Explainable AI for Transparent Decision-Making in Cybersecurity Operations for Autonomous Vehicles
Keywords:
Connected autonomous vehicles (CAVs)Abstract
Connected autonomous vehicles (CAVs), integrating connected vehicles and autonomous vehicles, demonstrate a use case of how advanced simulations and machine learning were combined to improve the decision-making capabilities for a holistic system CO3. CAVs are influenced by results obtained from adversarial research done on common sensor modalities (radar, camera and Lidar) integrated into them to take decisions related to perception and fusion. The output of perception acts as an input to control decision-making algorithms governing the movement of the CAV. Vulnerabilities have been identified in each common sensor modality which can change the decision-making of the algorithm [1]. The top three modalities (camera, radar, lidar) used in self-driving vehicles are shown to be inter-dependent with correlation analysis, the same information can be used to fool the system to trigger misclassification by both adding different real-word noise. Different factors that affect perception and decision-making were individually tested and demonstrated to affect the decision of the CAV.
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References
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