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Estimation of colored plant noise using Kalman filter based deconvolution

机译:使用基于卡尔曼滤波器的反卷积估计有色植物噪声

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In many deconvolution problems, the signal to be estimated is modeled as the input to a known plant and assumed white. There are, however, situations in which this signal is not white. A simple iterative scheme for estimating colored sequences is presented. In this scheme, the colored plant noise is modeled as the output of a shaping filter excited by white noise. The shaping filter is considered as part of the plant while applying Mendel's minimum variance deconvolution (MVD) algorithm based on the Kalman filter to estimate the plant noise. To begin with, the shaping filter is just an identity filter. The estimated plant noise is then used to update its coefficients iteratively until the change in the coefficient values is small. The iterative scheme has been tested using simulated data under different conditions, and is found to perform quite well under certain situations.
机译:在许多反卷积问题中,将要估计的信号建模为已知植物的输入,并假定为白色。但是,在某些情况下此信号不是白色的。提出了一种估计彩色序列的简单迭代方案。在该方案中,将有色植物噪声建模为由白噪声激发的整形滤波器的输出。整形滤波器被视为植物的一部分,同时应用基于卡尔曼滤波器的孟德尔最小方差反卷积(MVD)算法来估计植物噪声。首先,整形过滤器只是一个身份过滤器。然后,将估计的植物噪声用于迭代更新其系数,直到系数值的变化很小为止。迭代方案已在不同条件下使用模拟数据进行了测试,发现在某些情况下表现良好。

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