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Adaptive filtering incorporating a local mean estimation substructure

机译:包含局部均值估计子结构的自适应滤波

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Adaptive filters have been used successfully in many applications of signal processing. However, their performance in dealing with signals of nonzero mean, especially with sharp changes (edges), is problematic, which limits the extension of the use of adaptive filters in some important application areas. To overcome this problem, the authors introduce in this paper a scheme for adaptive filtering obtained by incorporating a local mean estimation substructure (denoted as AF-LME scheme). It is shown by theoretical analysis that, by handling the signal mean and the zero mean component (the residual signal) separately, the performance of adaptive algorithms (e.g. the LMS or the RLS) can be improved. Analysis is also given to show the weakness of an adaptive filter in dealing with the edges of the signal mean. This weakness can be overcome by incorporating the technique of low-pass filtering with an edge preserving property as the local mean substructure. A method for the implementation of this substructure is proposed. This implementation was satisfactorily used in computer simulations and representative examples simulations are presented.
机译:自适应滤波器已在信号处理的许多应用中成功使用。但是,它们在处理非零均值信号(尤其是急剧变化(边缘))时的性能存在问题,这限制了在某些重要应用领域中自适应滤波器的使用范围。为了克服这个问题,作者在本文中介绍了一种通过合并局部均值估计子结构获得的自适应滤波方案(称为AF-LME方案)。理论分析表明,通过分别处理信号均值和零均值分量(残差信号),可以提高自适应算法(例如,LMS或RLS)的性能。分析还显示了自适应滤波器在处理信号均值边缘时的弱点。通过结合具有边缘保留特性的低通滤波技术作为局部均值子结构,可以克服此缺点。提出了一种用于实现该子结构的方法。该实现已在计算机仿真中令人满意地使用,并给出了代表性的示例仿真。

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