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Interactive learning in human-robot collaboration

Tetsuya Ogata, Noritaka Masago, Shigeki Sugano, Jun Tani

Year
2004
Citations
11

Abstract

In this paper, we investigated interactive learning between human subjects and robot experimentally, and its essential characteristics are examined using the dynamical systems approach. Our research concentrated on the navigation system of a specially developed humanoid robot called Robovie and seven human subjects whose eyes were covered, making them dependent on the robot for directions. We compared the usual feed-forward neural network (FFNN) without recursive connections and the recurrent neural network (RNN). Although the performances obtained with both the RNN and the FFNN improved in the early stages of learning, as the subject changed the operation by learning on its own, all performances gradually became unstable and failed. Results of a questionnaire given to the subjects confirmed that the FFNN gives better mental impressions, especially from the aspect of operability. When the robot used a consolidation-learning algorithm using the rehearsal outputs of the RNN, the performance improved even when interactive learning continued for a long time. The questionnaire results then also confirmed that the subject's mental impressions of the RNN improved significantly. The dynamical systems analysis of RNNs supports these differences.

Keywords

Recurrent neural networkComputer scienceHumanoid robotOperabilityArtificial intelligenceRobotArtificial neural networkFeedforward neural networkInteractive LearningMultimedia

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