分数傅里叶和线性正则变换的数字计算和稀疏图像表示

Aykut Koç, Haldun M. Özaktas, Burak Bartan, Erhan Gundogdu, T. Çukur
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引用次数: 1

摘要

分数阶傅立叶变换(FRT)和线性正则变换(LCT)的快速、准确的数字计算对于将它们应用到实际应用和系统中至关重要。针对几种不同类型的frt和lct,给出了在O(NlogN)内从输入函数的样本中获取变换样本的算法,包括1D和2D形式。为了将它们应用到图像处理中,我们考虑了图像稀疏变换域的获取问题。稀疏恢复试图从一个被破坏的测量集重建在线性变换域中稀疏的图像。稀疏恢复的成功依赖于可以获得图像可压缩表示的域的知识。在这项工作中,我们考虑了二维和三维图像,并研究了分数傅里叶变换(FRT)和线性正则变换(LCT)在获得更稀疏变换域中的作用。对于二维图像,我们研究了直接变换与几种修补策略。对于三维情况,我们考虑了生物医学图像,并比较了几种不同的策略,如取二维切片并对每个切片进行优化和直接三维变换。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital computation of fractional Fourier and linear canonical transforms and sparse image representation
Fast and accurate digital computation of the fractional Fourier transform (FRT) and linear canonical transforms (LCT) are of utmost importance in order to deploy them in real world applications and systems. The algorithms in O(NlogN) to obtain the samples of the transform from the samples of the input function are presented for several different types of FRTs and LCTs, both in 1D and 2D forms. To apply them in image processing we consider the problem of obtaining sparse transform domains for images. Sparse recovery tries to reconstruct images that are sparse in a linear transform domain, from an underdeter- mined measurement set. The success of sparse recovery relies on the knowledge of domains in which compressible representations of the image can be obtained. In this work, we consider two- and three-dimensional images, and investigate the effects of the fractional Fourier (FRT) and linear canonical transforms (LCT) in obtaining sparser transform domains. For 2D images, we investigate direct transforming versus several patching strategies. For the 3D case, we consider biomedical images, and compare several different strategies such as taking 2D slices and optimizing for each slice and direct 3D transforming.
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