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Multisensor multitarget bias estimation for general asynchronous sensors

机译:通用异步传感器的多传感器多目标偏差估计

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摘要

A novel solution is provided for the bias estimation problem in multiple asynchronous sensors using common targets of opportunity. The decoupling between the target state estimation and the sensor bias estimation is achieved without ignoring or approximating the crosscovariance between the state estimate and the bias estimate. The target data reported by the sensors are usually not time-coincident or synchronous due to the different data rates. Since the bias estimation requires time-coincident target data from different sensors, a novel scheme is used to transform the measurements from the different times of the sensors into pseudomeasurements of the sensor biases with additive noises that are zero-mean, white, and with easily calculated covariances. These results allow bias estimation as well as the evaluation of the Cramer-Rao lower bound (CRLB) on the covariance of the bias estimate, i.e., the quantification of the available information about the biases in any scenario. Monte Carlo simulation results show that the new method is statistically efficient, i.e., it meets the CRLB. The use of this technique for scale and sensor location biases in addition to the usual additive biases is also presented.
机译:提供了一种新颖的解决方案,用于使用常见机会目标的多个异步传感器中的偏差估计问题。在不忽略或近似状态估计和偏置估计之间的互协方差的情况下,实现了目标状态估计和传感器偏置估计之间的解耦。由于数据速率不同,传感器报告的目标数据通常不是时间一致或同步的。由于偏差估算需要来自不同传感器的时间一致的目标数据,因此采用了一种新颖的方案将来自传感器不同时间的测量结果转换为具有零均值,白色且容易获得的附加噪声的传感器偏差的伪测量。计算的协方差。这些结果允许偏差估计以及对偏差估计的协方差的Cramer-Rao下界(CRLB)的评估,即在任何情况下量化有关偏差的可用信息。蒙特卡罗模拟结果表明,该新方法在统计上是有效的,即符合CRLB。除通常的加性偏差外,还介绍了这种技术在刻度和传感器位置偏差上的使用。

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