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PaaS: Planning as a Service for reactive driving in CARLA Leaderboard

Nhat Hao Truong, Huu Thien, Tuan Anh Tran, Minh‐Quang Tran, Duc Duy Nguyen, Ngoc Viet Phuong Pham

Year
2023
Citations
3

Abstract

End-to-end deep learning approaches have been proven to be efficient in autonomous driving and robotics. By using deep learning techniques for decision-making, those systems are often referred to as a black box, and the result is driven by data. In this paper, we propose PaaS (Planning as a Service), a vanilla module to generate local trajectory planning for autonomous driving in CARLA simulation. Our method is submitted in International CARLA Autonomous Driving Leaderboard (CADL), which is a platform to evaluate the driving proficiency of autonomous agents in realistic traffic scenarios. Our approach focuses on reactive planning in Frenet frame under complex urban street’s constraints and driver’s comfort. The planner generates a collection of feasible trajectories, leveraging heuristic cost functions with controllable driving style factor to choose the optimal-control path that satisfies safe traveling criteria. PaaS can provide sufficient solutions to handle well under challenging traffic situations in CADL. As the strict evaluation in CADL Map Track, our approach ranked 3rd out of 9 submissions regarding the measure of driving score. However, with the focus on minimizing the risk of maneuver and ensuring passenger safety, our figures corresponding to infraction penalties dominate the two leading submissions by 20 percent.

Keywords

Computer scienceService (business)Computer networkBusinessMarketing

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