A lossless compression method for multi-component medical images based on big data mining

Abstract In disease diagnosis, medical image plays an important part. Its lossless compression is pretty critical, which directly determines the requirement of local storage space and communication bandwidth of remote medical systems, so as to help the diagnosis and treatment of patients. There are...

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Main Authors: Gangtao Xin, Pingyi Fan
Format: Article
Language:English
Published: Nature Publishing Group 2021-06-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-91920-x
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spelling doaj-43858440c508469ba4db39daa515613a2021-06-13T11:41:36ZengNature Publishing GroupScientific Reports2045-23222021-06-0111111110.1038/s41598-021-91920-xA lossless compression method for multi-component medical images based on big data miningGangtao Xin0Pingyi Fan1The Department of Electronic Engineering, Tsinghua UniversityThe Department of Electronic Engineering, Tsinghua UniversityAbstract In disease diagnosis, medical image plays an important part. Its lossless compression is pretty critical, which directly determines the requirement of local storage space and communication bandwidth of remote medical systems, so as to help the diagnosis and treatment of patients. There are two extraordinary properties related to medical images: lossless and similarity. How to take advantage of these two properties to reduce the information needed to represent an image is the key point of compression. In this paper, we employ the big data mining to set up the image codebook. That is, to find the basic components of images. We propose a soft compression algorithm for multi-component medical images, which can exactly reflect the fundamental structure of images. A general representation framework for image compression is also put forward and the results indicate that our developed soft compression algorithm can outperform the popular benchmarks PNG and JPEG2000 in terms of compression ratio.https://doi.org/10.1038/s41598-021-91920-x
collection DOAJ
language English
format Article
sources DOAJ
author Gangtao Xin
Pingyi Fan
spellingShingle Gangtao Xin
Pingyi Fan
A lossless compression method for multi-component medical images based on big data mining
Scientific Reports
author_facet Gangtao Xin
Pingyi Fan
author_sort Gangtao Xin
title A lossless compression method for multi-component medical images based on big data mining
title_short A lossless compression method for multi-component medical images based on big data mining
title_full A lossless compression method for multi-component medical images based on big data mining
title_fullStr A lossless compression method for multi-component medical images based on big data mining
title_full_unstemmed A lossless compression method for multi-component medical images based on big data mining
title_sort lossless compression method for multi-component medical images based on big data mining
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-06-01
description Abstract In disease diagnosis, medical image plays an important part. Its lossless compression is pretty critical, which directly determines the requirement of local storage space and communication bandwidth of remote medical systems, so as to help the diagnosis and treatment of patients. There are two extraordinary properties related to medical images: lossless and similarity. How to take advantage of these two properties to reduce the information needed to represent an image is the key point of compression. In this paper, we employ the big data mining to set up the image codebook. That is, to find the basic components of images. We propose a soft compression algorithm for multi-component medical images, which can exactly reflect the fundamental structure of images. A general representation framework for image compression is also put forward and the results indicate that our developed soft compression algorithm can outperform the popular benchmarks PNG and JPEG2000 in terms of compression ratio.
url https://doi.org/10.1038/s41598-021-91920-x
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AT pingyifan losslesscompressionmethodformulticomponentmedicalimagesbasedonbigdatamining
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