DiscoNet: Learning Distilled Collaboration Graph for Multi-Agent Perception [NeurIPS 2021]

Overview

DiscoNet: Learning Distilled Collaboration Graph for Multi-Agent Perception [NeurIPS 2021]

Yiming Li, Shunli Ren, Pengxiang Wu, Siheng Chen, Chen Feng, Wenjun Zhang

''Learn a digraph with matrix-valued edge weight for multi-agent perception.''

News

[2021-11] Our paper is availale on arxiv.

[2021-10] Our dataset V2X-Sim 1.0 is availale here.

[2021-09] 🔥 DiscoNet is accepted at NeurIPS 2021.

Abstract

To promote better performance-bandwidth trade-off for multi-agent perception, we propose a novel distilled collaboration graph (DiscoGraph) to model trainable, pose-aware, and adaptive collaboration among agents. Our key novelties lie in two aspects. First, we propose a teacher-student framework to train DiscoGraph via knowledge distillation. The teacher model employs an early collaboration with holistic-view inputs; the student model is based on intermediate collaboration with single-view inputs. Our framework trains DiscoGraph by constraining post-collaboration feature maps in the student model to match the correspondences in the teacher model. Second, we propose a matrix-valued edge weight in DiscoGraph. In such a matrix, each element reflects the inter-agent attention at a specific spatial region, allowing an agent to adaptively highlight the informative regions. During inference, we only need to use the student model named as the distilled collaboration network (DiscoNet). Attributed to the teacher-student framework, multiple agents with the shared DiscoNet could collaboratively approach the performance of a hypothetical teacher model with a holistic view. Our approach is validated on V2X-Sim 1.0, a large-scale multi-agent perception dataset that we synthesized using CARLA and SUMO co-simulation. Our quantitative and qualitative experiments in multi-agent 3D object detection show that DiscoNet could not only achieve a better performance-bandwidth trade-off than the state-of-the-art collaborative perception methods, but also bring more straightforward design rationale. Our code is available on https://github.com/ai4ce/DiscoNet.

Installation

Requirements

  • Linux (tested on Ubuntu 20.04)
  • Python 3.7
  • PyTorch 1.8.0
  • CUDA 11.2

Create Anaconda Environment

conda env create -f disco.yaml
conda activate disco

Dataset Preparation

Please download the training/val set V2X-Sim-1.0-trainval.

NOTICE: The training/val data generation script is currently not avaliable, you can either use the raw data on V2X-Sim 1.0 or the provided training/val set in your experiments. Please send us an access request with your affiliation and role, and we will grant the access.

Training Commands

python train_codet.py [--data PATH_TO_DATA] [--bound BOUND] [--com COM]
               [--batch BATCH] [--nepoch NEPOCH] [--lr LEARNING_RATE] 
               [--kd_flag KD_FLAG] [--resume_teacher PATH_TO_TRACHER_MODEL]
--bound BOUND       
                    Input data to the collaborative perception model. Options: "lowerbound" for 
                    no-collaboration or intermediate-collaboration, "upperbound" for early collaboration.
--com COM   
                    Intermediate collaboration strategy. Options: "disco" for our DiscoNet,
                    "v2v/when2com//sum/mean/max/cat/agent" for other methods, '' for early or no collaboration.
--data PATH_TO_DATA         
                    Set as YOUR_PATH_TO_DATASET/V2X-Sim-1.0-trainval/train
--kd_flag FLAG
                    Whether to use knowledge distillation. 1 for true and 0 for false.
--resume_teacher PATH_TO_TRACHER_MODEL 
                    The pretrained early-collaboration-based teacher model.

Evaluation Commands

python test_codet.py [--data PATH_TO_DATA] [--bound BOUND] [--com COM] [--resume PATH_TO_YOUR_MODEL]
--bound BOUND       
                    Input data to the collaborative perception model. Options: "lowerbound" for 
                    no-collaboration or intermediate-collaboration, "upperbound" for early collaboration.
--com COM   
                    Intermediate collaboration strategy. Options: "disco" for our DiscoNet,
                    "v2v/when2com//sum/mean/max/cat/agent" for other methods, '' for early or no collaboration.
--data PATH_TO_DATA         
                    Set as YOUR_PATH_TO_DATASET/V2X-Sim-1.0-trainval/test
--resume PATH_TO_YOUR_MODEL 
                    The trained model for evaluation.

The teacher model can be downloaded here, and our DiscoNet model can can be downloaded here.

Acknowledgment

This project is not possible without the following great codebases.

Citation

If you find V2X-Sim 1.0 or DiscoNet useful in your research, please cite our paper.

@InProceedings{Li_2021_NeurIPS,
    title = {Learning Distilled Collaboration Graph for Multi-Agent Perception},
    author = {Li, Yiming and Ren, Shunli and Wu, Pengxiang and Chen, Siheng and Feng, Chen and Zhang, Wenjun},
    booktitle = {Thirty-fifth Conference on Neural Information Processing Systems (NeurIPS 2021)},
    year = {2021}
}
Owner
Automation and Intelligence for Civil Engineering (AI4CE) Lab @ NYU
Automation and Intelligence for Civil Engineering (AI4CE) Lab @ NYU
Deep generative models of 3D grids for structure-based drug discovery

What is liGAN? liGAN is a research codebase for training and evaluating deep generative models for de novo drug design based on 3D atomic density grid

Matt Ragoza 152 Jan 03, 2023
[CVPR'22] COAP: Learning Compositional Occupancy of People

COAP: Compositional Articulated Occupancy of People Paper | Video | Project Page This is the official implementation of the CVPR 2022 paper COAP: Lear

Marko Mihajlovic 111 Dec 11, 2022
Read number plates with https://platerecognizer.com/

HASS-plate-recognizer Read vehicle license plates with https://platerecognizer.com/ which offers free processing of 2500 images per month. You will ne

Robin 69 Dec 30, 2022
Deep Learning (with PyTorch)

Deep Learning (with PyTorch) This notebook repository now has a companion website, where all the course material can be found in video and textual for

Alfredo Canziani 6.2k Jan 07, 2023
Measures input lag without dedicated hardware, performing motion detection on recorded or live video

What is InputLagTimer? This tool can measure input lag by analyzing a video where both the game controller and the game screen can be seen on a webcam

Bruno Gonzalez 4 Aug 18, 2022
Py4fi2nd - Jupyter Notebooks and code for Python for Finance (2nd ed., O'Reilly) by Yves Hilpisch.

Python for Finance (2nd ed., O'Reilly) This repository provides all Python codes and Jupyter Notebooks of the book Python for Finance -- Mastering Dat

Yves Hilpisch 1k Jan 05, 2023
基于tensorflow 2.x的图片识别工具集

Classification.tf2 基于tensorflow 2.x的图片识别工具集 功能 粗粒度场景图片分类 细粒度场景图片分类 其他场景图片分类 模型部署 tensorflow serving本地推理和docker部署 tensorRT onnx ... 数据集 https://hyper.a

Wei Qi 1 Nov 03, 2021
This tool uses Deep Learning to help you draw and write with your hand and webcam.

This tool uses Deep Learning to help you draw and write with your hand and webcam. A Deep Learning model is used to try to predict whether you want to have 'pencil up' or 'pencil down'.

lmagne 169 Dec 10, 2022
Official source code of paper 'IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo'

IterMVS official source code of paper 'IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo' Introduction IterMVS is a novel lear

Fangjinhua Wang 127 Jan 04, 2023
Crab is a flexible, fast recommender engine for Python that integrates classic information filtering recommendation algorithms in the world of scientific Python packages (numpy, scipy, matplotlib).

Crab - A Recommendation Engine library for Python Crab is a flexible, fast recommender engine for Python that integrates classic information filtering r

python-recsys 1.2k Dec 21, 2022
Pairwise model for commonlit competition

Pairwise model for commonlit competition To run: - install requirements - create input directory with train_folds.csv and other competition data - cd

abhishek thakur 45 Aug 31, 2022
FEMDA: Robust classification with Flexible Discriminant Analysis in heterogeneous data

FEMDA: Robust classification with Flexible Discriminant Analysis in heterogeneous data. Flexible EM-Inspired Discriminant Analysis is a robust supervised classification algorithm that performs well i

0 Sep 06, 2022
Official code of "R2RNet: Low-light Image Enhancement via Real-low to Real-normal Network."

R2RNet Official code of "R2RNet: Low-light Image Enhancement via Real-low to Real-normal Network." Jiang Hai, Zhu Xuan, Ren Yang, Yutong Hao, Fengzhu

77 Dec 24, 2022
Painting app using Python machine learning and vision technology.

AI Painting App We are making an app that will track our hand and helps us to draw from that. We will be using the advance knowledge of Machine Learni

Badsha Laskar 3 Oct 03, 2022
PyTorch implementation of "Learning to Discover Cross-Domain Relations with Generative Adversarial Networks"

DiscoGAN in PyTorch PyTorch implementation of Learning to Discover Cross-Domain Relations with Generative Adversarial Networks. * All samples in READM

Taehoon Kim 1k Jan 04, 2023
SelfRemaster: SSL Speech Restoration

SelfRemaster: Self-Supervised Speech Restoration Official implementation of SelfRemaster: Self-Supervised Speech Restoration with Analysis-by-Synthesi

Takaaki Saeki 46 Jan 07, 2023
Space-invaders - Simple Game created using Python & PyGame, as my Beginner Python Project

Space Invaders This is a simple SPACE INVADER game create using PYGAME whihc hav

Gaurav Pandey 2 Jan 08, 2022
EssentialMC2 Video Understanding

EssentialMC2 Introduction EssentialMC2 is a complete system to solve video understanding tasks including MHRL(representation learning), MECR2( relatio

Alibaba 106 Dec 11, 2022
Asterisk is a framework to generate high-quality training datasets at scale

Asterisk is a framework to generate high-quality training datasets at scale

Mona Nashaat 44 Apr 25, 2022
Dynamic View Synthesis from Dynamic Monocular Video

Dynamic View Synthesis from Dynamic Monocular Video Project Website | Video | Paper Dynamic View Synthesis from Dynamic Monocular Video Chen Gao, Ayus

Chen Gao 139 Dec 28, 2022