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Abstract
Convolutional Neural Networks (CNNs) are widely used to solve classification
tasks in computer vision. However, they can be tricked into misclassifying
specially crafted `adversarial' samples -- and samples built to trick one model
often work alarmingly well against other models trained on the same task. In
this paper we introduce Sitatapatra, a system designed to block the transfer of
adversarial samples. It diversifies neural networks using a key, as in
cryptography, and provides a mechanism for detecting attacks. What's more, when
adversarial samples are detected they can typically be traced back to the
individual device that was used to develop them. The run-time overheads are
minimal permitting the use of Sitatapatra on constrained systems.