Polishing Decision-Based Adversarial Noise With a Customized Sampling

As an effective black-box adversarial attack, decision-based methods polish adversarial noise by querying the target model. Among them, boundary attack is widely applied due to its powerful noise compression capability, especially when combined with transfer-based methods... (read more)

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