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A Cramer-Rao Lower Bound for the Estimation of Bias with a Single Bearing-Only Sensor

机译:用Cramer-Rao下界估计单个轴承的偏差

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This paper presents a metric for finding optimal sensor and target geometries that provide accurate estimates of bias during target tracking with a single sensor taking measurements of bearing. Since the bias cannot be measured directly, it is shown how to manipulate the equations of a Kalman filter to produce a pseudo measurement of bias and its associated measurement error covariance. These measurement error covariances are used to form a Cramer-Rao lower bound (CRLB) on the bias estimation variance as a function of sensor and target geometries. It is shown that highly accurate estimates of bias can be produced using a single sensor, even if the kinematic state estimate of the target is poor.
机译:本文介绍了一种用于找到最佳传感器和目标几何形状的度量,这些度量和目标几何可以使用单个传感器对轴承进行测量,从而在目标跟踪过程中提供偏差的准确估计。由于不能直接测量偏差,因此显示了如何处理卡尔曼滤波器的方程式以产生偏差及其相关的测量误差协方差的伪测量结果。这些测量误差协方差用于根据传感器和目标几何形状在偏差估计方差上形成Cramer-Rao下界(CRLB)。结果表明,即使目标的运动状态估计很差,也可以使用单个传感器生成高度准确的偏差估计。

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