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On Detecting Adversarial Perturbations

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Machine learning and deep learning in particular has advanced tremendously on perceptual tasks in recent years. However, it remains vulnerable against adversarial perturbations of the input that have been crafted specifically to fool the system while being quasi-imperceptible to a human. In this work, we propose to augment deep neural networks with a small "detector" subnetwork which is trained on the binary classification task of distinguishing genuine data from data containing adversarial perturbations. Our method is orthogonal to prior work on addressing adversarial perturbations, which has mostly focused on making the classification network itself more robust. We show empirically that adversarial perturbations can be detected surprisingly well even though they are quasi-imperceptible to humans. Moreover, while the detectors have been trained to detect only a specific adversary, they generalize to similar and weaker adversaries. In addition, we propose an adversarial attack that fools both the classifier and the detector and a novel training procedure for the detector that counteracts this attack.

Jan Hendrik Metzen, Tim Genewein, Volker Fischer, Bastian Bischoff• 2017

Related benchmarks

TaskDatasetResultRank
Deepfake DetectionFace Replacement
Precision52
16
Deepfake DetectionFace Editing
Precision50
16
Deepfake DetectionFacial Reenactment
Precision48
16
Adversarial RobustnessCIFAR-10 L-infinity, epsilon=4/255
Robust Accuracy (AA)6.17
10
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