Compression of Medical Images using Progressive Coders

N. Boukhennoufa, L. Djouane, Rima Bouzidi
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Abstract

We have considered, in this paper, two compression methods based on wavelet transform and progressive coding, called EZW (Embedded Zerotree Wavelet) and SPIHT (Set partitioning in hierarchical trees). These techniques provide the opportunity to significantly increase compression ratios while preserving high qualities of reconstructed medical images. Unlike the EZW, the SPIHT approach takes advantage of subband correlations at near and far resolution levels (father-son relationships). A partial ordering by amplitude of the wavelet coefficients of the DWT (Discrete Wavelet Transform), partitioning in hierarchical trees, and scheduling of the transmission of the refinement bits are the three ideas used by SPIHT (the amplitude of each significant coefficient is progressively refined). The goal is to create a digital tool with the required main compression rate and PSNR (Peak Signal to Noise Ratio) limitations for compressing medical images. A development of the two cited algorithms has been carried out. For their evaluation, several medical images from two databases were used. The results prove that these algorithms are very efficient. Also, it has been found that the obtained results with SPIHT method greatly exceed those provided by EZW approach. SPIHT approach is very efficient compared to EZW from the point of view of the compression ratio and the image quality.
使用渐进编码器的医学图像压缩
本文考虑了基于小波变换和渐进式编码的两种压缩方法EZW (Embedded Zerotree wavelet)和SPIHT (Set partitioning in hierarchical trees)。这些技术提供了机会,显著提高压缩比,同时保持高质量的重建医学图像。与EZW不同,SPIHT方法利用了远近分辨率水平(父子关系)的子带相关性。离散小波变换(DWT)的小波系数的振幅部分排序,分层树的划分,以及细化位传输的调度是SPIHT使用的三个思想(每个重要系数的振幅逐步细化)。目标是创建一个具有所需的主压缩率和PSNR(峰值信噪比)限制的数字工具,用于压缩医学图像。本文对上述两种算法进行了改进。为了进行评估,使用了来自两个数据库的几张医学图像。结果表明,这些算法是非常有效的。同时,SPIHT方法得到的结果大大优于EZW方法。从压缩比和图像质量的角度来看,SPIHT方法与EZW相比非常有效。
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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