Learning dynamic cognitive map with autonomous navigation

被引:0
作者
de Tinguy, Daria [1 ]
Verbelen, Tim [2 ]
Dhoedt, Bart [1 ]
机构
[1] Department of Engineering and Architecture, Ghent University, IMEC, Ghent
[2] Verses, Los Angeles, CA
关键词
active inference; autonomous navigation; cognitive map; dynamic mapping; knowledge learning; structure learning;
D O I
10.3389/fncom.2024.1498160
中图分类号
学科分类号
摘要
Inspired by animal navigation strategies, we introduce a novel computational model to navigate and map a space rooted in biologically inspired principles. Animals exhibit extraordinary navigation prowess, harnessing memory, imagination, and strategic decision-making to traverse complex and aliased environments adeptly. Our model aims to replicate these capabilities by incorporating a dynamically expanding cognitive map over predicted poses within an active inference framework, enhancing our agent's generative model plasticity to novelty and environmental changes. Through structure learning and active inference navigation, our model demonstrates efficient exploration and exploitation, dynamically expanding its model capacity in response to anticipated novel un-visited locations and updating the map given new evidence contradicting previous beliefs. Comparative analyses in mini-grid environments with the clone-structured cognitive graph model (CSCG), which shares similar objectives, highlight our model's ability to rapidly learn environmental structures within a single episode, with minimal navigation overlap. Our model achieves this without prior knowledge of observation and world dimensions, underscoring its robustness and efficacy in navigating intricate environments. Copyright © 2024 de Tinguy, Verbelen and Dhoedt.
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  • [1] Ali M., Jardali H., Roy N., Liu L., “Autonomous navigation, mapping and exploration with Gaussian processes,”, Proceedings of the Robotics: Science and Systems (RSS), (2023)
  • [2] Cognitive map, (2024)
  • [3] Aru J., Druke M., Pikamae J., Larkum M.E., Mental navigation and the neural mechanisms of insight, Trends Neurosci, 46, pp. 100-109, (2023)
  • [4] Asano Y., Rupprecht C., Vedaldi A., “Self-labelling via simultaneous clustering and representation learning,”, International Conference on Learning Representations, (2020)
  • [5] Balaguer J., Spiers H., Hassabis D., Summerfield C., Neural mechanisms of hierarchical planning in a virtual subway network, Neuron, 90, pp. 893-903, (2016)
  • [6] Bush D., Barry C., Manson D., Burgess N., Using grid cells for navigation, Neuron, 87, pp. 507-520, (2015)
  • [7] Campos C., Elvira R., Rodriguez J.J.G., Montiel J.M.M., Tardos J.D., ORB-SLAM3: an accurate open-source library for visual, visual-inertial and multi-map SLAM, CoRR, abs/2007.11898, (2020)
  • [8] Chaplot D.S., Gandhi D., Gupta S., Gupta A., Salakhutdinov R., “Learning to explore using active neural slam,”, International Conference on Learning Representations (ICLR), (2020)
  • [9] Chaplot D.S., Salakhutdinov R., Gupta A., Gupta S., Neural topological SLAM for visual navigation, CoRR, abs/2005.12256, (2020)
  • [10] Chevalier-Boisvert M., Willems L., Pal S., Minimalistic gridworld environment for openai gym, (2018)