Deep Object Reid is a library for deep-learning image classification and object re-identification, written in PyTorch. It is a part of OpenVINO™ Training Extensions.
The project is based on Kaiyang Zhou's Torchreid project.
Its features:
- multi-GPU training
- end-to-end training and evaluation
- incredibly easy preparation of reid and classification datasets
- multi-dataset training
- cross-dataset evaluation
- standard protocol used by most research papers
- highly extensible (easy to add models, datasets, training methods, etc.)
- implementations of state-of-the-art and lightweight reid/classification models
- access to pretrained reid/classification models
- advanced training techniques such as mutual learning, RSC, SAM, AugMix and many other
- visualization tools (tensorboard, ranks, activation map, etc.)
- automated learning rate search and exiting from training (no need to choose epoch number)
How-to instructions: https://github.com/openvinotoolkit/deep-object-reid/blob/ote/docs/user_guide.rst
Original tech report by Kaiyang Zhou and Tao Xiang: https://arxiv.org/abs/1910.10093.
You can find some other research projects that are built on top of Torchreid `here (https://github.com/KaiyangZhou/deep-person-reid/tree/master/projects).
Also if you are planning to perform image classification project, please, refer to OpenVINO™ Training Extensions Custom Image Classification Templates to get a strong baseline for your project. The paper is comming soon.
- [June 2021] Added new algorithms, regularization techniques and models for image classification task
- [May 2020] Added the person attribute recognition code used in `Omni-Scale Feature Learning for Person Re-Identification ICCV'19. See
projects/attribute_recognition/
. - [May 2020] 1.2.1: Added a simple API for feature extraction. See the documentation for the instruction.
- [Apr 2020] Code for reproducing the experiments of deep mutual learning in the OSNet paper (Supp. B) has been released at
projects/DML
. - [Apr 2020] Upgraded to 1.2.0. The engine class has been made more model-agnostic to improve extensibility. See Engine and ImageSoftmaxEngine for more details. Credit to Dassl.pytorch.
- [Dec 2019] Our OSNet paper has been updated, with additional experiments (in section B of the supplementary) showing some useful techniques for improving OSNet's performance in practice.
- [Nov 2019]
ImageDataManager
can load training data from target datasets by settingload_train_targets=True
, and the train-loader can be accessed withtrain_loader_t = datamanager.train_loader_t
. This feature is useful for domain adaptation research.
Make sure `conda (https://www.anaconda.com/distribution/) is installed.
# cd to your preferred directory and clone this repo
git clone https://github.com/openvinotoolkit/deep-object-reid.git
# create environment
cd deep-object-reid/
conda create --name torchreid python=3.7
conda activate torchreid
# install dependencies
# make sure `which python` and `which pip` point to the correct path
pip install -r requirements.txt
# install torchreid (don't need to re-build it if you modify the source code)
python setup.py develop
You can use deep-object-reid in your project or use this repository to train proposed models or your own model through configuration file.
- Import
torchreid
import torchreid
- Load data manager
datamanager = torchreid.data.ImageDataManager(
root='reid-data',
sources='market1501',
targets='market1501',
height=256,
width=128,
batch_size_train=32,
batch_size_test=100,
transforms=['random_flip', 'random_crop']
)
- Build model, optimizer and lr_scheduler
model = torchreid.models.build_model(
name='osnet_ain_x1_0',
num_classes=datamanager.num_train_pids,
loss='am_softmax',
pretrained=True
)
model = model.cuda()
optimizer = torchreid.optim.build_optimizer(
model,
optim='adam',
lr=0.001
)
scheduler = torchreid.optim.build_lr_scheduler(
optimizer,
lr_scheduler='single_step',
stepsize=20
)
- Build engine
engine = torchreid.engine.ImageAMSoftmaxEngine(
datamanager,
model,
optimizer=optimizer,
scheduler=scheduler,
label_smooth=True
)
- Run training and test
engine.run(
save_dir='log/osnet_ain',
max_epoch=60,
eval_freq=10,
print_freq=10,
test_only=False
)
modify one of the following config file and run:
python tools/main.py \
--config-file $PATH_TO_CONFIG \
--root $PATH_TO_DATA
--gpu-num $NUM_GPU
See "tools/main.py" and "scripts/default_config.py" for more details.
Evaluation is automatically performed at the end of training. To run the test again using the trained model, do
python tools/eval.py \
--config-file $PATH_TO_CONFIG\
--root $PATH_TO_DATA \
model.load_weights log/osnet_x1_0_market1501_softmax_cosinelr/model.pth.tar-250 \
test.evaluate True
Suppose you wanna train OSNet on DukeMTMC-reID and test its performance on Market1501, you can do
python scripts/main.py \
--config-file configs/im_osnet_x1_0_softmax_256x128_amsgrad.yaml \
-s dukemtmcreid \
-t market1501 \
--root $PATH_TO_DATA
Here we only test the cross-domain performance. However, if you also want to test the performance on the source dataset, i.e. DukeMTMC-reID, you can set: -t dukemtmcreid market1501
, which will evaluate the model on the two datasets separately.
- Describable Textures (DTD)
- Caltech 101
- Oxford 102 Flowers
- Oxford-IIIT Pets
- CIFAR100
- SVHN (w/o additional data)
- Fashion MNIST
- FOOD101
- SUN397
- Birdsnap
- Cars Dataset
- OSNet-IBN1-Lite (test-only code with lite docker container)
- Deep Learning for Person Re-identification: A Survey and Outlook
- OpenVINO™ Training Extention
If you find this code useful to your research, please cite the following papers.
@article{torchreid,
title={Torchreid: A Library for Deep Learning Person Re-Identification in Pytorch},
author={Zhou, Kaiyang and Xiang, Tao},
journal={arXiv preprint arXiv:1910.10093},
year={2019}
}
@inproceedings{zhou2019osnet,
title={Omni-Scale Feature Learning for Person Re-Identification},
author={Zhou, Kaiyang and Yang, Yongxin and Cavallaro, Andrea and Xiang, Tao},
booktitle={ICCV},
year={2019}
}
@article{zhou2019learning,
title={Learning Generalisable Omni-Scale Representations for Person Re-Identification},
author={Zhou, Kaiyang and Yang, Yongxin and Cavallaro, Andrea and Xiang, Tao},
journal={arXiv preprint arXiv:1910.06827},
year={2019}
}