Pytorch implementation for "Density-aware Chamfer Distance as a Comprehensive Metric for Point Cloud Completion" (NeurIPS 2021)

Overview

Density-aware Chamfer Distance

This repository contains the official PyTorch implementation of our paper:

Density-aware Chamfer Distance as a Comprehensive Metric for Point Cloud Completion, NeurIPS 2021

Tong Wu, Liang Pan, Junzhe Zhang, Tai Wang, Ziwei Liu, Dahua Lin

avatar

We present a new point cloud similarity measure named Density-aware Chamfer Distance (DCD). It is derived from CD and benefits from several desirable properties: 1) it can detect disparity of density distributions and is thus a more intensive measure of similarity compared to CD; 2) it is stricter with detailed structures and significantly more computationally efficient than EMD; 3) the bounded value range encourages a more stable and reasonable evaluation over the whole test set. DCD can be used as both an evaluation metric and the training loss. We mainly validate its performance on point cloud completion in our paper.

This repository includes:

  • Implementation of Density-aware Chamfer Distance (DCD).
  • Implementation of our method for this task and the pre-trained model.

Installation

Requirements

  • PyTorch 1.2.0
  • Open3D 0.9.0
  • Other dependencies are listed in requirements.txt.

Install

Install PyTorch 1.2.0 first, and then get the other requirements by running the following command:

bash setup.sh

Dataset

We use the MVP Dataset. Please download the train set and test set and then modify the data path in data/mvp_new.py to the your own data location. Please refer to their codebase for further instructions.

Usage

Density-aware Chamfer Distance

The function for DCD calculation is defined in def calc_dcd() in utils/model_utils.py.

Users of higher PyTorch versions may try def calc_dcd() in utils_v2/model_utils.py, which has been tested on PyTorch 1.6.0 .

Model training and evaluation

  • To train a model: run python train.py ./cfgs/*.yaml, for example:
python train.py ./cfgs/vrc_plus.yaml
  • To test a model: run python train.py ./cfgs/*.yaml --test_only, for example:
python train.py ./cfgs/vrc_plus_eval.yaml --test_only
  • Config for each algorithm can be found in cfgs/.
  • run_train.sh and run_test.sh are provided for SLURM users.

We provide the following config files:

  • pcn.yaml: PCN trained with CD loss.
  • vrc.yaml: VRCNet trained with CD loss.
  • pcn_dcd.yaml: PCN trained with DCD loss.
  • vrc_dcd.yaml: VRCNet trained with DCD loss.
  • vrc_plus.yaml: training with our method.
  • vrc_plus_eval.yaml: evaluation of our method with guided down-sampling.

Attention: We empirically find that using DP or DDP for training would slightly hurt the performance. So training on multiple cards is not well supported currently.

Pre-trained models

We provide the pre-trained model that reproduce the results in our paper. Download and extract it to the ./log/pretrained/ directory, and then evaluate it with cfgs/vrc_plus_eval.yaml. The setting prob_sample: True turns on the guided down-sampling. We also provide the model for VRCNet trained with DCD loss here.

Citation

If you find our code or paper useful, please cite our paper:

@inproceedings{wu2021densityaware,
  title={Density-aware Chamfer Distance as a Comprehensive Metric for Point Cloud Completion},
  author={Tong Wu, Liang Pan, Junzhe Zhang, Tai WANG, Ziwei Liu, Dahua Lin},
  booktitle={In Advances in Neural Information Processing Systems (NeurIPS), 2021},
  year={2021}
}

Acknowledgement

The code is based on the VRCNet implementation. We include the following PyTorch 3rd-party libraries: ChamferDistancePytorch, emd, expansion_penalty, MDS, and Pointnet2.PyTorch. Thanks for these great projects.

Contact

Please contact @wutong16 for questions, comments and reporting bugs.

Owner
Tong WU
Tong WU
Adversarial examples to the new ConvNeXt architecture

Adversarial examples to the new ConvNeXt architecture To get adversarial examples to the ConvNeXt architecture, run the Colab: https://github.com/stan

Stanislav Fort 19 Sep 18, 2022
Object detection (YOLO) with pytorch, OpenCV and python

Real Time Object/Face Detection Using YOLO-v3 This project implements a real time object and face detection using YOLO algorithm. You only look once,

1 Aug 04, 2022
Tensorflow-Project-Template - A best practice for tensorflow project template architecture.

Tensorflow Project Template A simple and well designed structure is essential for any Deep Learning project, so after a lot of practice and contributi

Mahmoud G. Salem 3.6k Dec 22, 2022
An official PyTorch Implementation of Boundary-aware Self-supervised Learning for Video Scene Segmentation (BaSSL)

An official PyTorch Implementation of Boundary-aware Self-supervised Learning for Video Scene Segmentation (BaSSL)

Kakao Brain 72 Dec 28, 2022
Official PyTorch Implementation of paper EAN: Event Adaptive Network for Efficient Action Recognition

Official PyTorch Implementation of paper EAN: Event Adaptive Network for Efficient Action Recognition

TianYuan 27 Nov 07, 2022
SAAVN - Sound Adversarial Audio-Visual Navigation,ICLR2022 (In PyTorch)

SAAVN SAAVN Code release for paper "Sound Adversarial Audio-Visual Navigation,IC

YinfengYu 10 Aug 30, 2022
Robot Servers and Server Manager software for robo-gym

robo-gym-server-modules Robot Servers and Server Manager software for robo-gym. For info on how to use this package please visit the robo-gym website

JR ROBOTICS 4 Aug 16, 2021
Class-Balanced Loss Based on Effective Number of Samples. CVPR 2019

Class-Balanced Loss Based on Effective Number of Samples Tensorflow code for the paper: Class-Balanced Loss Based on Effective Number of Samples Yin C

Yin Cui 546 Jan 08, 2023
Hard cater examples from Hopper ICLR paper

CATER-h Honglu Zhou*, Asim Kadav, Farley Lai, Alexandru Niculescu-Mizil, Martin Renqiang Min, Mubbasir Kapadia, Hans Peter Graf (*Contact: honglu.zhou

NECLA ML Group 6 May 11, 2021
The source code for Generating Training Data with Language Models: Towards Zero-Shot Language Understanding.

SuperGen The source code for Generating Training Data with Language Models: Towards Zero-Shot Language Understanding. Requirements Before running, you

Yu Meng 38 Dec 12, 2022
3D cascade RCNN for object detection on point cloud

3D Cascade RCNN This is the implementation of 3D Cascade RCNN: High Quality Object Detection in Point Clouds. We designed a 3D object detection model

Qi Cai 22 Dec 02, 2022
This is a code repository for paper OODformer: Out-Of-Distribution Detection Transformer

OODformer: Out-Of-Distribution Detection Transformer This repo is the official the implementation of the OODformer: Out-Of-Distribution Detection Tran

34 Dec 02, 2022
This repository contains python code necessary to replicated the experiments performed in our paper "Invariant Ancestry Search"

InvariantAncestrySearch This repository contains python code necessary to replicated the experiments performed in our paper "Invariant Ancestry Search

Phillip Bredahl Mogensen 0 Feb 02, 2022
Balancing Principle for Unsupervised Domain Adaptation

Blancing Principle for Domain Adaptation NeurIPS 2021 Paper Abstract We address the unsolved algorithm design problem of choosing a justified regulari

Marius-Constantin Dinu 4 Dec 15, 2022
MohammadReza Sharifi 27 Dec 13, 2022
Generic image compressor for machine learning. Pytorch code for our paper "Lossy compression for lossless prediction".

Lossy Compression for Lossless Prediction Using: Training: This repostiory contains our implementation of the paper: Lossy Compression for Lossless Pr

Yann Dubois 84 Jan 02, 2023
Can we do Customers Segmentation using PHP and Unsupervized Machine Learning ? Yes we can ! 🤡

Customers Segmentation using PHP and Rubix ML PHP Library Can we do Customers Segmentation using PHP and Unsupervized Machine Learning ? Yes we can !

Mickaël Andrieu 11 Oct 08, 2022
structured-generative-modeling

This repository contains the implementation for the paper Information Theoretic StructuredGenerative Modeling, Specially thanks for the open-source co

0 Oct 11, 2021
B-cos Networks: Attention is All we Need for Interpretability

Convolutional Dynamic Alignment Networks for Interpretable Classifications M. Böhle, M. Fritz, B. Schiele. B-cos Networks: Alignment is All we Need fo

58 Dec 23, 2022
Flower - A Friendly Federated Learning Framework

Flower - A Friendly Federated Learning Framework Flower (flwr) is a framework for building federated learning systems. The design of Flower is based o

Adap 1.8k Jan 01, 2023