Tactile-Proprioceptive Robotic Grasping
Data(s) |
07/06/2012
07/06/2012
18/06/2012
|
---|---|
Resumo |
Robotic grasping has been studied increasingly for a few decades. While progress has been made in this field, robotic hands are still nowhere near the capability of human hands. However, in the past few years, the increase in computational power and the availability of commercial tactile sensors have made it easier to develop techniques that exploit the feedback from the hand itself, the sense of touch. The focus of this thesis lies in the use of this sense. The work described in this thesis focuses on robotic grasping from two different viewpoints: robotic systems and data-driven grasping. The robotic systems viewpoint describes a complete architecture for the act of grasping and, to a lesser extent, more general manipulation. Two central claims that the architecture was designed for are hardware independence and the use of sensors during grasping. These properties enables the use of multiple different robotic platforms within the architecture. Secondly, new data-driven methods are proposed that can be incorporated into the grasping process. The first of these methods is a novel way of learning grasp stability from the tactile and haptic feedback of the hand instead of analytically solving the stability from a set of known contacts between the hand and the object. By learning from the data directly, there is no need to know the properties of the hand, such as kinematics, enabling the method to be utilized with complex hands. The second novel method, probabilistic grasping, combines the fields of tactile exploration and grasp planning. By employing well-known statistical methods and pre-existing knowledge of an object, object properties, such as pose, can be inferred with related uncertainty. This uncertainty is utilized by a grasp planning process which plans for stable grasps under the inferred uncertainty. |
Identificador |
978-952-265-247-8 1456-4491 http://www.doria.fi/handle/10024/77174 URN:ISBN:978-952-265-247-8 |
Idioma(s) |
en |
Publicador |
Lappeenranta University of Technology |
Relação |
978-952-265-246-1 Acta Universitatis Lappeenrantaensis |
Palavras-Chave | #robotic grasping #robot architectures #tactile sensing #grasp planning |
Tipo |
Väitöskirja Doctoral Dissertation |