2017
DOI: 10.3745/jips.02.0052
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Adaptive Medical Image Compression Based on Lossy and Lossless Embedded Zerotree Methods

Abstract: Since the progress of digital medical imaging techniques, it has been needed to compress the variety of medical images. In medical imaging, reversible compression of image's region of interest (ROI) which is diagnostically relevant is considered essential. Then, improving the global compression rate of the image can also be obtained by separately coding the ROI part and the remaining image (called background). For this purpose, the present work proposes an efficient reversible discrete cosine transform (RDCT) … Show more

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Cited by 7 publications
(2 citation statements)
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References 26 publications
(35 reference statements)
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“…Annex An in PS3.5 (Data Structures and Encoding) defines several transfer syntaxes following the JPEG 2000 standard and provides lossless (bitpreserving) and lossy compression schemes. A transfer syntax is a collection of encoding rules that may clearly express abstract syntaxes [2], [27].…”
Section: A Image Compression In Dicommentioning
confidence: 99%
“…Annex An in PS3.5 (Data Structures and Encoding) defines several transfer syntaxes following the JPEG 2000 standard and provides lossless (bitpreserving) and lossy compression schemes. A transfer syntax is a collection of encoding rules that may clearly express abstract syntaxes [2], [27].…”
Section: A Image Compression In Dicommentioning
confidence: 99%
“…Elhannachi et al [4] study the current existing types of medical image compression algorithms using multi ROIs [5,6] that do not offer significant reduction in the volume of images. Motivated by this inefficiency, the authors proposes naïve method based on the EZW algorithm [7] to improve its performance for lossless compression.…”
mentioning
confidence: 99%