2023
DOI: 10.48550/arxiv.2303.15571
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EMShepherd: Detecting Adversarial Samples via Side-channel Leakage

Abstract: Deep Neural Networks (DNN) are vulnerable to adversarial perturbations -small changes crafted deliberately on the input to mislead the model for wrong predictions. Adversarial attacks have disastrous consequences for deep learning empowered critical applications. Existing defense and detection techniques both require extensive knowledge of the model, testing inputs and even execution details. They are not viable for general deep learning implementations where the model internal is unknown, a common 'black-box'… Show more

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