A fast algorithm for wavelet packet decomposition using statistical properties of images

Jeong-Ho Park, Jae-Ho Choi, Hooq-Sung Kwak
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引用次数: 0

Abstract

The recent attention of image coding community is paid to wavelet transform, which is of interest for the nonstationary signal analysis because it provides good localization in time and frequency. There are two directions of study in decomposing an image by wavelet transform, that is octave form and wavelet packet. Of this, wavelet packet works adequately for all images with various properties, but it has a difficulty of requiring relatively massive processing time. In this paper, using a statistical properties, such as correlation and variance, in spatial domain and octave band, a new algorithm for generating wavelet packet is presented. The described scheme has an ability of decomposing a image fastly. Simulation results have shown us a good performance in a view point of processing time and band decomposition ability comparing to the Vetterli's method.
基于图像统计特性的快速小波包分解算法
小波变换在非平稳信号分析中具有良好的时间和频率局域性,近年来引起了图像编码界的关注。用小波变换分解图像有两个研究方向,即倍频阶形式和小波包。其中,小波包对所有具有不同属性的图像都能很好地工作,但它的困难是需要相对大量的处理时间。本文利用空间域和倍频带的相关和方差等统计特性,提出了一种生成小波包的新算法。所描述的方案具有快速分解图像的能力。仿真结果表明,与Vetterli方法相比,该方法在处理时间和频带分解能力方面都有较好的性能。
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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