This paper describes state-of-the-art approaches to near-lossless image compression by adaptive causal DPCM and presents two advanced schemes based on crisp and fuzzy switching of predictors, respectively. The former relies on a linear-regression prediction in which a different predictor is employed for each image block. Such block-representative predictors are calculated from the original data set through an iterative relaxation-labeling procedure. Coding time are affordable thanks to fast convergence of training. Decoding is always performed in real time. The latter is still based on adaptive MMSE prediction in which a different predictor at each pixel position is achieved by blending a number of prototype predictors through adaptive weights calculated from the past decoded samples. Quantization error feedback loops are introduced into the basic lossless encoders to enable user-defined upper-bounded reconstruction errors. Both schemes exploit context modeling of prediction errors followed by arithmetic coding to enhance entropy coding performances. A thorough performance comparison on a wide test image set show the superiority of the proposed schemes over both up-to-date encoders in the literature and new/upcoming standards.

Near-Lossless Image Compression by Adaptive Prediction: New Developments and Comparison of Algorithms

Bruno Aiazzi;Luciano Alparone;Stefano Baronti
2003

Abstract

This paper describes state-of-the-art approaches to near-lossless image compression by adaptive causal DPCM and presents two advanced schemes based on crisp and fuzzy switching of predictors, respectively. The former relies on a linear-regression prediction in which a different predictor is employed for each image block. Such block-representative predictors are calculated from the original data set through an iterative relaxation-labeling procedure. Coding time are affordable thanks to fast convergence of training. Decoding is always performed in real time. The latter is still based on adaptive MMSE prediction in which a different predictor at each pixel position is achieved by blending a number of prototype predictors through adaptive weights calculated from the past decoded samples. Quantization error feedback loops are introduced into the basic lossless encoders to enable user-defined upper-bounded reconstruction errors. Both schemes exploit context modeling of prediction errors followed by arithmetic coding to enhance entropy coding performances. A thorough performance comparison on a wide test image set show the superiority of the proposed schemes over both up-to-date encoders in the literature and new/upcoming standards.
2003
Istituto di Fisica Applicata - IFAC
Inglese
M. S. Schmalz
Proceedings of the 47th SPIE Annual Meeting: Mathematics of Data/Image Coding, Compression, and Encryption V, with Applications
Spie's 47th Annual Meeting, Mathematics of Data/Image Coding, Compression, and Encryption V, with Applications, 2002
4793
1
12
12
0-8194-4560-6
http://proceedings.spiedigitallibrary.org/proceeding.aspx?articleid=894956
SPIE-Society of Photo-optical Instrumentation Engineers
Bellingham
STATI UNITI D'AMERICA
Sì, ma tipo non specificato
7-11 Luglio 2002
Seattle, WA, USA
Adaptive DPCM prediction
near-lossless image compression
relaxation labeling
fuzzy logic
statistical context modeling and entropy coding
Il contributo è stato pubblicato nel Gennaio 2003.
3
none
Aiazzi, Bruno; Alparone, Luciano; Baronti, Stefano
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/20.500.14243/61267
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