Neural Scene Graphs for Dynamic Scene (CVPR 2021)

Overview

Neural Scene Graphs for Dynamic Scene (CVPR 2021)

alt text

Project Page | Paper

Julian Ost, Fahim Mannan, Nils Thuerey, Julian Knodt, Felix Heide

Implementation of Neural Scene Graphs, that optimizes multiple radiance fields to represent different objects and a static scene background. Learned representations can be rendered with novel object compositions and views.

Original repository forked from the Implementation of "NeRF: Neural Radiance Fields" by Mildenhall et al.: Original NeRF Implementation, original readme


Getting started

The whole script is currently optimized for the usage with Virtual KITTI 2 Dataset and KITTI

Quick Start

Train a Virtual KITTI 2 Scene

conda create -n neural_scene_graphs --file requirements.txt -c conda-forge -c menpo
conda activate neural_scene_graphs
cd neural-scene-graphs
bash download_virtual_kitti.sh
python main.py --config example_configs/config_vkitti2_Scene06.py
tensorboard --logdir=example_weights/summaries --port=6006

Render a pretrained KITTI Scene from a trained Scene Graph Models

Follow the instructions under data preparation to setup the KITTI dataset.

conda create -n neural_scene_graphs --file requirements.txt -c conda-forge -c menpo
conda activate neural_scene_graphs
cd neural-scene-graphs
bash download_weights_kitti.sh
python main.py --config example_configs/config_kitti_0006_example_render.py
tensorboard --logdir=example_weights/summaries --port=6006

Disclaimer: The codebase is optimized to run on larger GPU servers with a lot of free CPU memory. To test on local and low memory,

  1. Use chunk and netchunk in the config files to limit parallel computed rays and sampling points.

or

  1. resize and retrain with
--training_factor = 'downsampling factor'

or change to the desired factor in your config file.


Data Preperation

KITTI

  1. Get the KITTI MOT dataset, from which you need:
    1. Left color images
    2. Right color images
    3. GPS/IMU data
    4. Camera Calibration Files
    5. Training labels
  2. Extract everything to ./data/kitti and keep the data structure
  3. Neural Scene Graphs is well tested and published on real front-facing scenarios with only small movements along the camera viewing direction. We therefore prepared selected config files for KITTI Scenes (0001, 0002, 0006)

Virtual KITTI 2

bash ./download_virtual_kitti.sh

Training

To optimize models on a subsequence of Virtual KITTI 2 or KITTI, create the environment, download the data set (1.2) and optimize the (pre-trained) background and object models together:

conda create -n neural_scene_graphs --file requirements.txt -c conda-forge -c menpo
conda activate neural_scene_graphs

vkitti2 example:

python main.py --config example_configs/config_vkitti2_Scene06.txt
tensorboard --logdir=example_weights/summaries --port=6006

KITTI example:

python main.py --config example_configs/config_kitti_0006_example_train.txt
tensorboard --logdir=example_weights/summaries --port=6006

Rendering a Sequence

Render a pretrained KITTI sequence

bash download_weights_kitti.sh
python main.py --config example_configs/config_kitti_0006_example_render.txt

To render a pre-trained download the weights or use your own model.

bash download_weights_kitti.sh

To make a full render pass over all selected images (between the first and last frame) run the provided config with 'render_only=True'.

  • To render only the outputs of the static background node use 'bckg_only=True'
  • for all dynamic parts set 'obj_only=True' & 'white_bkgd=True'
python main.py --config example_configs/config_kitti_0006_example_render.txt

Citation

@InProceedings{Ost_2021_CVPR,
    author    = {Ost, Julian and Mannan, Fahim and Thuerey, Nils and Knodt, Julian and Heide, Felix},
    title     = {Neural Scene Graphs for Dynamic Scenes},
    booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
    month     = {June},
    year      = {2021},
    pages     = {2856-2865}
}
PyTorch module to use OpenFace's nn4.small2.v1.t7 model

OpenFace for Pytorch Disclaimer: This codes require the input face-images that are aligned and cropped in the same way of the original OpenFace. * I m

Pete Tae-hoon Kim 176 Dec 12, 2022
Automatic differentiation with weighted finite-state transducers.

GTN: Automatic Differentiation with WFSTs Quickstart | Installation | Documentation What is GTN? GTN is a framework for automatic differentiation with

100 Dec 29, 2022
Network Compression via Central Filter

Network Compression via Central Filter Environments The code has been tested in the following environments: Python 3.8 PyTorch 1.8.1 cuda 10.2 torchsu

2 May 12, 2022
MazeRL is an application oriented Deep Reinforcement Learning (RL) framework

MazeRL is an application oriented Deep Reinforcement Learning (RL) framework, addressing real-world decision problems. Our vision is to cover the complete development life cycle of RL applications ra

EnliteAI GmbH 222 Dec 24, 2022
ProjectOxford-ClientSDK - This repo has moved :house: Visit our website for the latest SDKs & Samples

This project has moved 🏠 We heard your feedback! This repo has been deprecated and each project has moved to a new home in a repo scoped by API and p

Microsoft 970 Nov 28, 2022
StudioGAN is a Pytorch library providing implementations of representative Generative Adversarial Networks (GANs) for conditional/unconditional image generation.

StudioGAN is a Pytorch library providing implementations of representative Generative Adversarial Networks (GANs) for conditional/unconditional image generation.

3k Jan 08, 2023
Expand human face editing via Global Direction of StyleCLIP, especially to maintain similarity during editing.

Oh-My-Face This project is based on StyleCLIP, RIFE, and encoder4editing, which aims to expand human face editing via Global Direction of StyleCLIP, e

AiLin Huang 51 Nov 17, 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
null

DeformingThings4D dataset Video | Paper DeformingThings4D is an synthetic dataset containing 1,972 animation sequences spanning 31 categories of human

208 Jan 03, 2023
A universal memory dumper using Frida

Fridump Fridump (v0.1) is an open source memory dumping tool, primarily aimed to penetration testers and developers. Fridump is using the Frida framew

551 Jan 07, 2023
Codes for our paper "SentiLARE: Sentiment-Aware Language Representation Learning with Linguistic Knowledge" (EMNLP 2020)

SentiLARE: Sentiment-Aware Language Representation Learning with Linguistic Knowledge Introduction SentiLARE is a sentiment-aware pre-trained language

74 Dec 30, 2022
Neural Point-Based Graphics

Neural Point-Based Graphics Project   Video   Paper Neural Point-Based Graphics Kara-Ali Aliev1 Artem Sevastopolsky1,2 Maria Kolos1,2 Dmitry Ulyanov3

Ali Aliev 252 Dec 13, 2022
Diagnostic tests for linguistic capacities in language models

LM diagnostics This repository contains the diagnostic datasets and experimental code for What BERT is not: Lessons from a new suite of psycholinguist

61 Jan 02, 2023
All materials of Cassandra Event, Udyam'22

Cassandra 2022 Workspace Workshop Materials Workshop-1 Workshop-2 Workshop-3 Workshop-4 Assignments Assignment-1 Assignment-2 Assignment-3 Resources P

36 Dec 31, 2022
MTCNN face detection implementation for TensorFlow, as a PIP package.

MTCNN Implementation of the MTCNN face detector for Keras in Python3.4+. It is written from scratch, using as a reference the implementation of MTCNN

Iván de Paz Centeno 1.9k Dec 30, 2022
Revealing and Protecting Labels in Distributed Training

Revealing and Protecting Labels in Distributed Training

Google Interns 0 Nov 09, 2022
Official PyTorch implementation of the ICRA 2021 paper: Adversarial Differentiable Data Augmentation for Autonomous Systems.

Adversarial Differentiable Data Augmentation This repository provides the official PyTorch implementation of the ICRA 2021 paper: Adversarial Differen

Manli 3 Oct 15, 2022
PyTorch implementation of MSBG hearing loss model and MBSTOI intelligibility metric

PyTorch implementation of MSBG hearing loss model and MBSTOI intelligibility metric This repository contains the implementation of MSBG hearing loss m

BUT <a href=[email protected]"> 9 Nov 08, 2022
TyXe: Pyro-based BNNs for Pytorch users

TyXe: Pyro-based BNNs for Pytorch users TyXe aims to simplify the process of turning Pytorch neural networks into Bayesian neural networks by leveragi

87 Jan 03, 2023
Human pose estimation from video plays a critical role in various applications such as quantifying physical exercises, sign language recognition, and full-body gesture control.

Pose Detection Project Description: Human pose estimation from video plays a critical role in various applications such as quantifying physical exerci

Hassan Shahzad 2 Jan 17, 2022