Unsupervised Multi-criteria Adversarial Detection in Deep Image Retrieval


연구 분야: Verification



학회: International Conference on Security and Privacy in Communication Systems


초록

The vulnerability in the algorithm supply chain of deep learning has imposed new challenges to image retrieval systems in the downstream. Among a variety of techniques, deep hashing is gaining popularity. As it inherits the algorithmic backend from deep learning, a handful of attacks are recently proposed to disrupt normal image retrieval. Unfortunately, the defense strategies in softmax classification are not readily available to be applied in the image retrieval domain. In this paper, we propose an efficient and unsupervised scheme to identify unique adversarial behaviors in the hamming space. In particular, we design three criteria from the perspectives of hamming distance, quantization loss and denoising to defend against both untargeted and targeted attacks, which collectively limit the adversarial space. The extensive experiments on four datasets demonstrate 2–23% improvements of detection rates with minimum computational overhead for real-time image queries.


Author Profile
Yanru Xiao

Old Dominion University Norfolk VA USA

United States
Author Profile
Cong Wang

Zhejiang University Hangzhou China

China
Author Profile
Xing Gao

University of Delaware Newark DE USA

Germany

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Germany, China, United States
사이트 Springer
좋아요 수 0

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