Toward a Holistic Multi-Criteria Trajectory Evaluation Framework for Autonomous Driving in Mixed Traffic Environment
By: Nouhed Naidja , Stéphane Font , Marc Revilloud and more
Potential Business Impact:
Makes self-driving cars safer and smoother rides.
This paper presents a unified framework for the evaluation and optimization of autonomous vehicle trajectories, integrating formal safety, comfort, and efficiency criteria. An innovative geometric indicator, based on the analysis of safety zones using adaptive ellipses, is used to accurately quantify collision risks. Our method applies the Shoelace formula to compute the intersection area in the case of misaligned and time-varying configurations. Comfort is modeled using indicators centered on longitudinal and lateral jerk, while efficiency is assessed by overall travel time. These criteria are aggregated into a comprehensive objective function solved using a PSO based algorithm. The approach was successfully validated under real traffic conditions via experiments conducted in an urban intersection involving an autonomous vehicle interacting with a human-operated vehicle, and in simulation using data recorded from human driving in real traffic.
Similar Papers
Reliable and Real-Time Highway Trajectory Planning via Hybrid Learning-Optimization Frameworks
Robotics
Makes self-driving cars safely avoid crashes.
A Risk-aware Spatial-temporal Trajectory Planning Framework for Autonomous Vehicles Using QP-MPC and Dynamic Hazard Fields
Robotics
Helps self-driving cars drive safer and smoother.
Adaptive Field Effect Planner for Safe Interactive Autonomous Driving on Curved Roads
Systems and Control
Helps self-driving cars navigate safely and smoothly.