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Discovery of other individuals by projecting a self-model through imitation

Ryunosuke Yokoya, Tetsuya Ogata, Jun Tani, Kazunori Komatani, Hiroshi G. Okuno

发表年份
2007
引用次数
11

摘要

This paper proposes a novel model which enables a humanoid robot infant to discover other individual (e.g. human parent). In this work, the authors define “other individual” as an actor which can be predicted by a self-model. For modeling the developmental process of discovering ability, the following three approaches are employed. (i) Projection of a selfmodel for predicting other individual’s actions. (ii) Mediation by a physical object between self and other individual. (iii) Introduction of infant imitation by parent. For creating the self-model of a robot, we apply Recurrent Neural Network with Parametric Bias (RNNPB) model which can learn the robot’s body dynamics. For the other-model of a human, conventional hierarchical neural networks are attached to the RNNPB model as “conversion modules”. Our target task is a moving an object. For evaluation of our model, human discovery experiments by the robot projecting its self-model were conducted. The results demonstrated that our method enabled the robot to predict the human’s motions, and to estimate the human’s position fairly accurately, which proved its adequacy.

关键词

ImitationComputer scienceHumanoid robotRobotArtificial intelligenceParametric modelProjection (relational algebra)Process (computing)Artificial neural networkObject (grammar)

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