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首页> 外文期刊>IEEE Transactions on Robotics >Contact-State Segmentation Using Particle Filters for Programming by Human Demonstration in Compliant-Motion Tasks
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Contact-State Segmentation Using Particle Filters for Programming by Human Demonstration in Compliant-Motion Tasks

机译:使用粒子过滤器进行接触状态分割,以便在顺应性运动任务中通过人工演示进行编程

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This paper presents a contribution to programming by human demonstration, in the context of compliant-motion task specification for sensor-controlled robot systems that physically interact with the environment. One wants to learn about the geometric parameters of the task and segment the total motion executed by the human into subtasks for the robot, that can each be executed with simple compliant-motion task specifications. The motion of the human demonstration tool is sensed with a 3-D camera, and the interaction with the environment is sensed with a force sensor in the human demonstration tool. Both measurements are uncertain, and do not give direct information about the geometric parameters of the contacting surfaces, or about the contact formations (CFs) encountered during the human demonstration. The paper uses a Bayesian sequential Monte Carlo method (also known as a particle filter) to do the simultaneous estimation of the CF (discrete information) and the geometric parameters (continuous information). The simultaneous CF segmentation and the geometric parameter estimation are helped by the availability of a contact state graph of all possible CFs. The presented approach applies to all compliant-motion tasks involving polyhedral objects with a known geometry, where the uncertain geometric parameters are the poses of the objects. This work improves the state of the art by scaling the contact estimation to all possible contacts, by presenting a prediction step based on the topological information of a contact state graph, and by presenting efficient algorithms that allow the estimation to operate in real time. In real-world experiments, it is shown that the approach is able to discriminate in real time between some 250 different CFs in the graph
机译:本文在与环境物理交互的传感器控制的机器人系统的依从运动任务规范的背景下,通过人类演示对编程进行了贡献。人们想了解任务的几何参数,并将人​​类执行的总运动分成机器人的子任务,每个子任务都可以通过简单的顺应运动任务规范来执行。人体演示工具的运动由3D相机感应,而与环境的互动则由人体演示工具中的力传感器感应。两种测量都是不确定的,并且没有给出有关接触表面的几何参数或人类演示过程中遇到的接触结构(CF)的直接信息。本文使用贝叶斯顺序蒙特卡罗方法(也称为粒子滤波器)来同时估计CF(离散信息)和几何参数(连续信息)。所有可能的CF的接触状态图的可用性有助于同时进行CF分割和几何参数估计。提出的方法适用于涉及具有已知几何形状的多面体对象的所有顺应性运动任务,其中不确定的几何参数是对象的姿态。通过将接触估计缩放到所有可能的接触,通过显示基于接触状态图的拓扑信息的预测步骤以及通过提供允许估计实时运行的高效算法,这项工作可以改进现有技术。在现实世界的实验中,表明该方法能够实时区分图中的约250个不同CF

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