Improved compression of MRSI images involving the discrete wavelet transform and an integrated two level restoration methodology comparing different textural and optimization schemes

Dimitrios Alexios Karras
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引用次数: 1

Abstract

This paper suggests a novel MRSI image compression scheme, using the discrete wavelet transformation (DWT) and an improved integrated Bayesian reconstruction approach involving a parameter independent optimization scheme. The suggested methodology is based on maintenance of important second and higher order correlation features of DWT coefficients and image pixel intensities. While adversary image compression methodologies utilizing the DWT apply it to the whole original image uniformly, the herein presented novel approach, extending previous attempts of the same author, involves a refined DWT compression scheme. That is, different compression ratios are applied to the detailed wavelet coefficients belonging in the major regions of interest, clustered by employing textural descriptors as criteria in the image or transform domain, integrating different textural methods. Restoration of the original MRSI image from its corresponding regions of interest compressed images involves the inverse DWT and a sophisticated two stage Bayesian restoration approach, not requiring any user defined parameters, comparing conjugate gradient and Genetic algorithm optimization processes involving a refined objective function. An experimental study is conducted to qualitatively assessing the proposed schemes in comparison with the original DWT compression technique as well as with other rival approaches based on DWT, when applied to a set of brain MRSI images.
改进的压缩磁共振成像图像涉及离散小波变换和集成的两级恢复方法比较不同的纹理和优化方案
本文提出了一种新的磁共振成像图像压缩方案,该方案采用离散小波变换(DWT)和改进的集成贝叶斯重构方法,其中包括一个参数无关的优化方案。建议的方法是基于保持DWT系数和图像像素强度的重要二阶和高阶相关特征。虽然对手使用DWT的图像压缩方法将其均匀地应用于整个原始图像,但本文提出的新方法扩展了同一作者之前的尝试,涉及改进的DWT压缩方案。即,对属于主要感兴趣区域的详细小波系数应用不同的压缩比,通过在图像或变换域中使用纹理描述符作为标准,整合不同的纹理方法进行聚类。从相应的感兴趣区域压缩图像中恢复原始MRSI图像涉及逆DWT和复杂的两阶段贝叶斯恢复方法,不需要任何用户自定义参数,比较共轭梯度和遗传算法优化过程,涉及细化的目标函数。当应用于一组脑mri图像时,进行了一项实验研究,以定性地评估所提出的方案,并与原始的DWT压缩技术以及其他基于DWT的竞争方法进行比较。
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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