The Discrete Quincunx Wavelet Packet Transform

A. Bassou
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引用次数: 0

Abstract

This chapter aims to present an efficient compression algorithm based on quincunx wavelet packet transform that can be applied on any image of size 128×128 or bigger. Therefore, a division process into sub-images of size 128×128 was applied on three gray-scale image databases, then pass each sub-image through the wavelet transform and a bit-level encoder, to finally compress the sub-image with respect to a fixed bit rate. The quality of the reconstructed image is evaluated using several parameters at a given bit rate. In order to improve the quality in sense of the evaluation quality, an exhaustive search has led to the best packet decomposition base. Two versions of the proposed compression scheme were performed; the optimal version is able to decrease the effect of block boundary artifacts (caused by the image division process) by 27.70% considering a natural image. This optimal version of the compression scheme was compared with JPEG standard using the quality evaluation parameters and visual observation. As a result, the proposed compression scheme presents a competitive performance to JPEG standard; where the proposed scheme performs a peak signal to noise ratio of 0.88dB over JPEG standard at a bit rate of 0.50bpp for a satellite image.
离散昆克斯小波包变换
本章旨在提出一种基于quincunx小波包变换的有效压缩算法,该算法可以应用于128×128或更大尺寸的任何图像。因此,在三个灰度图像数据库上进行大小为128×128的子图像分割处理,然后将每个子图像经过小波变换和比特级编码器,最后按固定比特率压缩子图像。在给定的比特率下,使用几个参数来评估重建图像的质量。为了在评价质量的意义上提高质量,通过穷举搜索得到最佳的包分解基。对提出的压缩方案执行了两个版本;考虑到自然图像,最优版本能够将块边界伪影(由图像分割过程引起)的影响降低27.70%。通过质量评价参数和视觉观察,将该优化版本的压缩方案与JPEG标准进行了比较。结果表明,该压缩方案具有与JPEG标准相媲美的性能;其中,所提出的方案在JPEG标准上以0.50bpp的比特率对卫星图像执行0.88dB的峰值信噪比。
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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