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Towards Effective Multi-Label Recognition Attacks via Knowledge Graph Consistency

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arxiv 2207.05137 v1 pith:HAGHJH6Y submitted 2022-07-11 cs.CV

Towards Effective Multi-Label Recognition Attacks via Knowledge Graph Consistency

classification cs.CV
keywords multi-labelimageattacksgraphknowledgelabelperturbationsrecognition
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Many real-world applications of image recognition require multi-label learning, whose goal is to find all labels in an image. Thus, robustness of such systems to adversarial image perturbations is extremely important. However, despite a large body of recent research on adversarial attacks, the scope of the existing works is mainly limited to the multi-class setting, where each image contains a single label. We show that the naive extensions of multi-class attacks to the multi-label setting lead to violating label relationships, modeled by a knowledge graph, and can be detected using a consistency verification scheme. Therefore, we propose a graph-consistent multi-label attack framework, which searches for small image perturbations that lead to misclassifying a desired target set while respecting label hierarchies. By extensive experiments on two datasets and using several multi-label recognition models, we show that our method generates extremely successful attacks that, unlike naive multi-label perturbations, can produce model predictions consistent with the knowledge graph.

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