This paper proposes a method to achieve a virtually-lossless compression of medical images. An image is normalized to the standard deviation of its noise, which is adaptively estimated in an unsupervised fashion. The resulting bit map is encoded without any further loss. The compression algorithm is based on a classified linear-regression prediction followed by context-based arithmetic coding of the outcome residuals. Images are partitioned into blocks, e.g., 16×16, and a minimum mean square (MMSE) linear predictor is calculated for each block. Given a preset number of classes, a Fuzzy-C-Means algorithm produces an initial guess of classified predictors to be fed to an iterative procedure which classifies pixel blocks simultaneously refining the associated predictors. All the predictors are transmitted along with the label of each block. Coding time are affordable thanks to fast convergence of the iterative algorithms. Decoding is always performed in real time. The compression scheme provides impressive performances, especially when applied to X-ray images.

Virtually-lossless compression of medical images through classified prediction and context-based arithmetic coding

Bruno Aiazzi;Luciano Alparone;Stefano Baronti;Franco Lotti
1998

Abstract

This paper proposes a method to achieve a virtually-lossless compression of medical images. An image is normalized to the standard deviation of its noise, which is adaptively estimated in an unsupervised fashion. The resulting bit map is encoded without any further loss. The compression algorithm is based on a classified linear-regression prediction followed by context-based arithmetic coding of the outcome residuals. Images are partitioned into blocks, e.g., 16×16, and a minimum mean square (MMSE) linear predictor is calculated for each block. Given a preset number of classes, a Fuzzy-C-Means algorithm produces an initial guess of classified predictors to be fed to an iterative procedure which classifies pixel blocks simultaneously refining the associated predictors. All the predictors are transmitted along with the label of each block. Coding time are affordable thanks to fast convergence of the iterative algorithms. Decoding is always performed in real time. The compression scheme provides impressive performances, especially when applied to X-ray images.
1998
Istituto di Fisica Applicata - IFAC
Inglese
K. Aizawa; R. L. Stevenson; Y.-Q. Zhang
Proceedings of SPIE Electronic Imaging 1999: Visual Communications and Image Processing '99
SPIE Electronic Imaging 1999: Visual Communications and Image Processing '99
3653
1033
1040
8
0-8194-3124-9
http://spiedigitallibrary.org/proceedings/resource/2/psisdg/3653/1/1033_1?isAuthorized=no
SPIE-International Society for Optical Engineering
Bellingham
STATI UNITI D'AMERICA
Sì, ma tipo non specificato
25-27 Gennaio 1999
San Jose, CA, USA
Virtually-lossless compression
MMSE spatial DPCM
block classified prediction
noise estimation
medical images
Congresso tenuto nel Gennaio 1999 ma Proceedings pubblicati precedentemente nel Dicembre 1998.
4
none
Bruno Aiazzi; Luciano Alparone; Stefano Baronti; Franco Lotti
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/231051
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