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Active Markov information-theoretic path planning for robotic environmental sensing

Published: 02 May 2011 Publication History

Abstract

Recent research in multi-robot exploration and mapping has focused on sampling environmental fields, which are typically modeled using the Gaussian process (GP). Existing information-theoretic exploration strategies for learning GP-based environmental field maps adopt the non-Markovian problem structure and consequently scale poorly with the length of history of observations. Hence, it becomes computationally impractical to use these strategies for in situ, realtime active sampling. To ease this computational burden, this paper presents a Markov-based approach to efficient information-theoretic path planning for active sampling of GP-based fields. We analyze the time complexity of solving the Markov-based path planning problem, and demonstrate analytically that it scales better than that of deriving the non-Markovian strategies with increasing length of planning horizon. For a class of exploration tasks called the transect sampling task, we provide theoretical guarantees on the active sampling performance of our Markov-based policy, from which ideal environmental field conditions and sampling task settings can be established to limit its performance degradation due to violation of the Markov assumption. Empirical evaluation on real-world temperature and plankton density field data shows that our Markov-based policy can generally achieve active sampling performance comparable to that of the widely-used non-Markovian greedy policies under less favorable realistic field conditions and task settings while enjoying significant computational gain over them.

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  • (2020)Private outsourced Bayesian optimizationProceedings of the 37th International Conference on Machine Learning10.5555/3524938.3525423(5231-5242)Online publication date: 13-Jul-2020
  • (2019)Implicit posterior variational inference for deep Gaussian processesProceedings of the 33rd International Conference on Neural Information Processing Systems10.5555/3454287.3455586(14502-14513)Online publication date: 8-Dec-2019
  • (2018)Gaussian process decentralized data fusion meets transfer learning in large-scale distributed cooperative perceptionProceedings of the Thirty-Second AAAI Conference on Artificial Intelligence and Thirtieth Innovative Applications of Artificial Intelligence Conference and Eighth AAAI Symposium on Educational Advances in Artificial Intelligence10.5555/3504035.3504510(3876-3883)Online publication date: 2-Feb-2018
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Published In

cover image ACM Other conferences
AAMAS '11: The 10th International Conference on Autonomous Agents and Multiagent Systems - Volume 2
May 2011
478 pages
ISBN:0982657161

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  • IFAAMAS

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International Foundation for Autonomous Agents and Multiagent Systems

Richland, SC

Publication History

Published: 02 May 2011

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Author Tags

  1. Gaussian process
  2. active learning
  3. adaptive sampling
  4. multi-robot exploration and mapping
  5. non-myopic path planning

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Overall Acceptance Rate 1,155 of 5,036 submissions, 23%

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Cited By

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  • (2020)Private outsourced Bayesian optimizationProceedings of the 37th International Conference on Machine Learning10.5555/3524938.3525423(5231-5242)Online publication date: 13-Jul-2020
  • (2019)Implicit posterior variational inference for deep Gaussian processesProceedings of the 33rd International Conference on Neural Information Processing Systems10.5555/3454287.3455586(14502-14513)Online publication date: 8-Dec-2019
  • (2018)Gaussian process decentralized data fusion meets transfer learning in large-scale distributed cooperative perceptionProceedings of the Thirty-Second AAAI Conference on Artificial Intelligence and Thirtieth Innovative Applications of Artificial Intelligence Conference and Eighth AAAI Symposium on Educational Advances in Artificial Intelligence10.5555/3504035.3504510(3876-3883)Online publication date: 2-Feb-2018
  • (2018)Decentralized high-dimensional bayesian optimization with factor graphsProceedings of the Thirty-Second AAAI Conference on Artificial Intelligence and Thirtieth Innovative Applications of Artificial Intelligence Conference and Eighth AAAI Symposium on Educational Advances in Artificial Intelligence10.5555/3504035.3504430(3231-3238)Online publication date: 2-Feb-2018
  • (2018)Stochastic Optimization for Autonomous Vehicles with Limited Control Authority2018 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)10.1109/IROS.2018.8594020(2395-2401)Online publication date: 1-Oct-2018
  • (2017)Distributed batch Gaussian process optimizationProceedings of the 34th International Conference on Machine Learning - Volume 7010.5555/3305381.3305480(951-960)Online publication date: 6-Aug-2017
  • (2017)A generalized stochastic variational bayesian hyperparameter learning framework for sparse spectrum Gaussian process regressionProceedings of the Thirty-First AAAI Conference on Artificial Intelligence10.5555/3298483.3298530(2007-2014)Online publication date: 4-Feb-2017
  • (2016)A distributed variational inference framework for unifying parallel sparse Gaussian process regression modelsProceedings of the 33rd International Conference on International Conference on Machine Learning - Volume 4810.5555/3045390.3045432(382-391)Online publication date: 19-Jun-2016
  • (2016)Near-optimal active learning of multi-output Gaussian processesProceedings of the Thirtieth AAAI Conference on Artificial Intelligence10.5555/3016100.3016227(2351-2357)Online publication date: 12-Feb-2016
  • (2016)Gaussian process planning with lipschitz continuous reward functionsProceedings of the Thirtieth AAAI Conference on Artificial Intelligence10.5555/3016100.3016159(1860-1866)Online publication date: 12-Feb-2016
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