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Application of Competitive Clustering to Acquisition of Human Manipulation Skills Acquisition

机译:竞争集群在掌握人类操纵技能习得收购中的应用

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The work carried out to explore the feasibility of reconstructing human constrained motion manipulation skills is reported. This is achieved by tracing and learning the manipulation performed by a human operator in a haptic rendered virtual environment. The peg-in-hole insertion problem is used as a case study. In the developed system, position and contact force and torque as well as orientation data generated in the haptic rendered virtual environment combined with a priori knowledge about the task are used to identify and learn the skills in the newly demonstrated task. The data obtained from the virtual environment is classified into different cluster sets using a competitive fuzzy clustering algorithm called Competitive Agglomeration (CA). The CA algorithm starts with an over specified number of clusters which compete for feature points in the training procedure. Clusters with small cardinalities lose the competition and gradually vanish. The optimal number of clusters that win the competition is eventually determined. The clusters in the optimum cluster set are tuned using Locally Weighted Regression (LWR) to produce prediction models for robot trajectory performing the physical assembly based on the force/position information received from the rig. A background on the work and its significance is provided. The approach developed is explained and the results obtained so far are presented.
机译:报道了探索重建人类受限的运动操纵技能的可行性的工作。这是通过在触觉呈现的虚拟环境中追踪和学习由人类运营商执行的操纵来实现的。 PEG孔插入问题用作案例研究。在发达的系统中,位置和接触力和扭矩以及在触觉渲染虚拟环境中产生的方向数据以及关于任务的先验知识用于识别和学习新展示的任务中的技能。从虚拟环境获得的数据使用称为竞争团聚(CA)的竞争模糊聚类算法分类为不同的集群集。 CA算法以超过指定数量的群集竞争,该集群竞争培训过程中的特征点。小基数的集群失去了竞争,逐渐消失了。最终确定赢得比赛的最佳群集数。使用本地加权回归(LWR)调谐最佳簇集中的簇,以基于从钻机接收的力/位置信息来生产用于执行物理组件的机器人轨迹的预测模型。提供了工作的背景及其重要性。发出的方法和到目前为止所获得的方法。

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