Skip to content

ELECTRICITY: An Efficient Multi-camera Vehicle Tracking System for Intelligent City(CVPR 2020 AI City Challenge Track 3)

License

Notifications You must be signed in to change notification settings

QiuZuowei/ELECTRICITY-MTMC

 
 

Repository files navigation

ELECTRICITY: An Efficient Multi-camera Vehicle Tracking System for Intelligent City

Authors: Yijun Qian, Lijun Yu, Wenhe Liu, Alexander G Hauptmann

Email: [email protected], [email protected]

@InProceedings{Qian_2020_CVPR_Workshops,
author = {Qian, Yijun and Yu, Lijun and Liu, Wenhe and Hauptmann, Alexander G.},
title = {ELECTRICITY: An Efficient Multi-Camera Vehicle Tracking System for Intelligent City},
booktitle = {The IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) Workshops},
month = {June},
year = {2020}
}

Paper Linkage

Overview

We release the code for our winnning model on AI City 2020 Challenge (https://www.aicitychallenge.org/) Track 3. For more information please refer to our accepted paper in CVPR 2020 AI City Workshop.

Project Download

Firstly please download the project through:

git clone https://github.com/KevinQian97/ELECTRICITY-MTMC.git

Prerequisites

The code is built with many libraries, we have listed the official sites of part of them. If you encounter problems about the dependencies, please resort to these official sites for help.

We have prepared the environment config file and suggest build the environment through ANACONDA.

cd ELECTRICITY-MTMC
conda env create -f environment.yml 
conda activate aic20_track3

Data Preparation

If you want to reproduce our results on AI City Challenge or train the model by yourself, please download the data set from: (https://www.aicitychallenge.org/2020-data-and-evaluation/) and put it under the folder datasets. Make sure the data structure is like:

  • ELECTRICITY-MTMC
    • datasets
      • aic_20_trac3
        • test (test folder)
        • eval
        • validation (validation folder)
        • cam_timestamp
        • cam_loc
        • cam_framenum
        • train (train folder)

Pretrained Models

We also provided the pretrained model: Notice: The accuracy and map here is calculated on our inner split of validation set. The submission model is trained on both train and validation sets.

model Acc 1 MAP Epochs Linkage
Agg_ResNet101 92.0% 82.3% 10 link

Inference

If you just want inference or reproduce our results, you can directly download our pretrained model and:

cd ELECTRICITY-MTMC
mkdir models
cd models
mkdir resnet101-Aic

Then put the pretrained model under this folder and run:

cd ELECTRICITY-MTMC
bash test.sh

The final results will locate at path ./exp/track3.txt

Training

If you want to train the model by yourself, please first generate training sets through:

bash ./prepare.sh

Then run:

bash ./train.sh

You will get trained model under path ./models/resnet101-Aic Finally run:

bash ./test.sh

The final results will locate at path ./exp/track3.txt

Performance

The speed is tested on four 2080Ti GPUs.

  • Speed: 0.345x real-time (it means we only need 0.345 second to tackle 1 second video)
  • IDF1: 0.4616

License

See LICENSE. Please read before use.

About

ELECTRICITY: An Efficient Multi-camera Vehicle Tracking System for Intelligent City(CVPR 2020 AI City Challenge Track 3)

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 99.4%
  • Shell 0.6%