Informative Path Planning of Autonomous Vehicle for Parking Occupancy Estimation

CoRR(2023)

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摘要
Parking occupancy estimation holds significant potential in facilitating parking resource management and mitigating traffic congestion. Existing approaches employ robotic systems to detect the occupancy status of individual parking spaces and primarily focus on enhancing detection accuracy through perception pipelines. However, these methods often overlook the crucial aspect of robot path planning, which can hinder the accurate estimation of the entire parking area. In light of these limitations, we introduce the problem of informative path planning for parking occupancy estimation using autonomous vehicles and formulate it as a Partially Observable Markov Decision Process (POMDP) task. Then, we develop an occupancy state transition model and introduce a Bayes filter to estimate occupancy based on noisy sensor measurements. Subsequently, we propose the Monte Carlo Bayes Filter Tree, a computationally efficient algorithm that leverages progressive widening to generate informative paths. We demonstrate that the proposed approach outperforms the benchmark methods in diverse simulation environments, effectively striking a balance between optimality and computational efficiency.
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关键词
Autonomous Vehicles,Path Planning,Path Information,Occupancy Estimates,Informative Path Planning,Computational Efficiency,Traffic Congestion,Sensor Measurements,Transition Model,Markov Decision Process,Robot Motion,Parking Spaces,Occupancy State,State Transition Model,Planning Concepts,Field Of View,Previous Observations,Time Step,Number Of Visits,Monte Carlo Tree Search,Planning Horizon,Random Walk Algorithm,Reward Function,Planning Steps,Node Activity,Child Nodes,Optimal Action,Observation Space,Feasible Path
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