基于相关性的彩色图像率失真模型研究

E. Gershikov, Emilia Lavi-Burlak, M. Porat
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引用次数: 1

摘要

虽然今天大多数图像压缩算法处理彩色图像,但压缩过程背后的理论主要基于单色工具。彩色图像编码的常用方法是通过在编码前将原色转换为去相关的颜色空间来降低RGB域中的高色间相关性。在这项工作中,我们提出了一种不同的方法,称为基于相关性的方法(CBA)。我们不是去相关原色,而是利用颜色间的相关性来近似两个颜色成分作为第三个颜色成分或基色的多项式函数。然后,我们建议对多项式函数的展开系数和至少部分近似误差进行编码。我们使用DCT(离散余弦变换)块变换来提高算法的性能。因此,对每个DCT子带分别执行相对于基色的两种颜色的近似。我们还使用子带变换编码器的率失真理论来优化算法在每个子带上的位分配,并找到在编码之前要应用的最佳颜色分量变换。这一预处理阶段可以进一步提高算法的性能。仿真结果表明,在使用相同的工具进行图像编码时,新的CBA算法优于基于常见去相关方法(如JPEG)的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On a Rate-Distortion Model for Color Images using a Correlation-Based Approach
Although most image compression algorithms deal today with color images, the theory behind the compression process is based mainly on monochrome tools. The common approach to color image coding is to decrease the high inter-color correlations in the RGB domain by transforming the color primaries into a de-correlated color space prior to coding. In this work we present a different approach, called Correlation Based Approach (CBA). Instead of de-correlating the color primaries, we exploit the inter-color correlation to approximate two of the color components as a polynomial function of the third color component, or the base color. We then suggest to code the expansion coefficients of the polynomial functions and at least partly the approximation errors. We use the DCT (Discrete Cosine Transform) block transform to enhance the algorithm's performance. Thus the approximation of two of the colors relative to the base color is performed for each DCT subband separately. We also use the Rate-Distortion theory of subband transform coders to optimize the algorithm's bit allocation to each subband and also to find the optimal color components transform to be applied prior to coding. This pre-processing stage may further enhance the algorithm's performance. Simulation results are provided showing that the new CBA algorithm is superior to algorithms based on the common de-correlation approach, such as JPEG, when using the same tools for image coding.
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