Rapid explorative direct inverse kinematics learning of relevant locations for active vision

Kristoffer Öfjäll, M. Felsberg
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引用次数: 3

Abstract

An online method for rapidly learning the inverse kinematics of a redundant robotic arm is presented addressing the special requirements of active vision for visual inspection tasks. The system is initialized with a model covering a small area around the starting position, which is then incrementally extended by exploration. The number of motions during this process is minimized by only exploring configurations required for successful completion of the task at hand. The explored area is automatically extended online and on demand. To achieve this, state of the art methods for learning and numerical optimization are combined in a tight implementation where parts of the learned model, the Jacobians, are used during optimization, resulting in significant synergy effects. In a series of standard experiments, we show that the integrated method performs better than using both methods sequentially.
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主动视觉相关位置的快速探索性直接逆运动学学习
针对主动视觉在视觉检测任务中的特殊要求,提出了一种冗余度机械臂在线快速学习运动学逆解的方法。系统初始化时,模型覆盖起始位置周围的一小块区域,然后通过勘探逐步扩展。通过仅探索成功完成手头任务所需的配置,在此过程中运动的数量最小化。探索的区域自动扩展在线和按需。为了实现这一目标,将最先进的学习方法和数值优化方法结合在一个紧密的实现中,其中在优化过程中使用了学习模型的某些部分,即雅可比矩阵,从而产生了显著的协同效应。在一系列的标准实验中,我们证明了集成方法比顺序使用两种方法的效果更好。
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