comunicación de congreso
Learning the prediction error for improving an analytical-based prediction (object-model) system for manipulation tasks
Fecha
2018Registro en:
978-1-5386-7506-9
10.1109/IWOBI.2018.8464211
Autor
Solís Villalta, Orlando
Ruiz Ugalde, Federico
Institución
Resumen
One of the main tasks in robotics today, is to
bring robots closer to humans in everyday situations. This
requires the robot to understand how its environment (objects,
people, conditions) behaves. One method that tries to connect the
environment to the robot is called object model. This proposed
system (object model) is able to give the robot an understanding
of the physics of the environment.
Object models have been used to give robots the ability to
understand and control object behavior. This information helps
robots to be more capable for skilled manipulation tasks, by
predicting how the object will react to external stimulus. The
object model used as case of study in this paper, uses an analytical
representation for describing object behavior. This analytical
representation has the advantage of using meaningful object
properties and quickly allowing the robot to manipulate the
object without doing a lot of trial and error repetitions. A
challenge of this approach is that it can be very difficult to
derive a mathematical/mechanical model of the object behavior.
Therefore, this model, in most cases, will not describe all
the peculiarities and details of object behavior. As a result,
predictions are good but not perfect. This paper proposes a
method to improve the prediction performance of such system,
by learning the error of the analytical model and using this to
correct the original prediction.
Our results show that such a system is able to improve the
prediction performance of the system. A quantitative evaluation
using cross validation is provided to demonstrate the ability of
our system to reduce the error exhibited by the prediction system
(object model).