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Integrated Decision Making and Planning Based on Feasible Region Construction for Autonomous Vehicles Considering Prediction Uncertainty

Lu Xiong, Yixuan Zhang, Yuanzhi Liu, Hongyu Xiao, Chen Tang

2023IEEE Transactions on Intelligent Vehicles16 citationsDOI

Abstract

For autonomous vehicles, scene understanding is still one of the major challenges, which needs to be well handled to avoid jittery decisions and unsmooth trajectories. Furthermore, uncertainty in trajectory prediction of traffic participants directly affects decision results, and thus contributes to safety, comfort and efficiency. This article proposes an integrated decision-making and planning (DNP) framework considering the uncertainty in trajectory prediction based on Partially Observable Markov Decision Process (POMDP). A multivariate Gaussian distribution is utilized to model the propagation of uncertainty in trajectory prediction process. To plan smooth trajectories, a feasible region construction is proposed based on fine-grained decision results to bridge the gap between decision-making and planning. Simulation and experimental results confirm that the proposed framework leads to a safer and smoother trajectory compared to command-type decision outputs by increasing the safety distance by 1.27 m and reducing the curvature fluctuations by 2.08.

Topics & Concepts

TrajectoryPartially observable Markov decision processComputer scienceSAFERProcess (computing)Bridge (graph theory)Markov decision processPlan (archaeology)Markov processMathematical optimizationMarkov chainMachine learningMarkov modelMathematicsInternal medicinePhysicsStatisticsComputer securityAstronomyHistoryArchaeologyMedicineOperating systemAutonomous Vehicle Technology and SafetyTraffic Prediction and Management TechniquesVideo Surveillance and Tracking Methods
Integrated Decision Making and Planning Based on Feasible Region Construction for Autonomous Vehicles Considering Prediction Uncertainty | Litcius