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Regularised estimation of 2D-locally stationary wavelet processes

机译:二维局部平稳小波过程的正则估计

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Locally Stationary Wavelet processes provide a flexible way of describing the time/space evolution of autocovariance structure over an ordered field such as an image/time-series. Classically, estimation of such models assume continuous smoothness of the underlying spectra and are estimated via local kernel smoothers. We propose a new model which permits spectral jumps, and suggest a regularised estimator and algorithm which can recover such structure from images. We demonstrate the effectiveness of our method in a synthetic experiment where it shows desirable estimation properties. We conclude with an application to real images which illustrate the qualitative difference between the proposed and previous methods.
机译:局部平稳小波过程提供了一种灵活的方式来描述诸如图像/时间序列之类的有序字段上自协方差结构的时间/空间演化。传统上,此类模型的估计假定基础光谱具有连续的平滑度,并通过局部核平滑器进行估计。我们提出了一种允许光谱跳跃的新模型,并提出了一种可以从图像中恢复这种结构的正则估计器和算法。我们在合成实验中证明了我们方法的有效性,该方法显示了理想的估计特性。最后,我们将其应用于实际图像,该图像说明了所提出的方法与先前方法之间的质量差异。

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