$ΞΌ$Drive: User-Controlled Autonomous Driving
July 18, 2024 Β· Declared Dead Β· π arXiv.org
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Authors
Kun Wang, Christopher M. Poskitt, Yang Sun, Jun Sun, Jingyi Wang, Peng Cheng, Jiming Chen
arXiv ID
2407.13201
Category
cs.SE: Software Engineering
Citations
2
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Autonomous Vehicles (AVs) rely on sophisticated Autonomous Driving Systems (ADSs) to provide passengers a satisfying and safe journey. The individual preferences of riders plays a crucial role in shaping the perception of safety and comfort while they are in the car. Existing ADSs, however, lack mechanisms to systematically capture and integrate rider preferences into their planning modules. To bridge this gap, we propose $ΞΌ$Drive, an event-based Domain-Specific Language (DSL) designed for specifying autonomous vehicle behaviour. $ΞΌ$Drive enables users to express their preferences through rules triggered by contextual events, such as encountering obstacles or navigating complex traffic situations. These rules dynamically adjust the parameter settings of the ADS planning module, facilitating seamless integration of rider preferences into the driving plan. In our evaluation, we demonstrate the feasibility and efficacy of $ΞΌ$Drive by integrating it with the Apollo ADS framework. Our findings show that users can effectively influence Apollo's planning through $ΞΌ$Drive, assisting ADS in achieving improved compliance with traffic regulations. The response time for $ΞΌ$Drive commands remains consistently at the second or millisecond level. This suggests that $ΞΌ$Drive may help pave the way to more personalizsed and user-centric AV experiences.
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