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      Spatial Concept Acquisition for a Mobile Robot that Integrates Self-Localization and Unsupervised Word Discovery from Spoken Sentences

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          Abstract

          In this paper, we propose a novel unsupervised learning method for the lexical acquisition of words related to places visited by robots, from human continuous speech signals. We address the problem of learning novel words by a robot that has no prior knowledge of these words except for a primitive acoustic model. Further, we propose a method that allows a robot to effectively use the learned words and their meanings for self-localization tasks. The proposed method is nonparametric Bayesian spatial concept acquisition method (SpCoA) that integrates the generative model for self-localization and the unsupervised word segmentation in uttered sentences via latent variables related to the spatial concept. We implemented the proposed method SpCoA on SIGVerse, which is a simulation environment, and TurtleBot2, which is a mobile robot in a real environment. Further, we conducted experiments for evaluating the performance of SpCoA. The experimental results showed that SpCoA enabled the robot to acquire the names of places from speech sentences. They also revealed that the robot could effectively utilize the acquired spatial concepts and reduce the uncertainty in self-localization.

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          RatSLAM: a hippocampal model for simultaneous localization and mapping

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            Bayesian unsupervised word segmentation with nested Pitman-Yor language modeling

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              Mutual learning of an object concept and language model based on MLDA and NPYLM

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                Author and article information

                Journal
                2016-02-03
                2016-03-16
                Article
                1602.01208
                4b194fb7-bd23-4c03-8a05-485117d9ec49

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                Draft submitted to IEEE Transactions on Autonomous Mental Development (TAMD)
                cs.AI cs.CL cs.RO

                Theoretical computer science,Robotics,Artificial intelligence
                Theoretical computer science, Robotics, Artificial intelligence

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