Human-Centric Cybersecurity Frameworks for Autonomous Vehicles - Bridging the Gap between Users and Technology: Proposes human-centric cybersecurity frameworks for AVs to bridge the gap between users and technology
Published 20-06-2022
Keywords
- Autonomous Vehicles,
- Cybersecurity,
- Human-Centric
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
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Abstract
This paper proposes human-centric cybersecurity frameworks for Autonomous Vehicles (AVs) to bridge the gap between users and technology. As AVs become more prevalent, ensuring their cybersecurity is critical. However, existing frameworks often focus solely on the technological aspects, neglecting the human factors that can significantly impact AV security. This paper argues that integrating human-centric principles into cybersecurity frameworks can enhance AV security and user trust. The proposed frameworks leverage concepts from human factors, psychology, and user experience design to create a holistic approach that considers both technological and human elements. Through a combination of user education, interface design, and system feedback, these frameworks aim to empower users to be active participants in AV cybersecurity. Implementation challenges and future research directions are also discussed.
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References
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