Title :
Task-Based Robot Grasp Planning Using Probabilistic Inference
Author :
Dan Song ; Ek, Carl Henrik ; Huebner, Kai ; Kragic, Danica
Author_Institution :
KTH-R. Inst. of Technol., Stockholm, Sweden
Abstract :
Grasping and manipulating everyday objects in a goal-directed manner is an important ability of a service robot. The robot needs to reason about task requirements and ground these in the sensorimotor information. Grasping and interaction with objects are challenging in real-world scenarios, where sensorimotor uncertainty is prevalent. This paper presents a probabilistic framework for the representation and modeling of robot-grasping tasks. The framework consists of Gaussian mixture models for generic data discretization, and discrete Bayesian networks for encoding the probabilistic relations among various task-relevant variables, including object and action features as well as task constraints. We evaluate the framework using a grasp database generated in a simulated environment including a human and two robot hand models. The generative modeling approach allows the prediction of grasping tasks given uncertain sensory data, as well as object and grasp selection in a task-oriented manner. Furthermore, the graphical model framework provides insights into dependencies between variables and features relevant for object grasping.
Keywords :
Gaussian processes; belief networks; inference mechanisms; manipulators; mixture models; planning (artificial intelligence); Gaussian mixture models; discrete Bayesian networks; generic data discretization; grasp database; probabilistic inference; robot hand models; task-based robot grasp planning; Data models; Grasping; Planning; Probabilistic logic; Robot sensing systems; Training; Cognitive human–robot interaction; Cognitive human???robot interaction; grasping; learning and adaptive systems; probabilistic graphical models; recognition;
Journal_Title :
Robotics, IEEE Transactions on
DOI :
10.1109/TRO.2015.2409912