Adversarial Machine Learning for Robust Cybersecurity in Autonomous Vehicle Systems: Investigates the use of adversarial machine learning to enhance cybersecurity in autonomous vehicle systems
Keywords:
Adversarial Machine Learning, RobustnessAbstract
Adversarial Machine Learning (AML) has emerged as a critical approach for enhancing the cybersecurity of Autonomous Vehicle (AV) systems. This paper explores the application of AML techniques to defend AVs against cyber threats, focusing on the development of robust models capable of detecting and mitigating adversarial attacks. The research investigates various types of attacks, including data poisoning, evasion, and model inversion attacks, and proposes novel defense mechanisms using AML. Experimental results demonstrate the effectiveness of the proposed approach in improving the resilience of AV systems against cyber threats.
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References
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