Actively Improving Robot Navigation On Different Terrains Using Gaussian Process Mixture Models

被引:0
|
作者
Nardi, Lorenzo [1 ]
Stachniss, Cyrill [1 ]
机构
[1] Univ Bonn, Bonn, Germany
关键词
D O I
10.1109/icra.2019.8794079
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Robot navigation in outdoor environments is exposed to detrimental factors such as vibrations or power consumption due to the different terrains on which the robot navigates. In this paper, we address the problem of actively improving navigation by planning paths that aim at reducing over time phenomena such as vibrations during traversal. Our approach uses a Gaussian Process (GP) mixture model and an aerial image of the environment to learn and improve continuously a place-dependent model of such phenomena from the experiences of the robot. We use this model to plan paths that trade-off the exploration of unknown promising regions and the exploitation of known areas where the impact of the detrimental factors on navigation is low, leading to an improved navigation over time. We implemented our approach and thoroughly tested it using real-world data. Our experiments suggest that our approach with no initial information leads the robot, after few runs, to follow paths along which it experiences similar vibrations or energy consumption as if it was following the optimal path computed given the ground truth information.
引用
收藏
页码:4104 / 4110
页数:7
相关论文
共 50 条
  • [1] Particle Filters using Gaussian Mixture Models for Vision-Based Navigation
    Hong, Kyungwoo
    Kim, Sungjoong
    Bang, Hyochoong
    Kim, Jin-Won
    Seo, Ilwon
    Pak, Chang-Ho
    JOURNAL OF THE KOREAN SOCIETY FOR AERONAUTICAL AND SPACE SCIENCES, 2019, 47 (04) : 274 - 282
  • [2] Biometrics: Different approaches for using Gaussian mixture models in handwriting
    Schimke, S
    Valsamakis, A
    Vielhauer, C
    Stylianou, Y
    COMMUNICATIONS AND MULTIMEDIA SECURITY, 2005, 3677 : 261 - 263
  • [3] Improving Urban Travel Time Estimation Using Gaussian Mixture Models
    Gemma, Andrea
    Mannini, Livia
    Crisalli, Umberto
    Cipriani, Ernesto
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2024, : 1 - 10
  • [4] Robot Model Learning with Gaussian Process Mixture Model
    Park, Sooho
    Huang, Yu
    Goh, Chun Fan
    Shimada, Kenji
    2018 IEEE 14TH INTERNATIONAL CONFERENCE ON AUTOMATION SCIENCE AND ENGINEERING (CASE), 2018, : 1263 - 1268
  • [5] Gaussian Mixture Modeling with Gaussian Process Latent Variable Models
    Nickisch, Hannes
    Rasmussen, Carl Edward
    PATTERN RECOGNITION, 2010, 6376 : 272 - 282
  • [6] ROBOT NAVIGATION IN UNKNOWN GENERALIZED POLYGONAL TERRAINS USING VISION SENSORS
    RAO, NSV
    IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS, 1995, 25 (06): : 947 - 962
  • [7] Smooth Path Planning Using a Gaussian Process Regression Map for Mobile Robot Navigation
    Serdel, Quentin
    Marzat, Julien
    Moras, Julien
    13TH INTERNATIONAL WORKSHOP ON ROBOT MOTION AND CONTROL, ROMOCO 2024, 2024, : 273 - 278
  • [8] Coding using Gaussian mixture and generalized Gaussian models
    Su, JK
    Mersereau, RM
    INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, PROCEEDINGS - VOL I, 1996, : 217 - 220
  • [9] Robot Health Estimation through Unsupervised Anomaly Detection using Gaussian Mixture Models
    Schnell, T.
    Plasberg, C.
    Puck, L.
    Buettner, T.
    Eichmann, C.
    Heppner, G.
    Roennau, A.
    Dillmann, R.
    2020 IEEE 16TH INTERNATIONAL CONFERENCE ON AUTOMATION SCIENCE AND ENGINEERING (CASE), 2020, : 1037 - 1042
  • [10] Dynamic Multimode Process Modeling and Monitoring Using Adaptive Gaussian Mixture Models
    Xie, Xiang
    Shi, Hongbo
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2012, 51 (15) : 5497 - 5505