离散余弦变换与小波变换在医学图像压缩中的比较分析

A. Funmilola, D. Olusayo, A. A. Michael
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引用次数: 5

摘要

图像压缩减少了图像数据的无关性和冗余性,从而能够以有效的形式存储或传输数据。图像压缩是在不降低图像质量到不可接受的水平的情况下最小化图形文件的字节大小。文件大小的减小允许在给定数量的磁盘或内存空间中存储更多的映像。它还减少了通过Internet发送图像或从Web页面下载图像所需的时间。随着医院向无胶片成像和完全数字化的方向发展,医学图像压缩发挥着关键作用。图像压缩将允许图像存档和通信系统(PACS)在保持相关诊断信息的同时减少其存储要求的文件大小。远程放射学站点受益,因为减少了图像文件大小,减少了传输时间。即使存储介质的容量不断增加,预计医院产生的未压缩数据量将超过容量并推高成本。通过利用医生定义的临床相关区域来实现压缩性能的提高。本文比较了离散余弦变换(DCT)压缩技术和小波变换(WT)压缩技术对医学图像的影响。结果表明,DCT和WT的压缩比分别为10:1和7:1。DCT和WT压缩技术与原始图像的平均差值为77.84,标准差为83.17,平均差值为77.77,标准差为83.23。
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Comparative analysis between discrete cosine transform and wavelet transform techniques for medical image compression
Image compression reduces irrelevant and redundancy of the image data in order to be able to store or transmits data in an efficient form. Image compression is minimizing the size in bytes of a graphics file without degrading the quality of the image to an unacceptable level. The reduction in file size allows more images to be stored in a given amount of disk or memory space. It also reduces the time required for images to be sent over the Internet or downloaded from Web pages. Medical image compression plays a key role as hospitals move towards filmless imaging and completely digital. Image compression will allow Picture Archiving and Communication Systems (PACS) to reduce the file sizes on their storage requirements while maintaining relevant diagnostic information. Teleradiology sites benefit since reduced image file sizes yield reduced transmission times. Even as the capacity of storage media continues to increase, it is expected that the volume of uncompressed data produced by hospitals will exceed capacity and drive up costs. The improved compression performance will be accomplished by making use of clinically relevant regions as defined by physicians. This work compared Discrete Cosine Transform (DCT) compression technique and Wavelet Transform (WT) compression techniques for medical images. The result showed compression ratio of 10:1 and 7:1 for DCT and WT respectively. The mean difference of 77.84 with standard deviation of 83.17 and mean difference of 77.77 with standard deviation of 83.23 from the original image were recorded for DCT and WT compression technique.
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