基于上下文的医学图像压缩及其在超声图像中的应用

M. A. Ansari, R. Anand
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引用次数: 13

摘要

医学图像压缩的基本目标是在保持可接受的诊断图像质量的同时,降低比特率,提高压缩效率,以实现医学图像的传输和存储。由于存储、传输带宽和传统压缩方法的局限性,需要对医学图像进行选择性压缩,以减少传输时间和存储成本,同时保持图像的高质量。基于上下文的医学图像压缩的另一个重要原因是高空间分辨率和对比度灵敏度的要求。在医学图像中,上下文区域是包含最有用和最重要信息的区域,必须仔细编码,以免出现明显的失真。本文提出了一种新的基于上下文的编码方案,其压缩率明显优于JPEG和JPEG2000的一般方法。在所提出的方法中,图像的上下文部分以非常低的压缩率(high bpp)在高优先级的基础上选择性地编码,图像的背景以低优先级和高压缩率(low bpp)单独编码。因此,获得了更高的压缩率,更好的诊断图像质量和改进的性能参数(CR, MSE, PSNR和CoC)。将实验结果与超声医学图像的Scaling、Maxshift、Implicit和EBCOT方法进行了比较,发现本文算法的效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context based medical image compression with application to ultrasound images
The basic goal of medical image compression is to reduce the bit rate and enhance the compression efficiency for the transmission and storage of the medical imagery while maintaining an acceptable diagnostic image quality. Because of the storage, transmission bandwidth and the limitations of the conventional compression methods, the medical imagery need to be compressed selectively to reduce the transmission time and storage cost along with the preservance of the high quality of the image. The other important reason of context based medical image compression is the high spatial resolution and contrast sensitivity requirements. In medical images, contextual region is an area which contains the most useful and important information and must be coded carefully without appreciable distortion. A novel scheme for context based coding is proposed here and yields significantly better compression rates than the general methods of JPEG and JPEG2000. In the proposed method the contextual part of the image is encoded selectively on the high priority basis with a very low compression rate (high bpp) and the background of the image is separately encoded with a low priority and a high compression rate (low bpp). As a result, high over all compression rates, better diagnostic image quality and improved performance parameters (CR, MSE, PSNR and CoC) are obtained. The experimental results have been compared to the Scaling, Maxshift, Implicit and EBCOT methods on ultrasound medical images and it is found that the proposed algorithm gives better and improved results.
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