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Role playing learning for socially concomitant mobile robot navigation
Author(s) -
Li Mingming,
Jiang Rui,
Ge Shuzhi Sam,
Lee Tong Heng
Publication year - 2018
Publication title -
caai transactions on intelligence technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.613
H-Index - 15
ISSN - 2468-2322
DOI - 10.1049/trit.2018.0008
Subject(s) - reinforcement learning , mobile robot , robot , computer science , artificial intelligence , process (computing) , scheme (mathematics) , set (abstract data type) , artificial neural network , pedestrian , human–computer interaction , machine learning , engineering , mathematics , transport engineering , mathematical analysis , programming language , operating system
In this study, the authors present the role playing learning scheme for a mobile robot to navigate socially with its human companion in populated environments. Neural networks (NNs) are constructed to parameterise a stochastic policy that directly maps sensory data collected by the robot to its velocity outputs, while respecting a set of social norms. An efficient simulative learning environment is built with maps and pedestrians trajectories collected from a number of real‐world crowd data sets. In each learning iteration, a robot equipped with the NN policy is created virtually in the learning environment to play itself as a companied pedestrian and navigate towards a goal in a socially concomitant manner. Thus, this process is called role playing learning, which is formulated under a reinforcement learning framework. The NN policy is optimised end‐to‐end using trust region policy optimisation, with consideration of the imperfectness of robot's sensor measurements. Simulative and experimental results are provided to demonstrate the efficacy and superiority of the proposed method.

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