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Inter-modality mapping in robot with recurrent neural network

机译:递归神经网络的机器人多态映射

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摘要

A system for mapping between different sensory modalities was developed for a robot system to enable it to generate motions expressing auditory signals and sounds generated by object movement. A recurrent neural network model with parametric bias, which has good generalization ability, is used as a learning model. Since the correspondences between auditory signals and visual signals are too numerous to memorize, the ability to generalize is indispensable. This system was implemented in the "Keepon" robot, and the robot was shown horizontal reciprocating or rotating motions with the sound of friction and falling or overturning motion with the sound of collision by manipulating a box object. Keepon behaved appropriately not only from learned events but also from unknown events and generated various sounds in accordance with observed motions.
机译:为机器人系统开发了一种在不同的感觉模态之间进行映射的系统,以使其能够生成表达听觉信号和物体运动产生的声音的运动。具有良好泛化能力的具有参数偏差的递归神经网络模型被用作学习模型。由于听觉信号和视觉信号之间的对应关系太多,难以记忆,因此泛化能力是必不可少的。该系统是在“ Keepon”机器人中实现的,通过操纵盒子对象,该机器人被显示为带有摩擦声的水平往复运动或旋转运动,以及带有碰撞声的下降或倾覆运动。 Keepon不仅从学习到的事件中表现出适当的行为,而且在未知事件中也表现出适当的行为,并根据观察到的动作生成各种声音。

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