A New Contourlet Transform with Sharp Frequency Localization

Yue M. Lu, M. Do
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引用次数: 165

Abstract

The contourlet transform was proposed as a directional multiresolution image representation that can efficiently capture and represent singularities along smooth object boundaries in natural images. Its efficient filter bank construction as well as low redundancy make it an attractive computational framework for various image processing applications. However, a major drawback of the original contourlet construction is that its basis images are not localized in the frequency domain. In this paper, we analyze the cause of this problem, and propose a new contourlet construction as a solution. Instead of using the Laplacian pyramid, we employ a new multiscale decomposition defined in the frequency domain. The resulting basis images are sharply localized in the frequency domain and exhibit smoothness along their main ridges in the spatial domain. Numerical experiments on image denoising show that the proposed new contourlet transform can significantly outperform the original transform both in terms of PSNR (by several dB 's) and in visual quality, while with similar computational complexity.
一种新的具有锐利频率定位的Contourlet变换
contourlet变换作为一种多分辨率定向图像表示方法,能够有效地捕获和表示自然图像中平滑物体边界上的奇异点。其高效的滤波器组构建和低冗余使其成为各种图像处理应用的有吸引力的计算框架。然而,原始轮廓波构造的一个主要缺点是其基图像在频域中不局部化。本文分析了产生这一问题的原因,并提出了一种新的轮廓线构造方法。我们不再使用拉普拉斯金字塔,而是在频域中使用一种新的多尺度分解。所得到的基图像在频域中具有明显的局部化,在空间域中沿其主脊表现出平滑性。图像去噪的数值实验表明,在计算复杂度相近的情况下,所提出的contourlet变换在PSNR和视觉质量上都明显优于原变换。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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