Litcius/Paper detail

Curve Trajectory Model for Human Preferred Path Planning of Automated Vehicles

Gergő Ferenc Ignéczi, Ernő Horváth, Roland Tóth, Krisztian Nyilas

2024Automotive Innovation14 citationsDOIOpen Access PDF

Abstract

Abstract Automated driving systems are often used for lane keeping tasks. By these systems, a local path is planned ahead of the vehicle. However, these paths are often found unnatural by human drivers. In response to this, this paper proposes a linear driver model, which can calculate node points reflective of human driver preferences and based on these node points a human driver preferred motion path can be designed for autonomous driving. The model input is the road curvature, effectively harnessed through a self-developed Euler-curve-based curve fitting algorithm. A comprehensive case study is undertaken to empirically validate the efficacy of the proposed model, demonstrating its capacity to emulate the average behavioral patterns observed in human curve path selection. Statistical analyses further underscore the model's robustness, affirming the authenticity of the established relationships. This paradigm shift in trajectory planning holds promising implications for the seamless integration of autonomous driving systems with human driving preferences.

Topics & Concepts

Robustness (evolution)TrajectoryMotion planningComputer sciencePath (computing)CurvatureNode (physics)SimulationAdvanced driver assistance systemsArtificial intelligenceMathematicsEngineeringRobotBiochemistryPhysicsChemistryStructural engineeringGeometryAstronomyGeneProgramming languageAutonomous Vehicle Technology and SafetyTraffic control and managementTraffic and Road Safety
Curve Trajectory Model for Human Preferred Path Planning of Automated Vehicles | Litcius