多传感器多目标系统中一般异步传感器偏置估计的新算法

A. Rafati, B. Moshiri, J. Rezaie
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引用次数: 14

摘要

由于传感器偏差导致的误差经常存在于传感器数据中,并且会降低多传感器系统的跟踪精度和稳定性。另一个实际问题是,由于不同的数据,传感器报告的目标数据通常不是时间一致或同步的。本文针对这些问题,提出了一种异步多传感器系统中恒偏和动态偏估计的新算法。我们将异步传感器的测量值用于传感器偏差的伪测量,这些传感器偏差具有零均值、白色和易于计算的协方差的加性噪声。该算法是一种基于Kahnan滤波的技术,用于估计距离和偏移偏差,并递归实现,计算效率高,并提供异步传感器偏差的实时估计。仿真结果表明,crmer - rao下界(CRLB)是可以实现的。这意味着提出的估计算法在统计上是有效的。
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A new algorithm for general asynchronous sensor bias estimation in multisensor-multitarget systems
Errors due to sensor bias are often present in sensor data and can reduce the tracking accuracy and stability of multi-sensor systems. The other practical problem is that the target data reported by the sensors are usually not time-coincident or synchronous due to the different data. This paper deals with these problems and presents a new algorithm for estimation of both constant and dynamic biases in asynchronous multisensor systems. We use the measurements from asynchronous sensors into pseudo measurements of the sensor biases with additive noises that are zero-mean, white and with easily calculated covariances. This algorithm is a Kahnan filter based technique to estimate both the range and offset biases and is implemented recursively which is computationally efficient and provided real time estimation of asynchronous sensor bias. The Simulation results show the Cramer-Rao Lower Bound (CRLB) is achievable. This means the proposed estimation algorithm is statistically efficient.
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