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CapsAttacks: Robust and Imperceptible Adversarial Attacks on Capsule Networks

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arxiv 1901.09878 v2 pith:KS7MTHEN submitted 2019-01-28 cs.LG cs.CRcs.CVeess.IVstat.ML

CapsAttacks: Robust and Imperceptible Adversarial Attacks on Capsule Networks

classification cs.LG cs.CRcs.CVeess.IVstat.ML
keywords networkscapsuleadversarialattacksimperceptiblecnnsexampleskind
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Capsule Networks preserve the hierarchical spatial relationships between objects, and thereby bears a potential to surpass the performance of traditional Convolutional Neural Networks (CNNs) in performing tasks like image classification. A large body of work has explored adversarial examples for CNNs, but their effectiveness on Capsule Networks has not yet been well studied. In our work, we perform an analysis to study the vulnerabilities in Capsule Networks to adversarial attacks. These perturbations, added to the test inputs, are small and imperceptible to humans, but can fool the network to mispredict. We propose a greedy algorithm to automatically generate targeted imperceptible adversarial examples in a black-box attack scenario. We show that this kind of attacks, when applied to the German Traffic Sign Recognition Benchmark (GTSRB), mislead Capsule Networks. Moreover, we apply the same kind of adversarial attacks to a 5-layer CNN and a 9-layer CNN, and analyze the outcome, compared to the Capsule Networks to study differences in their behavior.

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