低冗余离散Shearlet变换的高效设计

B. Goossens, J. Aelterman, H. Luong, A. Pižurica, W. Philips
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引用次数: 32

摘要

最近,人们对执行多向分析的多分辨率表示产生了极大的兴趣。Shearlet变换既提供了多分辨率分析(如小波变换),同时也为包含边缘的图像提供了最优的稀疏图像独立表示。Shearlet变换的现有离散实现主要集中在特定应用上,如边缘检测或去噪,并且没有考虑到低冗余度(冗余系数通常大于最佳尺度下的方向子带数量)。在本文中,我们提出了一种新的离散Shearlet变换设计,它的冗余系数为2.6,与方向子带的数目无关,并且具有许多有趣的性质,如移位不变性和自可逆性。这种转换可用于广泛的应用程序中。实验证明了该变换的改进特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient design of a low redundant Discrete Shearlet Transform
Recently, there has been a huge interest in multiresolution representations that also perform a multidirectional analysis. The Shearlet transform provides both a multiresolution analysis (such as the wavelet transform), and at the same time an optimally sparse image-independent representation for images containing edges. Existing discrete implementations of the Shearlet transform havemainly focused on specific applications, such as edge detection or denoising, and were not designed with a low redundancy in mind (the redundancy factor is typically larger than the number of orientation subbands in the finest scale). In this paper, we present a novel design of a Discrete Shearlet Transform, that can have a redundancy factor of 2.6, independent of the number of orientation subbands, and that has many interesting properties, such as shift-invariance and self-invertability. This transform can be used in a wide range of applications. Experiments are provided to show the improved characteristics of the transform.
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