ROAISYSep 21, 2022

Partially Observable Markov Decision Processes in Robotics: A Survey

arXiv:2209.10342v1210 citationsh-index: 56
Originality Synthesis-oriented
AI Analysis

It synthesizes existing knowledge to help robotics practitioners apply POMDPs effectively and identify research gaps, making it incremental rather than novel.

This survey addresses the gap between POMDP theory and robotics applications by analyzing how POMDPs model decision-making under uncertainty in tasks like localization and autonomous driving, providing guidance for practitioners and researchers.

Noisy sensing, imperfect control, and environment changes are defining characteristics of many real-world robot tasks. The partially observable Markov decision process (POMDP) provides a principled mathematical framework for modeling and solving robot decision and control tasks under uncertainty. Over the last decade, it has seen many successful applications, spanning localization and navigation, search and tracking, autonomous driving, multi-robot systems, manipulation, and human-robot interaction. This survey aims to bridge the gap between the development of POMDP models and algorithms at one end and application to diverse robot decision tasks at the other. It analyzes the characteristics of these tasks and connects them with the mathematical and algorithmic properties of the POMDP framework for effective modeling and solution. For practitioners, the survey provides some of the key task characteristics in deciding when and how to apply POMDPs to robot tasks successfully. For POMDP algorithm designers, the survey provides new insights into the unique challenges of applying POMDPs to robot systems and points to promising new directions for further research.

Foundations

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