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Multiscale image denoising using goodness-of-fit test based on EDF statistics

机译:基于EDF统计量的拟合优度检验进行多尺度图像降噪

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摘要

Two novel image denoising algorithms are proposed which employ goodness of fit (GoF) test at multiple image scales. Proposed methods operate by employing the GoF tests locally on the wavelet coefficients of a noisy image obtained via discrete wavelet transform (DWT) and the dual tree complex wavelet transform (DT-CWT) respectively. We next formulate image denoising as a binary hypothesis testing problem with the null hypothesis indicating the presence of noise and the alternate hypothesis representing the presence of desired signal only. The decision that a given wavelet coefficient corresponds to the null hypothesis or the alternate hypothesis involves the GoF testing based on empirical distribution function (EDF), applied locally on the noisy wavelet coefficients. The performance of the proposed methods is validated by comparing them against the state of the art image denoising methods.
机译:提出了两种新颖的图像去噪算法,它们在多个图像尺度上采用了拟合优度(GoF)测试。所提出的方法通过分别对分别通过离散小波变换(DWT)和双树复数小波变换(DT-CWT)获得的噪声图像的小波系数采用GoF测试来进行操作。接下来,我们将图像去噪公式化为二进制假设测试问题,其中零假设表示存在噪声,而备用假设仅表示所需信号的存在。给定的小波系数对应于原假设或替代假设的决定涉及基于经验分布函数(EDF)的GoF检验,该检验局部应用于有噪小波系数。通过将它们与现有技术的图像去噪方法进行比较,可以验证所提出方法的性能。

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