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Bibliographic Details
Main Authors: Andert, Edward, Mendoza, Francis, Behrens, Hans Walter, Shrivastava, Aviral
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.02863
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author Andert, Edward
Mendoza, Francis
Behrens, Hans Walter
Shrivastava, Aviral
author_facet Andert, Edward
Mendoza, Francis
Behrens, Hans Walter
Shrivastava, Aviral
contents Connected Autonomous Vehicles have great potential to improve automobile safety and traffic flow, especially in cooperative applications where perception data is shared between vehicles. However, this cooperation must be secured from malicious intent and unintentional errors that could cause accidents. Previous works typically address singular security or reliability issues for cooperative driving in specific scenarios rather than the set of errors together. In this paper, we propose CONClave, a tightly coupled authentication, consensus, and trust scoring mechanism that provides comprehensive security and reliability for cooperative perception in autonomous vehicles. CONClave benefits from the pipelined nature of the steps such that faults can be detected significantly faster and with less compute. Overall, CONClave shows huge promise in preventing security flaws, detecting even relatively minor sensing faults, and increasing the robustness and accuracy of cooperative perception in CAVs while adding minimal overhead.
format Preprint
id arxiv_https___arxiv_org_abs_2409_02863
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CONClave -- Secure and Robust Cooperative Perception for CAVs Using Authenticated Consensus and Trust Scoring
Andert, Edward
Mendoza, Francis
Behrens, Hans Walter
Shrivastava, Aviral
Robotics
Cryptography and Security
Multiagent Systems
Connected Autonomous Vehicles have great potential to improve automobile safety and traffic flow, especially in cooperative applications where perception data is shared between vehicles. However, this cooperation must be secured from malicious intent and unintentional errors that could cause accidents. Previous works typically address singular security or reliability issues for cooperative driving in specific scenarios rather than the set of errors together. In this paper, we propose CONClave, a tightly coupled authentication, consensus, and trust scoring mechanism that provides comprehensive security and reliability for cooperative perception in autonomous vehicles. CONClave benefits from the pipelined nature of the steps such that faults can be detected significantly faster and with less compute. Overall, CONClave shows huge promise in preventing security flaws, detecting even relatively minor sensing faults, and increasing the robustness and accuracy of cooperative perception in CAVs while adding minimal overhead.
title CONClave -- Secure and Robust Cooperative Perception for CAVs Using Authenticated Consensus and Trust Scoring
topic Robotics
Cryptography and Security
Multiagent Systems
url https://arxiv.org/abs/2409.02863