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Tk_kk​ML-AP: Adversarial Attacks to Top-kkk Multi-Label Learning

31 July 2021
Shu Hu
Lipeng Ke
Xin Wang
Siwei Lyu
    VLM
    AAML
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Abstract

Top-kkk multi-label learning, which returns the top-kkk predicted labels from an input, has many practical applications such as image annotation, document analysis, and web search engine. However, the vulnerabilities of such algorithms with regards to dedicated adversarial perturbation attacks have not been extensively studied previously. In this work, we develop methods to create adversarial perturbations that can be used to attack top-kkk multi-label learning-based image annotation systems (TkML-AP). Our methods explicitly consider the top-kkk ranking relation and are based on novel loss functions. Experimental evaluations on large-scale benchmark datasets including PASCAL VOC and MS COCO demonstrate the effectiveness of our methods in reducing the performance of state-of-the-art top-kkk multi-label learning methods, under both untargeted and targeted attacks.

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