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Achieving 'synergy' in cognitive behavior of humanoids via deep learning of dynamic visuo-motor-attentional coordination

机译:通过深入学习动态Visuo-Motion-Interpressal协调来实现人形的认知行为中的“协同作用”

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The current study examines how adequate coordination among different cognitive processes including visual recognition, attention switching, action preparation and generation can be developed via learning of robots by introducing a novel model, the Visuo-Motor Deep Dynamic Neural Network (VMDNN). The proposed model is built on coupling of a dynamic vision network, a motor generation network, and a higher level network allocated on top of these two. The simulation experiments using the iCub simulator were conducted for cognitive tasks including visual object manipulation responding to human gestures. The results showed that "synergetic" coordination can be developed via iterative learning through the whole network when spatio-temporal hierarchy and temporal one can be self-organized in the visual pathway and in the motor pathway, respectively, such that the higher level can manipulate them with abstraction.
机译:目前的研究审查了在包括视觉识别,注意力切换,动作准备和生成中的不同认知过程之间的充分协调,通过引入新颖的模型,可以通过学习机器人,VISO电机深动态神经网络(VMDNN)来开发机器人。所提出的模型是基于动态视觉网络,电机生成网络和在这两个顶部分配的更高级别网络的耦合。使用ICUB模拟器的仿真实验进行了认知任务,包括响应人类手势的视觉物体操纵。结果表明,当在空间阶层和时间可以在视觉途径和电机路径中自我组织时,可以通过整个网络通过迭代学习来开发“协同”协调,分别可以在视觉途径和电机路径中,使得更高的水平可以操纵他们用抽象。

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