Generalization of a mental rotation skill in humanoid robots

Kristsana Seepanomwan
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引用次数: 1

Abstract

This work demonstrates how generalization ability can be integrated into a neural network model of mental rotation. The model was validated with a physical humanoid robot, the iCub, as simulated participants. The results confirm that the proposed model is capable of solving a mental rotation task consisting of a number of unseen stimuli. Furthermore, characteristic of response time profiles and error rates replicates the same fashion as found in human participants. Mechanisms underlie the successes are forward model training and matching processes, both are independent of objects' identity. This work could benefit robotic applications e.g., planning, decision-making, in which the results of any actions can be seen before really performing them.
类人机器人心理旋转技巧的推广
这项工作展示了如何将泛化能力整合到心理旋转的神经网络模型中。该模型用一个人形机器人iCub作为模拟参与者进行了验证。结果证实,所提出的模型能够解决由许多看不见的刺激组成的心理旋转任务。此外,响应时间概况和错误率的特征复制了人类参与者的相同方式。成功的机制是前向模型训练和匹配过程,两者都独立于对象的身份。这项工作可以使机器人应用受益,例如,计划,决策,其中任何行动的结果都可以在真正执行之前看到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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