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Exploring Adversarial Transferability in Real-World Scenarios: Understanding and Mitigating Security Risks

dc.contributor.authorShrestha, Abhishek
dc.contributor.editorStolzenburg, Frieder
dc.date.accessioned2023-09-20T04:20:43Z
dc.date.available2023-09-20T04:20:43Z
dc.date.issued2023
dc.description.abstractDeep Neural Networks (DNNs) are known to be vulnerable to artificially generated samples known as adversarial examples. Such adversarial samples aim at generating misclassifications by specifically optimizing input data for a matching perturbation. Interestingly, it can be observed that these adversarial examples are transferable from the source network where they were created to a black-box target network. The transferability property means that attackers are no longer required to have white-box access to models nor bound to query the target model repeatedly to craft an effective attack. Given the rising popularity of the use of DNNs in various domains, it is crucial to understand the vulnerability of these networks to such attacks. In this premise, the thesis intends to study transferability under a more realistic scenario, where source and target models can differ in various aspects like accuracy, capacity, bitwidth, and architecture among others. Furthermore, the goal is to also investigate defensive strategies that can be utilized to minimize the effectiveness of these attacks.en
dc.identifier.doi10.18420/ki2023-dc-11
dc.identifier.urihttps://dl.gi.de/handle/20.500.12116/42399
dc.language.isoen
dc.pubPlaceBonn
dc.publisherGesellschaft für Informatik e.V.
dc.relation.ispartofDC@KI2023: Proceedings of Doctoral Consortium at KI 2023
dc.subjectDeep learning, Adversarial attacks, Transferability property, Adversarial defenceen
dc.titleExploring Adversarial Transferability in Real-World Scenarios: Understanding and Mitigating Security Risksen
dc.typeText
gi.citation.endPage102
gi.citation.startPage94
gi.conference.date45195
gi.conference.locationBerlin
gi.conference.sessiontitleDoctoral Consortium at KI 2023
gi.document.qualitydigidoc

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