基于分层som编码的人形触觉手势制作

G. Pierris, T. Dahl
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引用次数: 6

摘要

皮层层次结构的存在早已被确立,而对控制的传感器-运动数据进行层次编码的优势也早已被认识到。不太清楚的是这种层次结构被构建和随后使用的发展过程。本文提出了一种新的算法,用于在动态分层神经网络中编码顺序传感器和执行器数据,该神经网络可以随着观察到的相互作用的长度而增长。该算法使用了一种发展机器人方法,因为它扩展了建构主义学习架构,这是一种婴儿认知发展的计算理论。本文通过实验数据证明了扩展算法如何通过支持目标导向控制来超越原始理论。研究的领域是类人机器人触觉手势的编码与再现。特别地,我们展示了使用演示编程方法对笔画手势进行编码的结果。我们的研究结果证明了这种新颖的编码方法是如何使具有触摸敏感指尖的Nao类人机器人在内力和外力扰动的情况下成功地编码和再现笔画手势的。
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Humanoid Tactile Gesture Production using a Hierarchical SOM-based Encoding
The existence of cortical hierarchies has long since been established and the advantages of hierarchical encoding of sensor-motor data for control, have long been recognized. Less well understood are the developmental processes whereby such hierarchies are constructed and subsequently used. This paper presents a new algorithm for encoding sequential sensor and actuator data in a dynamic, hierarchical neural network that can grow to accommodate the length of the observed interactions. The algorithm uses a developmental robotics methodology as it extends the Constructivist Learning Architecture, a computational theory of infant cognitive development. This paper presents experimental data demonstrating how the extended algorithm goes beyond the original theory by supporting goal oriented control. The domain studied is the encoding and reproduction of tactile gestures in humanoid robots. In particular, we present results from using a Programming by Demonstration approach to encode a stroke gesture. Our results demonstrate how the novel encoding enables a Nao humanoid robot with a touch sensitive fingertip to successfully encode and reproduce a stroke gesture in the presence of perturbations from internal and external forces.
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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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3 months
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