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Task-Based Robot Grasp Planning Using Probabilistic Inference

机译:基于概率推理的基于任务的机器人抓取计划

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摘要

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.
机译:以目标为导向的方式来抓取和操纵日常对象是服务机器人的一项重要能力。机器人需要推理任务要求,并在感觉运动信息中将其接地。在现实世界中,感觉运动不确定性普遍存在,因此与物体的抓取和与物体的交互是具有挑战性的。本文为机器人抓取任务的表示和建模提供了一个概率框架。该框架包括用于通用数据离散化的高斯混合模型,以及用于编码各种与任务相关的变量(包括对象和动作特征以及任务约束)之间的概率关系的离散贝叶斯网络。我们使用在包括人和两个机器人手模型的模拟环境中生成的抓取数据库来评估框架。生成建模方法允许预测给定不确定感官数据的抓握任务,以及以面向任务的方式进行对象和抓握选择。此外,图形模型框架可洞悉与对象抓取相关的变量和特征之间的依存关系。

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