冗余机器人的感觉-运动映射学习

M. Lopes, J. Santos-Victor
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引用次数: 13

摘要

人形机器人通常从事需要多个自由度和感官输入之间协调的任务,通常通过使用感觉-运动地图(SMMs)来实现。大多数情况下,人形机器人的可用自由度比解决特定任务所需的自由度要多。尽管如此,大多数学习这些smm的方法都没有考虑到这一点。最多,冗余自由度(冗余度,DOR)被一些辅助标准或启发式规则“冻结”。我们提出了一种解决方法来学习向前/向后模型的问题,当地图不是内射时,如冗余机器人。我们建议使用“最小阶SMM”,将所需的图像配置和DORs作为输入变量,而非冗余的dof被视为输出。由于dor在此过程中没有冻结,因此可以使用它们来解决其他任务或标准。该方法为机器人在工作空间中的定位提供了一个全局解决方案,而不需要以增量的方式移动。我们提供了一些例子,其中这些任务对应于可以在线解决的优化标准。我们展示了如何使用局部统计学习方法学习“最小阶SMM”。讨论了仿人机器人的大量实验结果来验证该方法,展示了如何学习冗余系统的最小阶SMM并利用冗余来完成辅助任务
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Sensory-Motor Maps for Redundant Robots
Humanoid robots are routinely engaged in tasks requiring the coordination between multiple degrees of freedom and sensory inputs, often achieved through the use of sensory-motor maps (SMMs). Most of the times, humanoid robots have more degrees of freedom (DOFs) available than those necessary to solve specific tasks. Notwithstanding, the majority of approaches for learning these SMMs do not take that into account. At most, the redundant degrees of freedom (degrees of redundancy, DOR) are "frozen" with some auxiliary criteria or heuristic rule. We present a solution to the problem of learning the forward/backward model, when the map is not injective, as in redundant robots. We propose the use of a "minimum order SMM" that takes the desired image configuration and the DORs as input variables, while the non-redundant DOFs are viewed as outputs. Since the DORs are not frozen in this process, they can be used to solve additional tasks or criteria. This method provides a global solution for positioning a robot in the workspace, without the need to move in an incremental way. We provide examples where these tasks correspond to optimization criteria that can be solved online. We show how to learn the "minimum order SMM" using a local statistical learning method. Extensive experimental results with a humanoid robot are discussed to validate the approach, showing how to learn the minimum order SMM of a redundant system and using the redundancy to accomplish auxiliary tasks
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