Machine Learning Methods in Medical Image Compression

Q3 Computer Science
Yuxuan Hou, Yining Di, Zhong Ren, Y. Tao, Wei Chen
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引用次数: 0

Abstract

A large amount of image data such as CT that needs storage and transmission is generated in medical research. It is hard for the hospital to handle all data of the numerous patients. Therefore, it is of vital importance to compress these image data. Recently, learning-based medical image compression has become a new research trend with the development of artificial intelligence. Traditional methods in medical data compression are firstly reviewed. Further study in learning-based approaches is made, and the compression performance of these approaches in different medical image data such as brain CT and liver CT are shown. In the meantime, the advantages and disadvantages of these approaches in various aspects such as compression ratio, algorithm complexity and reconstruction quality are systematically summarized. It is pointed out that the combination of learning-based method and ROI-based method achieves high compression ratio brought by lossy compression, while keeping the feature information of the critical regions. Consequently, this approach is much more suitable for medical image compression than others. Finally, the paper concluded with a discussion of future development in this field.
医学图像压缩中的机器学习方法
医学研究中产生了大量需要存储和传输的CT等图像数据。医院很难处理众多病人的所有数据。因此,对这些图像数据进行压缩是至关重要的。近年来,随着人工智能的发展,基于学习的医学图像压缩成为一种新的研究趋势。首先对传统的医学数据压缩方法进行了综述。对基于学习的方法进行了进一步的研究,并展示了这些方法在不同医学图像数据(如脑CT和肝CT)中的压缩性能。同时,系统地总结了这些方法在压缩比、算法复杂度和重建质量等方面的优缺点。指出基于学习的方法和基于ROI的方法相结合,在保持关键区域特征信息的同时,实现了有损压缩带来的高压缩比。因此,这种方法比其他方法更适合于医学图像压缩。最后,本文对该领域的未来发展进行了探讨。
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来源期刊
计算机辅助设计与图形学学报
计算机辅助设计与图形学学报 Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.20
自引率
0.00%
发文量
6833
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