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Active Markov information-theoretic path planning for robotic environmental sensing

Kian Hsiang Low, John M. Dolan, Pradeep K. Khosla

发表年份
2011
引用次数
32

摘要

Recent research in multi-robot exploration and mapping has focused on sampling environmental fields, which are typi-cally 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 compu-tationally impractical to use these strategies for in situ, real-time 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

关键词

Computer scienceMarkov processMotion planningSampling (signal processing)Markov chainPartially observable Markov decision processMarkov decision processMathematical optimizationGaussian processMarkov model

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