comunicación de congreso
An Object Manipulation System Architecture for Humanoid Robots Based on Primate Cognition
Fecha
2018Registro en:
978-1-5386-7506-9
10.1109/IWOBI.2018.8464221
322-B6-279
Autor
García Vaglio, Daniel
Ruiz Ugalde, Federico
Institución
Resumen
Currently one of the most important challenges is
to bring robots out of factory floors to work alongside humans.
Because these environments are characterized by a very large
variety of objects, a key factor is to provide them with better
adaptive object manipulation skills. This means that robots are
required to connect, in a meaningful way, a high level task to the
robot body movements. Understanding the objects at a physical
level can give a robot a connecting mechanism to the higher
level system. A previous experiment showed that a robot can
skillfully manipulate an object if it is provided with the right
mathematical models and controllers [1]. We want to expand
this experiment by creating a system that can generalize this
type of object manipulation capabilities to many more objects
and tasks. In this paper we propose an architecture that helps
bridge this gap by using insights from primate cognition. This
system enables robots to handle more objects, deal better with
tools, and facilitate the process of reasoning about actions and
their expected outcomes. We exercised our implementation with
some simple testing object models, and were able to corroborate
its proper behavior under the proposed circumstances.