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Contourlets and Sparse Image Expansions

机译:Contourlet和稀疏图像扩展

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Recently, the contourlet transform has been developed as a true two-dimensional representation that can capture the geometrical structure in pictorial information. Unlike other transforms that were initially constructed in the continuous-domain and then discretized for sampled data, the contourlet construction starts from the discrete-domain using filter banks, and then convergences to a continuous-domain expansion via a multiresolu-tion analysis framework. In this paper we study the approximation behavior of the contourlet expansion for two-dimensional piecewise smooth functions resembling natural images. Inspired by the vanishing moment property which is the key for the good approximation behavior of wavelets, we introduce the directional vanishing moment condition for contourlets. We show that with anisotropic scaling and sufficient directional vanishing moments, contourlets essentially achieve the optimal approximation rate, O((logM)~3M~(-2)) square error with a best M-term approximation, for 2-D piecewise smooth functions with C~2 contours. Finally, we show some numerical experiments demonstrating the potential of contourlets in several image processing applications.
机译:最近,contourlet变换已发展为一种真正的二维表示形式,可以捕获图形信息中的几何结构。与最初在连续域中构造然后离散化以获取采样数据的其他变换不同,contourlet构造从使用滤波器组的离散域开始,然后通过多分辨率分析框架收敛到连续域扩展。在本文中,我们研究了类似于自然图像的二维分段光滑函数的轮廓波展开的近似行为。受消失矩属性的启发,消失矩属性是小波良好近似行为的关键,我们介绍了轮廓波的定向消失矩条件。我们表明,对于二维分段光滑函数,通过各向异性缩放和足够的方向消失力矩,轮廓波本质上实现了最佳逼近率O((logM)〜3M〜(-2))平方误差和最佳M项逼近。具有C〜2个轮廓。最后,我们显示了一些数值实验,证明了contourlet在几种图像处理应用程序中的潜力。

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