsify_realestate.sh or ./sparsify_acid.sh. Take a look into the sources to run with multiple workers in parallel.

Finally, symlink $SPA_ROOT to data/realestate_sparse/data/acid_sparse.

First Stage Models

As described in our paper, we train the transformer models in a compressed, discrete latent space of pretrained VQGANs. These pretrained models can be conveniently downloaded by running

python scripts/download_vqmodels.py 

which will also create symlinks ensuring that the paths specified in the training configs (see configs/*) exist. In case some of the models have already been downloaded, the script will only create the symlinks.

For training custom first stage models, we refer to the taming transformers repository.

Running the Training

After both the preparation of the data and the first stage models are done, the experiments on ACID and RealEstate10K as described in our paper can be reproduced by running

python geofree/main.py --base configs//_13x23_.yaml -t --gpus 0,

where is one of realestate/acid and is one of expl_img/expl_feat/expl_emb/impl_catdepth/impl_depth/impl_nodepth/hybrid. These abbreviations correspond to the experiments listed in the following Table (see also Fig.2 in the main paper)

variants

Note that each experiment was conducted on a GPU with 40 GB VRAM.

BibTeX

@misc{rombach2021geometryfree,
      title={Geometry-Free View Synthesis: Transformers and no 3D Priors}, 
      author={Robin Rombach and Patrick Esser and Björn Ommer},
      year={2021},
      eprint={2104.07652},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}
Owner
CompVis Heidelberg
Computer Vision research group at the Ruprecht-Karls-University Heidelberg
CompVis Heidelberg
Official Pytorch Implementation of: "Semantic Diversity Learning for Zero-Shot Multi-label Classification"(2021) paper

Semantic Diversity Learning for Zero-Shot Multi-label Classification Paper Official PyTorch Implementation Avi Ben-Cohen, Nadav Zamir, Emanuel Ben Bar

28 Aug 29, 2022
Deep Probabilistic Programming Course @ DIKU

Deep Probabilistic Programming Course @ DIKU

52 May 14, 2022
SwinIR: Image Restoration Using Swin Transformer

SwinIR: Image Restoration Using Swin Transformer This repository is the official PyTorch implementation of SwinIR: Image Restoration Using Shifted Win

Jingyun Liang 2.4k Jan 05, 2023
Official Tensorflow implementation of "M-LSD: Towards Light-weight and Real-time Line Segment Detection"

M-LSD: Towards Light-weight and Real-time Line Segment Detection Official Tensorflow implementation of "M-LSD: Towards Light-weight and Real-time Line

NAVER/LINE Vision 357 Jan 04, 2023
Realtime Face Anti Spoofing with Face Detector based on Deep Learning using Tensorflow/Keras and OpenCV

Realtime Face Anti-Spoofing Detection 🤖 Realtime Face Anti Spoofing Detection with Face Detector to detect real and fake faces Please star this repo

Prem Kumar 86 Aug 03, 2022
Code for the Shortformer model, from the paper by Ofir Press, Noah A. Smith and Mike Lewis.

Shortformer This repository contains the code and the final checkpoint of the Shortformer model. This file explains how to run our experiments on the

Ofir Press 138 Apr 15, 2022
The code of NeurIPS 2021 paper "Scalable Rule-Based Representation Learning for Interpretable Classification".

Rule-based Representation Learner This is a PyTorch implementation of Rule-based Representation Learner (RRL) as described in NeurIPS 2021 paper: Scal

Zhuo Wang 53 Dec 17, 2022
ConformalLayers: A non-linear sequential neural network with associative layers

ConformalLayers: A non-linear sequential neural network with associative layers ConformalLayers is a conformal embedding of sequential layers of Convo

Prograf-UFF 5 Sep 28, 2022
The all new way to turn your boring vector meshes into the new fad in town; Voxels!

Voxelator The all new way to turn your boring vector meshes into the new fad in town; Voxels! Notes: I have not tested this on a rotated mesh. With fu

6 Feb 03, 2022
Arquitetura e Desenho de Software.

S203 Este é um repositório dedicado às aulas de Arquitetura e Desenho de Software, cuja sigla é "S203". E agora, José? Como não tenho muito a falar aq

Fabio 7 Oct 23, 2021
It is a simple library to speed up CLIP inference up to 3x (K80 GPU)

CLIP-ONNX It is a simple library to speed up CLIP inference up to 3x (K80 GPU) Usage Install clip-onnx module and requirements first. Use this trick !

Gerasimov Maxim 93 Dec 20, 2022
PenguinSpeciesPredictionML - Basic model to predict Penguin species based on beak size and sex.

Penguin Species Prediction (ML) 🐧 👨🏽‍💻 What? 💻 This project is a basic model using sklearn methods to predict Penguin species based on beak size

Tucker Paron 0 Jan 08, 2022
Information-Theoretic Multi-Objective Bayesian Optimization with Continuous Approximations

Information-Theoretic Multi-Objective Bayesian Optimization with Continuous Approximations Requirements The code is implemented in Python and requires

1 Nov 03, 2021
EGNN - Implementation of E(n)-Equivariant Graph Neural Networks, in Pytorch

EGNN - Pytorch Implementation of E(n)-Equivariant Graph Neural Networks, in Pytorch. May be eventually used for Alphafold2 replication. This

Phil Wang 259 Jan 04, 2023
[CVPR 2021] MiVOS - Mask Propagation module. Reproduced STM (and better) with training code :star2:. Semi-supervised video object segmentation evaluation.

MiVOS (CVPR 2021) - Mask Propagation Ho Kei Cheng, Yu-Wing Tai, Chi-Keung Tang [arXiv] [Paper PDF] [Project Page] [Papers with Code] This repo impleme

Rex Cheng 106 Jan 03, 2023
KIDA: Knowledge Inheritance in Data Aggregation

KIDA: Knowledge Inheritance in Data Aggregation This project releases our 1st place solution on NeurIPS2021 ML4CO Dual Task. Slide and model weights a

24 Sep 08, 2022
CMUA-Watermark: A Cross-Model Universal Adversarial Watermark for Combating Deepfakes (AAAI2022)

CMUA-Watermark The official code for CMUA-Watermark: A Cross-Model Universal Adversarial Watermark for Combating Deepfakes (AAAI2022) arxiv. It is bas

50 Nov 26, 2022
Companion repo of the UCC 2021 paper "Predictive Auto-scaling with OpenStack Monasca"

Predictive Auto-scaling with OpenStack Monasca Giacomo Lanciano*, Filippo Galli, Tommaso Cucinotta, Davide Bacciu, Andrea Passarella 2021 IEEE/ACM 14t

Giacomo Lanciano 0 Dec 07, 2022
Fully convolutional networks for semantic segmentation

FCN-semantic-segmentation Simple end-to-end semantic segmentation using fully convolutional networks [1]. Takes a pretrained 34-layer ResNet [2], remo

Kai Arulkumaran 186 Dec 25, 2022
[NeurIPS 2021] Galerkin Transformer: a linear attention without softmax

[NeurIPS 2021] Galerkin Transformer: linear attention without softmax Summary A non-numerical analyst oriented explanation on Toward Data Science abou

Shuhao Cao 159 Dec 20, 2022