Transferable Attacks for Semantic Segmentation
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He, Mengqi
Zhang, Jing
Yu, Xin
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Volume Title
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Springer Science+Business Media B.V.
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Abstract
We analyze the performance of semantic segmentation models w.r.t. adversarial attacks. We observe that the adversarial examples generated from a source model fail to attack the target models, i.e. the conventional attack methods [1, 2] do not transfer well to the target models, making it necessary to study the transferable attacks, in particular transferable attacks for semantic segmentation. We thoroughly analysis existing transferable attacks for image classification, and extend them to semantic segmentation. With extensive investigation, we find two main factors for effective transferable attack. Firstly, the attack should come with data augmentation and translation-invariant features to deal with unseen models. Secondly, stabilized optimization strategies are needed to find the optimal attack direction.
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Book Title
Databases Theory And Applications, ADC 2024
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Publication