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Dynamic object localization via a proximity sensor network.

机译:通过接近传感器网络进行动态对象定位。

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Autonomous robotic operation in an unstructured or partially known environment requires sensing and sensor-based control. To overcome the problems with current "eye-in-hand" systems, miniature amplitude-based, infra-red proximity sensors are being studied. Obtaining position and velocity estimates of a rigid body with these sensors is a non-linear parameter and state estimation problem. Among the methods examined in simulation, Extended Kalman Filtering (EKF) was selected for implementation. A novel approach for object localization was developed in which the object geometry is known, sensing is performed by a proximity sensing network (PSN) and the object's unknown reflective properties are estimated on-line. The method has been tested extensively in simulation and experiments in which a target object's planar position and velocity were successfully estimated. To the author's knowledge this is the first time amplitude based infra-red sensors have been used to estimate a rigid body's unknown trajectory.
机译:在非结构化或部分已知的环境中,自动机器人操作需要感应和基于传感器的控制。为了克服当前“手牵手”系统的问题,正在研究基于微型幅度的红外接近传感器。用这些传感器获得刚体的位置和速度估计是一个非线性参数和状态估计问题。在仿真中检查的方法中,选择扩展卡尔曼滤波(EKF)进行实施。开发了一种用于物体定位的新颖方法,其中物体的几何形状是已知的,通过邻近感测网络(PSN)进行感测,并且可以在线估算物体的未知反射特性。该方法已在仿真和实验中进行了广泛测试,成功地估算了目标物体的平面位置和速度。据作者所知,这是首次使用基于幅度的红外传感器来估计刚体的未知轨迹。

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