Graph-Cut Rate Distortion Algorithm for Contourlet-Based Image Compression

M. Trocan, B. Pesquet-Popescu, J. Fowler
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引用次数: 7

Abstract

The geometric features of images, such as edges, are difficult to represent. When a redundant transform is used for their extraction, the compression challenge is even more difficult. In this paper we present a new rate-distortion optimization algorithm based on graph theory that can encode efficiently the coefficients of a critically sampled, non-orthogonal or even redundant transform, like the contourlet decomposition. The basic idea is to construct a specialized graph such that its minimum cut minimizes the energy functional. We propose to apply this technique for rate-distortion Lagrangian optimization in subband image coding. The method yields good compression results compared to the state-of-art JPEG2000 codec, as well as a general improvement in visual quality.
基于contourlet的图像压缩图切率失真算法
图像的几何特征,如边缘,是难以表示的。当使用冗余变换提取它们时,压缩挑战就更加困难了。本文提出了一种新的基于图论的率失真优化算法,该算法可以有效地编码临界采样、非正交甚至冗余变换的系数,如contourlet分解。基本思想是构造一个专门的图,使其最小截点使能量泛函最小。我们提出将该技术应用于子带图像编码中的率失真拉格朗日优化。与最先进的JPEG2000编解码器相比,该方法产生了良好的压缩结果,并且在视觉质量方面得到了总体改善。
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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