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code for AAAI accepted paper Similarity Distribution based Membership Inference Attack on Person Re-Identification.

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Similarity Distribution based Membership Inference Attack on Person Re-Identification (AAAI 2023, oral)

This is the pytorch implementation of the paper (accepted by AAAI 2023, oral).

Environment setting

GPU: RTX3090
CUDA: 12.0
Python: 3.8.3
torch: 1.8.0+cu111
os: Ubuntu 18.04

install sklearn

pip install scikit-learn

Getting start

Step 1: Gaining the feature embedding outputs of training and test set from the target model.
Step 2: Training and evaluating the model.

python main.py

Citation

If you use this code or the models in your research, please give credit to the following papers:

@inproceedings{GaoJZYD0MDZ23,
  author       = {Junyao Gao and
                  Xinyang Jiang and
                  Huishuai Zhang and
                  Yifan Yang and
                  Shuguang Dou and
                  Dongsheng Li and
                  Duoqian Miao and
                  Cheng Deng and
                  Cairong Zhao},
  title        = {Similarity Distribution Based Membership Inference Attack on Person
                  Re-identification},
  booktitle    = {Thirty-Seventh {AAAI} Conference on Artificial Intelligence, {AAAI}},
  pages        = {14820--14828},
  publisher    = {{AAAI} Press},
  year         = {2023},
}

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code for AAAI accepted paper Similarity Distribution based Membership Inference Attack on Person Re-Identification.

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