Weakly Supervised Learning of Rigid 3D Scene Flow

Overview

Weakly Supervised Learning of Rigid 3D Scene Flow

This repository provides code and data to train and evaluate a weakly supervised method for rigid 3D scene flow estimation. It represents the official implementation of the paper:

Weakly Supervised Learning of Rigid 3D Scene Flow

Zan Gojcic, Or Litany, Andreas Wieser, Leonidas J. Guibas, Tolga Birdal
| IGP ETH Zurich | Nvidia Toronto AI Lab | Guibas Lab Stanford University |

For more information, please see the project webpage

WSR3DSF

Environment Setup

Note: the code in this repo has been tested on Ubuntu 16.04/20.04 with Python 3.7, CUDA 10.1/10.2, PyTorch 1.7.1 and MinkowskiEngine 0.5.1. It may work for other setups, but has not been tested.

Before proceding, make sure CUDA is installed and set up correctly.

After cloning this reposiory you can proceed by setting up and activating a virual environment with Python 3.7. If you are using a different version of cuda (10.1) change the pytorch installation instruction accordingly.

export CXX=g++-7
conda config --append channels conda-forge
conda create --name rigid_3dsf python=3.7
source activate rigid_3dsf
conda install --file requirements.txt
conda install -c open3d-admin open3d=0.9.0.0
conda install -c intel scikit-learn
conda install pytorch==1.7.1 torchvision cudatoolkit=10.1 -c pytorch

You can then proceed and install MinkowskiEngine library for sparse tensors:

pip install -U git+https://github.com/NVIDIA/MinkowskiEngine -v --no-deps

Our repository also includes a pytorch implementation of Chamfer Distance in ./utils/chamfer_distance which will be compiled on the first run.

In order to test if Pytorch and MinkwoskiEngine are installed correctly please run

python -c "import torch, MinkowskiEngine"

which should run without an error message.

Data

We provide the preprocessed data of flying_things_3d (108GB), stereo_kitti (500MB), lidar_kitti (~160MB), semantic_kitti (78GB), and waymo_open (50GB) used for training and evaluating our model.

To download a single dataset please run:

bash ./scripts/download_data.sh name_of_the_dataset

To download all datasets simply run:

bash ./scripts/download_data.sh

The data will be downloaded and extracted to ./data/name_of_the_dataset/.

Pretrained models

We provide the checkpoints of the models trained on flying_things_3d or semantic_kitti, which we use in our main evaluations.

To download these models please run:

bash ./scripts/download_pretrained_models.sh

Additionally, we provide all the models used in the ablation studies and the model fine tuned on waymo_open.

To download these models please run:

bash ./scripts/download_pretrained_models_ablations.sh

All the models will be downloaded and extracted to ./logs/dataset_used_for_training/.

Evaluation with pretrained models

Our method with pretrained weights can be evaluated using the ./eval.py script. The configuration parameters of the evaluation can be set with the *.yaml configuration files located in ./configs/eval/. We provide a configuration file for each dataset used in our paper. For all evaluations please first download the pretrained weights and the corresponding data. Note, if the data or pretrained models are saved to a non-default path the config files also has to be adapted accordingly.

FlyingThings3D

To evaluate our backbone + scene flow head on FlyingThings3d please run:

python eval.py ./configs/eval/eval_flying_things_3d.yaml

This should recreate the results from the Table 1 of our paper (EPE3D: 0.052 m).

stereoKITTI

To evaluate our backbone + scene flow head on stereoKITTI please run:

python eval.py ./configs/eval/eval_stereo_kitti.yaml

This should again recreate the results from the Table 1 of our paper (EPE3D: 0.042 m).

lidarKITTI

To evaluate our full weakly supervised method on lidarKITTI please run:

python eval.py ./configs/eval/eval_lidar_kitti.yaml

This should recreate the results for Ours++ on lidarKITTI (w/o ground) from the Table 2 of our paper (EPE3D: 0.094 m). To recreate other results on lidarKITTI please change the ./configs/eval/eval_lidar_kitti.yaml file accordingly.

semanticKITTI

To evaluate our full weakly supervised method on semanticKITTI please run:

python eval.py ./configs/eval/eval_semantic_kitti.yaml

This should recreate the results of our full model on semanticKITTI (w/o ground) from the Table 4 of our paper. To recreate other results on semanticKITTI please change the ./configs/eval/eval_semantic_kitti.yaml file accordingly.

waymo open

To evaluate our fine-tuned model on waymo open please run:

python eval.py ./configs/eval/eval_waymo_open.yaml

This should recreate the results for Ours++ (fine-tuned) from the Table 9 of the appendix. To recreate other results on waymo open please change the ./configs/eval/eval_waymo_open.yaml file accordingly.

Training our method from scratch

Our method can be trained using the ./train.py script. The configuration parameters of the training process can be set using the config files located in ./configs/train/.

Training our backbone with full supervision on FlyingThings3D

To train our backbone network and scene flow head under full supervision (corresponds to Sec. 4.3 of our paper) please run:

python train.py ./configs/train/train_fully_supervised.yaml

The checkpoints and tensorboard data will be saved to ./logs/logs_FlyingThings3D_ME. If you run out of GPU memory with the default setting please adapt the batch_size and acc_iter_size in the ./configs/default.yaml to e.g. 4 and 2, respectively.

Training under weak supervision on semanticKITTI

To train our full method under weak supervision on semanticKITTI please run

python train.py ./configs/train/train_weakly_supervised.yaml

The checkpoints and tensorboard data will be saved to ./logs/logs_SemanticKITTI_ME. If you run out of GPU memory with the default setting please adapt the batch_size and acc_iter_size in the ./configs/default.yaml to e.g. 4 and 2, respectively.

Citation

If you found this code or paper useful, please consider citing:

@misc{gojcic2021weakly3dsf,
        title = {Weakly {S}upervised {L}earning of {R}igid {3D} {S}cene {F}low}, 
        author = {Gojcic, Zan and Litany, Or and Wieser, Andreas and Guibas, Leonidas J and Birdal, Tolga},
        year = {2021},
        eprint={2102.08945},
        archivePrefix={arXiv},
        primaryClass={cs.CV}
        }

Contact

If you run into any problems or have questions, please create an issue or contact Zan Gojcic.

Acknowledgments

In this project we use parts of the official implementations of:

We thank the respective authors for open sourcing their methods.

Owner
Zan Gojcic
Zan Gojcic
This package proposes simplified exporting pytorch models to ONNX and TensorRT, and also gives some base interface for model inference.

PyTorch Infer Utils This package proposes simplified exporting pytorch models to ONNX and TensorRT, and also gives some base interface for model infer

Alex Gorodnitskiy 11 Mar 20, 2022
Composing methods for ML training efficiency

MosaicML Composer contains a library of methods, and ways to compose them together for more efficient ML training.

MosaicML 2.8k Jan 08, 2023
使用深度学习框架提取视频硬字幕;docker容器免安装深度学习库,使用本地api接口使得界面和后端识别分离;

extract-video-subtittle 使用深度学习框架提取视频硬字幕; 本地识别无需联网; CPU识别速度可观; 容器提供API接口; 运行环境 本项目运行环境非常好搭建,我做好了docker容器免安装各种深度学习包; 提供windows界面操作; 容器为CPU版本; 视频演示 https

歌者 16 Aug 06, 2022
The pytorch implementation of DG-Font: Deformable Generative Networks for Unsupervised Font Generation

DG-Font: Deformable Generative Networks for Unsupervised Font Generation The source code for 'DG-Font: Deformable Generative Networks for Unsupervised

130 Dec 05, 2022
Notebook and code to synthesize complex and highly dimensional datasets using Gretel APIs.

Gretel Trainer This code is designed to help users successfully train synthetic models on complex datasets with high row and column counts. The code w

Gretel.ai 24 Nov 03, 2022
Learning nonlinear operators via DeepONet

DeepONet: Learning nonlinear operators The source code for the paper Learning nonlinear operators via DeepONet based on the universal approximation th

Lu Lu 239 Jan 02, 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
The PyTorch implementation for paper "Neural Texture Extraction and Distribution for Controllable Person Image Synthesis" (CVPR2022 Oral)

ArXiv | Get Start Neural-Texture-Extraction-Distribution The PyTorch implementation for our paper "Neural Texture Extraction and Distribution for Cont

Ren Yurui 111 Dec 10, 2022
Few-Shot Object Detection via Association and DIscrimination

Few-Shot Object Detection via Association and DIscrimination Code release of our NeurIPS 2021 paper: Few-Shot Object Detection via Association and DIs

Cao Yuhang 49 Dec 18, 2022
(CVPR 2022) Energy-based Latent Aligner for Incremental Learning

Energy-based Latent Aligner for Incremental Learning Accepted to CVPR 2022 We illustrate an Incremental Learning model trained on a continuum of tasks

Joseph K J 37 Jan 03, 2023
Train Scene Graph Generation for Visual Genome and GQA in PyTorch >= 1.2 with improved zero and few-shot generalization.

Scene Graph Generation Object Detections Ground truth Scene Graph Generated Scene Graph In this visualization, woman sitting on rock is a zero-shot tr

Boris Knyazev 93 Dec 28, 2022
An adaptive hierarchical energy management strategy for hybrid electric vehicles

An adaptive hierarchical energy management strategy This project contains the source code of an adaptive hierarchical EMS combining heuristic equivale

19 Dec 13, 2022
This is the repository for paper NEEDLE: Towards Non-invertible Backdoor Attack to Deep Learning Models.

This is the repository for paper NEEDLE: Towards Non-invertible Backdoor Attack to Deep Learning Models.

1 Oct 25, 2021
Neural Fixed-Point Acceleration for Convex Optimization

Licensing The majority of neural-scs is licensed under the CC BY-NC 4.0 License, however, portions of the project are available under separate license

Facebook Research 27 Oct 06, 2022
HDR Video Reconstruction: A Coarse-to-fine Network and A Real-world Benchmark Dataset (ICCV 2021)

Code for HDR Video Reconstruction HDR Video Reconstruction: A Coarse-to-fine Network and A Real-world Benchmark Dataset (ICCV 2021) Guanying Chen, Cha

Guanying Chen 64 Nov 19, 2022
A PyTorch implementation of Mugs proposed by our paper "Mugs: A Multi-Granular Self-Supervised Learning Framework".

Mugs: A Multi-Granular Self-Supervised Learning Framework This is a PyTorch implementation of Mugs proposed by our paper "Mugs: A Multi-Granular Self-

Sea AI Lab 62 Nov 08, 2022
Cookiecutter PyTorch Lightning

Cookiecutter PyTorch Lightning Instructions # install cookiecutter pip install cookiecutter

Mazen 8 Nov 06, 2022
PyTea: PyTorch Tensor shape error analyzer

PyTea: PyTorch Tensor Shape Error Analyzer paper project page Requirements node.js = 12.x python = 3.8 z3-solver = 4.8 How to install and use # ins

ROPAS Lab. 240 Jan 02, 2023
Parsing, analyzing, and comparing source code across many languages

Semantic semantic is a Haskell library and command line tool for parsing, analyzing, and comparing source code. In a hurry? Check out our documentatio

GitHub 8.6k Dec 28, 2022
Simple tutorials using Google's TensorFlow Framework

TensorFlow-Tutorials Introduction to deep learning based on Google's TensorFlow framework. These tutorials are direct ports of Newmu's Theano Tutorial

Nathan Lintz 6k Jan 06, 2023