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Run-time Self-classification of External Force using Virtual Point Mass Approximation for Object Manipulation

机译:使用虚拟点质量近似进行对象操纵的外力运行时自分类

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摘要

Many tasks assigned to a manipulator include interactions with its operating environment or manipulating objects, which are detected as forces and moments by the force sensor. It is, however, not easy to detect when a pure external wrench occurred in interactions or manipulations since signals measured by the force sensor consist of the inertial effect of the end-effector and manipulating objects as well as the effect of interactions. In order to separate these combined effects, a self-classification method for the 6-axis force sensor is proposed in this paper by relating the wrench and the virtual point mass. With the proposed method, wrenches due to the end-effector and objects can be classified in run-time without any prior information for them, and thus a pure external wrench can also be distinguished from them. The effectiveness of the proposed self-classification method is verified through experiments.
机译:分配给操纵器的许多任务包括与其操作环境或操纵对象的交互,这些交互被力传感器检测为力和力矩。然而,在相互作用或操纵中检测纯外部扳手何时不容易,因为由力传感器测量的信号包括末端执行器和操纵对象的惯性作用以及相互作用的影响。为了分离这些组合的影响,本文提出了一种通过将扳手和虚拟点质量联系起来的六轴力传感器的自分类方法。利用所提出的方法,由于末端执行器和对象引起的扳手可以在运行时被分类,而没有它们的任何先验信息,因此也可以将纯外部扳手与它们区分开。通过实验验证了所提出的自分类方法的有效性。

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