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MR Image Compression Based on Selection of Mother Wavelet and Lifting Based Wavelet

机译:基于母小波和基于提升的小波的MR图像压缩

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Magnetic Resonance (MR) image is a medical image technique required enormous data to be stored and transmitted for high quality diagnostic application. Various algorithms have been proposed to improve the performance of the compression scheme. In this paper we extended the commonly used algorithms to image compression and compared its performance. For an image compression technique, we have linked different wavelet techniques using traditional mother wavelets and lifting based Cohen-Daubechies-Feauveau wavelets with the low-pass filters of the length 9 and 7 (CDF 9/7) wavelet transform with Set Partition in Hierarchical Trees (SPIHT) algorithm. A novel image quality index with highlighting shape of histogram of the image targeted is introduced to assess image compression quality. The index will be used in place of existing traditional Universal Image Quality Index (UIQI) "in one go". It offers extra information about the distortion between an original image and a compressed image in comparisons with UIQI. The proposed index is designed based on modelling image compression as combinations of four major factors: loss of correlation, luminance distortion, contrast distortion and shape distortion. This index is easy to calculate and applicable in various image processing applications. One of our contributions is to demonstrate the choice of mother wavelet is very important for achieving superior wavelet compression performances based on proposed image quality indexes. Experimental results show that the proposed image quality index plays a significantly role in the quality evaluation of image compression on the open sources "BrainWeb: Simulated Brain Database (SBD) ".
机译:磁共振(MR)图像是医学图像技术,需要将大量数据存储和传输以用于高质量诊断应用。已经提出了各种算法来改善压缩方案的性能。在本文中,我们将常用的算法扩展到图像压缩,并比较了其性能。对于图像压缩技术,我们将使用传统母小波和基于提升的Cohen-Daubechies-Feauveau小波的不同小波技术与长度为9和7(CDF 9/7)小波变换的低通滤波器(在层次结构中设置分区)相联系树(SPIHT)算法。引入具有突出的目标图像直方图形状的新颖图像质量指标来评估图像压缩质量。该索引将一次性使用现有的传统通用图像质量指数(UIQI)。与UIQI相比,它提供了有关原始图像和压缩图像之间的失真的额外信息。拟议的索引是基于对图像压缩建模的四个主要因素的组合而设计的:相关性损失,亮度失真,对比度失真和形状失真。该指数易于计算,可应用于各种图像处理应用程序。我们的贡献之一是证明母小波的选择对于基于提出的图像质量指标实现卓越的小波压缩性能非常重要。实验结果表明,所提出的图像质量指标在开源“ BrainWeb:模拟脑数据库(SBD)”上的图像压缩质量评估中起着重要作用。

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