Joint Discriminative and Generative Learning for Person Re-identification. CVPR'19 (Oral)

Overview

License CC BY-NC-SA 4.0 Python 3.6 Language grade: Python

Joint Discriminative and Generative Learning for Person Re-identification

[Project] [Paper] [YouTube] [Bilibili] [Poster] [Supp]

Joint Discriminative and Generative Learning for Person Re-identification, CVPR 2019 (Oral)
Zhedong Zheng, Xiaodong Yang, Zhiding Yu, Liang Zheng, Yi Yang, Jan Kautz

Table of contents

News

  • 02/18/2021: We release DG-Net++: the extention of DG-Net for unsupervised cross-domain re-id.
  • 08/24/2019: We add the direct transfer learning results of DG-Net here.
  • 08/01/2019: We add the support of multi-GPU training: python train.py --config configs/latest.yaml --gpu_ids 0,1.

Features

We have supported:

  • Multi-GPU training (fp32)
  • APEX to save GPU memory (fp16/fp32)
  • Multi-query evaluation
  • Random erasing
  • Visualize training curves
  • Generate all figures in the paper

Prerequisites

  • Python 3.6
  • GPU memory >= 15G (fp32)
  • GPU memory >= 10G (fp16/fp32)
  • NumPy
  • PyTorch 1.0+
  • [Optional] APEX (fp16/fp32)

Getting Started

Installation

  • Install PyTorch
  • Install torchvision from the source:
git clone https://github.com/pytorch/vision
cd vision
python setup.py install
  • [Optional] You may skip it. Install APEX from the source:
git clone https://github.com/NVIDIA/apex.git
cd apex
python setup.py install --cuda_ext --cpp_ext
  • Clone this repo:
git clone https://github.com/NVlabs/DG-Net.git
cd DG-Net/

Our code is tested on PyTorch 1.0.0+ and torchvision 0.2.1+ .

Dataset Preparation

Download the dataset Market-1501 [Google Drive] [Baidu Disk]

Preparation: put the images with the same id in one folder. You may use

python prepare-market.py          # for Market-1501

Note to modify the dataset path to your own path.

Testing

Download the trained model

We provide our trained model. You may download it from Google Drive (or Baidu Disk password: rqvf). You may download and move it to the outputs.

├── outputs/
│   ├── E0.5new_reid0.5_w30000
├── models
│   ├── best/                   

Person re-id evaluation

  • Supervised learning
Market-1501 DukeMTMC-reID MSMT17 CUHK03-NP
[email protected] 94.8% 86.6% 77.2% 65.6%
mAP 86.0% 74.8% 52.3% 61.1%
  • Direct transfer learning
    To verify the generalizability of DG-Net, we train the model on dataset A and directly test the model on dataset B (with no adaptation). We denote the direct transfer learning protocol as A→B.
Market→Duke Duke→Market Market→MSMT MSMT→Market Duke→MSMT MSMT→Duke
[email protected] 42.62% 56.12% 17.11% 61.76% 20.59% 61.89%
[email protected] 58.57% 72.18% 26.66% 77.67% 31.67% 75.81%
[email protected] 64.63% 78.12% 31.62% 83.25% 37.04% 80.34%
mAP 24.25% 26.83% 5.41% 33.62% 6.35% 40.69%

Image generation evaluation

Please check the README.md in the ./visual_tools.

You may use the ./visual_tools/test_folder.py to generate lots of images and then do the evaluation. The only thing you need to modify is the data path in SSIM and FID.

Training

Train a teacher model

You may directly download our trained teacher model from Google Drive (or Baidu Disk password: rqvf). If you want to have it trained by yourself, please check the person re-id baseline repository to train a teacher model, then copy and put it in the ./models.

├── models/
│   ├── best/                   /* teacher model for Market-1501
│       ├── net_last.pth        /* model file
│       ├── ...

Train DG-Net

  1. Setup the yaml file. Check out configs/latest.yaml. Change the data_root field to the path of your prepared folder-based dataset, e.g. ../Market-1501/pytorch.

  2. Start training

python train.py --config configs/latest.yaml

Or train with low precision (fp16)

python train.py --config configs/latest-fp16.yaml

Intermediate image outputs and model binary files are saved in outputs/latest.

  1. Check the loss log
 tensorboard --logdir logs/latest

DG-Market

We provide our generated images and make a large-scale synthetic dataset called DG-Market. This dataset is generated by our DG-Net and consists of 128,307 images (613MB), about 10 times larger than the training set of original Market-1501 (even much more can be generated with DG-Net). It can be used as a source of unlabeled training dataset for semi-supervised learning. You may download the dataset from Google Drive (or Baidu Disk password: qxyh).

DG-Market Market-1501 (training)
#identity - 751
#images 128,307 12,936

Tips

Note the format of camera id and number of cameras. For some datasets (e.g., MSMT17), there are more than 10 cameras. You need to modify the preparation and evaluation code to read the double-digit camera id. For some vehicle re-id datasets (e.g., VeRi) having different naming rules, you also need to modify the preparation and evaluation code.

Citation

Please cite this paper if it helps your research:

@inproceedings{zheng2019joint,
  title={Joint discriminative and generative learning for person re-identification},
  author={Zheng, Zhedong and Yang, Xiaodong and Yu, Zhiding and Zheng, Liang and Yang, Yi and Kautz, Jan},
  booktitle={IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
  year={2019}
}

Related Work

Other GAN-based methods compared in the paper include LSGAN, FDGAN and PG2GAN. We forked the code and made some changes for evaluatation, thank the authors for their great work. We would also like to thank to the great projects in person re-id baseline, MUNIT and DRIT.

License

Copyright (C) 2019 NVIDIA Corporation. All rights reserved. Licensed under the CC BY-NC-SA 4.0 (Attribution-NonCommercial-ShareAlike 4.0 International). The code is released for academic research use only. For commercial use, please contact [email protected].

Owner
NVIDIA Research Projects
NVIDIA Research Projects
PyTorch 1.0 inference in C++ on Windows10 platforms

Serving PyTorch Models in C++ on Windows10 platforms How to use Prepare Data examples/data/train/ - 0 - 1 . . . - n examples/data/test/

Henson 88 Oct 15, 2022
Code and data of the Fine-Grained R2R Dataset proposed in paper Sub-Instruction Aware Vision-and-Language Navigation

Fine-Grained R2R Code and data of the Fine-Grained R2R Dataset proposed in the EMNLP2020 paper Sub-Instruction Aware Vision-and-Language Navigation. C

YicongHong 34 Nov 15, 2022
TUPÃ was developed to analyze electric field properties in molecular simulations

TUPÃ: Electric field analyses for molecular simulations What is TUPÃ? TUPÃ (pronounced as tu-pan) is a python algorithm that employs MDAnalysis engine

Marcelo D. Polêto 10 Jul 17, 2022
PyTorch/TorchScript compiler for NVIDIA GPUs using TensorRT

PyTorch/TorchScript compiler for NVIDIA GPUs using TensorRT

NVIDIA Corporation 1.8k Dec 30, 2022
VR Viewport Pose Model for Quantifying and Exploiting Frame Correlations

This repository contains the introduction to the collected VRViewportPose dataset and the code for the IEEE INFOCOM 2022 paper: "VR Viewport Pose Model for Quantifying and Exploiting Frame Correlatio

0 Aug 10, 2022
Yolov3 pytorch implementation

YOLOV3 Pytorch实现 在bubbliiing大佬代码的基础上进行了修改,添加了部分注释。 预训练模型 预训练模型来源于bubbliiing。 链接:https://pan.baidu.com/s/1ncREw6Na9ycZptdxiVMApw 提取码:appk 训练自己的数据集 按照VO

4 Aug 27, 2022
I explore rock vs. mine prediction using a SONAR dataset

I explore rock vs. mine prediction using a SONAR dataset. Using a Logistic Regression Model for my prediction algorithm, I intend on predicting what an object is based on supervised learning.

Jeff Shen 1 Jan 11, 2022
GLaRA: Graph-based Labeling Rule Augmentation for Weakly Supervised Named Entity Recognition

GLaRA: Graph-based Labeling Rule Augmentation for Weakly Supervised Named Entity Recognition

Xinyan Zhao 29 Dec 26, 2022
This repo provides function call to track multi-objects in videos

Custom Object Tracking Introduction This repo provides function call to track multi-objects in videos with a given trained object detection model and

Jeff Lo 51 Nov 22, 2022
This is a Pytorch implementation of the paper: Self-Supervised Graph Transformer on Large-Scale Molecular Data.

This is a Pytorch implementation of the paper: Self-Supervised Graph Transformer on Large-Scale Molecular Data.

212 Dec 25, 2022
A framework for Quantification written in Python

QuaPy QuaPy is an open source framework for quantification (a.k.a. supervised prevalence estimation, or learning to quantify) written in Python. QuaPy

41 Dec 14, 2022
Image Deblurring using Generative Adversarial Networks

DeblurGAN arXiv Paper Version Pytorch implementation of the paper DeblurGAN: Blind Motion Deblurring Using Conditional Adversarial Networks. Our netwo

Orest Kupyn 2.2k Jan 01, 2023
A module that used for encrypt code which includes RSA and AES

软件加密模块 requirement: Crypto,pycryptodome,pyqt5 本地加密信息为随机字符串 使用说明 命令行参数 -h 帮助 -checkWorking 检查是否能正常工作,后接1确认指令 -checkEndDate 检查截至日期,后接1确认指令 -activateCode

2 Sep 27, 2022
ADGAN - The Implementation of paper Controllable Person Image Synthesis with Attribute-Decomposed GAN

ADGAN - The Implementation of paper Controllable Person Image Synthesis with Attribute-Decomposed GAN CVPR 2020 (Oral); Pose and Appearance Attributes Transfer;

Men Yifang 400 Dec 29, 2022
Code for "R-GCN: The R Could Stand for Random"

RR-GCN: Random Relational Graph Convolutional Networks PyTorch Geometric code for the paper "R-GCN: The R Could Stand for Random" RR-GCN is an extensi

PreDiCT.IDLab 31 Sep 07, 2022
[ICLR 2021] "CPT: Efficient Deep Neural Network Training via Cyclic Precision" by Yonggan Fu, Han Guo, Meng Li, Xin Yang, Yining Ding, Vikas Chandra, Yingyan Lin

CPT: Efficient Deep Neural Network Training via Cyclic Precision Yonggan Fu, Han Guo, Meng Li, Xin Yang, Yining Ding, Vikas Chandra, Yingyan Lin Accep

26 Oct 25, 2022
Accelerate Neural Net Training by Progressively Freezing Layers

FreezeOut A simple technique to accelerate neural net training by progressively freezing layers. This repository contains code for the extended abstra

Andy Brock 203 Jun 19, 2022
Neural Scene Graphs for Dynamic Scene (CVPR 2021)

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

151 Dec 26, 2022
Code for Ditto: Building Digital Twins of Articulated Objects from Interaction

Ditto: Building Digital Twins of Articulated Objects from Interaction Zhenyu Jiang, Cheng-Chun Hsu, Yuke Zhu CVPR 2022, Oral Project | arxiv News 2022

UT Robot Perception and Learning Lab 78 Dec 22, 2022
For holding anime-related object classification and detection models

Animesion An end-to-end framework for anime-related object classification, detection, segmentation, and other models. Update: 01/22/2020. Due to time-

Edwin Arkel Rios 72 Nov 30, 2022