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An Efficient Way of Solving Inverse Problem Using Nonlinear Wiener Filter and its Application to Pattern Recognition

机译:使用非线性维纳滤波器解决逆问题的有效方法及其在模式识别中的应用

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The Wiener Filter is a standard means of optimizing the linear Inverse Problem, however, the revitalization of Nonlinear Inverse Problem and its empirical error reduction has remained problematic. This paper reports a novel technique of removing noise, using an approximated Wiener Filter signal in Reproducing Kernel Hilbert Space domain. Kernel Method is one of the state of the art methods that implicitly pursue nonlinear mapping of sample data into a high dimensional vector space. In order to show the incentive of the proposed method, experiments are manipulated in denoising of images and estimating the errors. Moreover, the proposed method has more precise algorithm, higher accuracy and reduced computational complexity.
机译:维纳滤波器是优化线性逆问题的标准方法,然而,非线性逆问题的振兴及其经验误差减少仍然存在问题。本文在再现内核希尔伯特空间域中使用近似的维纳滤波信号报告一种去除噪声的新技术。内核方法是本领域方法之一,其隐含地追求样本数据的非线性映射到高维矢量空间中。为了展示所提出的方法的激励,实验被操纵在去噪和估计误差。此外,所提出的方法具有更精确的算法,更高的准确度和降低的计算复杂性。

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