首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing;ICASSP 2009 >Recursive errors-in-variables approach for ar parameter estimation from noisy observations. Application to radar sea clutter rejection
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Recursive errors-in-variables approach for ar parameter estimation from noisy observations. Application to radar sea clutter rejection

机译:用于从嘈杂观测值中估计参数的递归变量误差方法。在雷达海杂波抑制中的应用

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AR modeling is used in a wide range of applications from speech processing to Rayleigh fading channel simulation. When the observations are disturbed by an additive white noise, the standard least squares estimation of the AR parameters is biased. Some authors of this paper recently reformulated this problem as an errors-in-variables (EIV) issue and proposed an off-line solution, which outperforms other existing methods. Nevertheless, its computational cost may be high. In this paper, we present a blind recursive EIV method that can be implemented for real-time applications. It has the advantage of converging faster than the noise-compensated LMS based solutions. In addition, unlike EKF or Sigma Point Kalman filter, it does not require a priori knowledge such as the variances of the driving process and the additive noise. The approach is first tested with synthetic data; then, its relevance is illustrated in the field of radar sea clutter rejection.
机译:从语音处理到瑞利衰落信道仿真,AR建模被广泛应用于各种应用中。当观测结果受到加性白噪声的干扰时,AR参数的标准最小二乘估计会产生偏差。本文的一些作者最近将此问题重新表述为变量错误(EIV)问题,并提出了一种离线解决方案,其性能优于其他现有方法。但是,其计算成本可能很高。在本文中,我们提出了一种可用于实时应用的盲递归EIV方法。它具有比基于噪声补偿的LMS解决方案收敛更快的优点。另外,与EKF或Sigma Point Kalman滤波器不同,它不需要先验知识,例如驱动过程的方差和附加噪声。该方法首先使用综合数据进行测试;然后,在雷达海杂波抑制领域说明了其相关性。

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