Voronoi Tessellation for Efficient Sampling in Gaussian Process-Based Robotic Motion Planning

被引:0
|
作者
Park, Jee-Yong [1 ]
Lee, Hoosang [1 ]
Kim, Changhyeon [1 ]
Ryu, Jeha [2 ]
机构
[1] Gwangju Inst Sci & Technol, Sch Integrated Technol, Gwangju 61005, South Korea
[2] Gwangju Inst Sci & Technol, Sch Integrated Technol, AI Grad Sch, Gwangju 61005, South Korea
关键词
path planning; imitation learning; reinforcement learning; Gaussian process regression;
D O I
10.3390/electronics12194122
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
On-line motion planning in dynamically changing environments poses a significant challenge in the design of autonomous robotic system. Conventional methods often require intricate design choices, while modern deep reinforcement learning (DRL) approaches demand vast amounts of robot motion data. Gaussian process (GP) regression-based imitation learning approaches address such issues by harnessing the GP's data-efficient learning capabilities to infer generalized policies from a limited number of demonstrations, which can intuitively be generated by human operators. GP-based methods, however, are limited in data scalability as computation becomes cubically expensive as the amount of learned data increases. This issue is addressed by proposing Voronoi tessellation sampling, a novel data sampling strategy for learning GP-based robotic motion planning, where spatial correlation between input features and the output of the trajectory prediction model is exploited to select the data to be learned that are informative yet learnable by the model. Where the baseline is set by an imitation learning framework that uses GP regression to infer trajectories that learns policies optimized via a stochastic, reward-based optimization algorithm, experimental results demonstrate that the proposed method can learn optimal policies spanning over all of feature space using fewer data compared to the baseline method.
引用
收藏
页数:15
相关论文
共 50 条
  • [31] Learning an Optimal Sampling Distribution for Efficient Motion Planning
    Cheng, Richard
    Shankar, Krishna
    Burdick, Joel W.
    2020 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS), 2020, : 7485 - 7492
  • [32] A stationary Gaussian process-based radar detector in complex Gaussian colored noise
    Xie, Haihua
    Zhao, Jia
    DIGITAL SIGNAL PROCESSING, 2025, 158
  • [33] Frameworks of Process-Based Sampling Inspection for Ammunition Products
    Zhang, Jian
    Xu, Rong
    Jia, Chunning
    PROCEEDINGS OF 2013 INTERNATIONAL CONFERENCE ON QUALITY, RELIABILITY, RISK, MAINTENANCE, AND SAFETY ENGINEERING (QR2MSE), VOLS I-IV, 2013, : 1237 - 1239
  • [34] Sensor and Sampling-based Motion Planning for Minimally Invasive Robotic Exploration of Osteolytic Lesions
    Liu, Wen P.
    Lucas, Blake C.
    Guerin, Kelleher
    Plaku, Erion
    2011 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS, 2011, : 1346 - 1352
  • [35] Long-horizon Robotic Search and Classification using Sampling-based Motion Planning
    Hollinger, Geoffrey A.
    ROBOTICS: SCIENCE AND SYSTEMS XI, 2015,
  • [36] Sampling-based Coverage Motion Planning for Industrial Inspection Application with Redundant Robotic System
    Jing, Wei
    Polden, Joseph
    Goh, Chun Fan
    Rajaraman, Mabaran
    Lin, Wei
    Shimada, Kenji
    2017 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS), 2017, : 5211 - 5218
  • [37] Constraint-based motion planning using Voronoi diagrams
    Garber, M
    Lin, MC
    ALGORITHMIC FOUNDATIONS OF ROBOTICS V, 2003, 7 : 541 - 558
  • [38] Sensor based motion planning: The hierarchical generalized Voronoi graph
    Choset, H
    Burdick, J
    ALGORITHMS FOR ROBOTIC MOTION AND MANIPULATION, 1997, : 47 - 61
  • [39] Process-based Efficient Power Level Exporter
    Amaral, Marcelo
    Chen, Huamin
    Chiba, Tatsuhiro
    Nakazawa, Rina
    Choochotkaew, Sunyanan
    Lee, Eun Kyung
    Eilam, Tamar
    2024 IEEE 17TH INTERNATIONAL CONFERENCE ON CLOUD COMPUTING, CLOUD 2024, 2024, : 456 - 467
  • [40] A Gaussian process-based Incremental Neural Network for Online Clustering
    Wang, Xiaoyu
    Imura, Jun-ichi
    4TH IEEE INTERNATIONAL CONFERENCE ON SMART CLOUD (SMARTCLOUD 2019) / 3RD INTERNATIONAL SYMPOSIUM ON REINFORCEMENT LEARNING (ISRL 2019), 2019, : 143 - 148