SHI-Labs / Self-Similarity-Grouping

Self-similarity Grouping: A Simple Unsupervised Cross Domain Adaptation Approach for Person Re-identification (ICCV 2019, Oral)
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computer-vision deep-learning domain-adaptation person-reidentification

Self-similarity Grouping: A Simple Unsupervised Cross Domain Adaptation Approach for Person Re-identificatio(SSG)

Implementation of the paper Self-similarity Grouping: A Simple Unsupervised Cross Domain Adaptation Approach for Person Re-identification, ICCV 2019 (Oral)

The SSG approach proposed in the paper is simple yet effective and achieves the state-of-arts on three re-ID datasets: Market1501, DukdMTMC and MSMT17.

Illustration of the Self-similarity Grouping.

Running the experiments

Step 1: Train on source dataset

Run source_train.py via

python source_train.py \
    --dataset <name_of_source_dataset>\
    --resume <dir_of_source_trained_model>\
    --data_dir <dir_of_source_data>\
    --logs_dir <dir_to_save_source_trained_model>

To replicate the results in the paper, you can download pre-trained models on Market1501, DukeMTMC and MSMT17 from GoogleDrive. There maybe some bugs in source_train.py, please refer to DomainAdaptiveReID to obtained the pretrained model or just use the pretrained model provided by us. And you can find all models after adaptation from GoogleDrive. Our models can be trained with PyTorch 0.4.1 or PyTorch 1.0.

Step 2: Run Self-similarity Grouping

python selftraining.py \
    --src_dataset <name_of_source_dataset>\
    --tgt_dataset <name_of_target_dataset>\
    --resume <dir_of_source_trained_model>\
    --iteration <number of iteration>\
    --data_dir <dir_of_source_target_data>\
    --logs_dir <dir_to_save_model_after_adaptation>\
    --gpu-devices <gpu ids>\
    --num-split <number of split>

Or just command

./run.sh

Step 3: Run Clustering-guided Semi-Supervised Training

python semitraining.py \
    --src_dataset <name_of_source_dataset>\
    --tgt_dataset <name_of_target_dataset>\
    --resume <dir_of_source_trained_model>\
    --iteration <number of iteration>\
    --data_dir <dir_of_source_target_data>\
    --logs_dir <dir_to_save_model_after_adaptation>\
    --gpu-devices <gpu ids>\
    --num-split <number of split>\
    --sample <sample method>

Results

Step 1: After training on source dataset

Source Dataset Rank-1 mAP
DukeMTMC 82.6 70.5
Market1501 92.5 80.8
MSMT17 73.6 48.6

Step 2: After adaptation

SRC --> TGT Before Adaptation Adaptation by SSG Adaptation by SSG++
Rank-1 mAP Rank-1 mAP Rank-1 mAP
Market1501 --> DukeMTMC30.516.173.053.476.060.3
DukeMTMC --> Market150154.626.680.058.386.268.7
Market1501 --> MSMT17 8.62.731.613.237.616.6
DukeMTMC --> MSMT17 12.383.8232.213.341.618.3

Issues

Acknowledgement

Our code is based on open-reid and DomainAdaptiveReID.

Citation

If you find the code helpful in your resarch or work, please cite the following paper.

@InProceedings{Fu_2019_ICCV,
author = {Fu, Yang and Wei, Yunchao and Wang, Guanshuo and Zhou, Yuqian and Shi, Honghui and Huang, Thomas S.},
title = {Self-Similarity Grouping: A Simple Unsupervised Cross Domain Adaptation Approach for Person Re-Identification},
booktitle = {The IEEE International Conference on Computer Vision (ICCV)},
month = {October},
year = {2019}
}