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Stochastically convergent localization of objects by mobile sensors and actively controllable relative sensor-object

机译:通过移动传感器和可主动控制的相对传感器对象进行对象的随机会聚定位

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The problem of object (network) localization using a mobile sensor is examined in this paper. Specifically, we consider a set of stationary objects located in the plane and a single mobile nonholonomic sensor tasked at estimating their relative position from range and bearing measurements. We derive a coordinate transform and a relative sensor-object motion model that leads to a novel problem formulation where the measurements are linear in the object positions. We then apply an extended Kalman filter-like algorithm to the estimation problem. Using stochastic calculus we provide an analysis of the convergence properties of the filter. We then illustrate that it is possible to steer the mobile sensor to achieve a relative sensor-object pose using a continuous control law. This last fact is significant since we circumvent Brockett's theorem and control the relative sensor-source pose using a simple controller.
机译:本文研究了使用移动传感器进行对象(网络)定位的问题。具体来说,我们考虑一组位于平面上的静止物体和一个用于根据距离和方位测量值估计其相对位置的移动非完整传感器。我们推导了坐标变换和相对的传感器-对象运动模型,从而得出了新颖的问题公式,其中在对象位置中的测量值是线性的。然后,我们将扩展的类似卡尔曼滤波器的算法应用于估计问题。使用随机演算,我们提供了滤波器收敛特性的分析。然后,我们说明可以使用连续控制定律来控制移动传感器以实现相对的传感器-对象姿态。最后一个事实很重要,因为我们绕过了Brockett定理,并使用一个简单的控制器来控制相对传感器-源的姿态。

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