Designing The Drive: Enhancing User Experience through Adaptive Interfaces in Autonomous Vehicles
- URL: http://arxiv.org/abs/2512.12773v1
- Date: Sun, 14 Dec 2025 17:23:28 GMT
- Title: Designing The Drive: Enhancing User Experience through Adaptive Interfaces in Autonomous Vehicles
- Authors: Reeteesha Roy,
- Abstract summary: This paper addresses the implementation of HCI principles in the personalization of interfaces to improve safety, security, and usability for the users.<n>This paper explores the way that personalized interfaces can be devised to increase user engagement and satisfaction.<n>It points out the need for a prerequisite condition of enabling the user to take control of their experience as a state of trust in autonomous systems.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the recent development and integration of autonomous vehicles (AVs) in transportation systems of the modern world, the emphasis on customizing user interfaces to optimize the overall user experience has been growing expediently. Therefore, understanding user needs and preferences is essential to the acceptance and trust of these technologies as they continue to grow in prevalence. This paper addresses the implementation of HCI principles in the personalization of interfaces to improve safety, security, and usability for the users. This paper explores the way that personalized interfaces can be devised to increase user engagement and satisfaction through various HCI strategies such as adaptive design, multi-modal interaction, and user feedback mechanisms. Moreover, this paper puts emphasis on factors of transparency and user control in the design of an interface; hence, allowing users to design or modify their experience could foster an increase in trust in autonomous systems. In so doing, this research touches on the quite influential role HCI will play in this future scenario of autonomous vehicles while designing to ensure relevance to the diverse needs of users while maintaining high standards of safety and security. Discussing various HCI strategies such as adaptive design, multi-modal interaction, and feedback mechanisms to the user, this paper demonstrates how personalized interfaces can enhance significantly both user engagement and satisfaction. Transparency and user control also in designing an interface are further discussed, pointing out the need for a prerequisite condition of enabling the user to take control of their experience as a state of trust in autonomous systems. In summary, this paper points out the role of HCI in the development of autonomous vehicles and addresses numerous needs with respect to those enforced safety and security standards.
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