Programming by Demonstration of Object Grasping Using Gaussian Mixture Model Based Techniques


Authors

DOI:

https://doi.org/10.22517/23447214.16501

Keywords:

Robotics, Robot programming by demonstration, robotic grasping.

Abstract

A programming by demonstration techniques combination that allows object grasping is presented. The techniques are the task-parameterized Gaussian mixture model and the Gaussian mixture models. With the first technique, a path hand to the new position and orientation of the object is estimated. Nevertheless, the final value obtained of position and orientation is not always accurate, so it encourages to apply a second method or step correction using Gaussian mixture models. A real experiment allow us to obtain a database of different grasps to subsequently validate the proposed algorithm. The obtained results by using a grasp quality subjective evaluation and graphics error show an improvement to the result generated only by using the task-parameterized Gaussian mixture model

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Author Biographies

Jose Gabriel Hoyos Gutierrez, Univ. del Quindio

Msc. Ingenieria Electrica, UTP

Doctor en Ingeniería - Univ. Nacional de Colombia

Docente.

Alvaro Andrés Navarro Pérez, Univ. del Quindio

Ingeniero Electrónico

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Published

2018-03-30

How to Cite

Hoyos Gutierrez, J. G., & Navarro Pérez, A. A. (2018). Programming by Demonstration of Object Grasping Using Gaussian Mixture Model Based Techniques. Scientia Et Technica, 23(1), 18–24. https://doi.org/10.22517/23447214.16501

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Section

Eléctrica