4 research outputs found

    A Universal Scheme for Wyner–Ziv Coding of Discrete Sources

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    We consider the Wyner–Ziv (WZ) problem of lossy compression where the decompressor observes a noisy version of the source, whose statistics are unknown. A new family of WZ coding algorithms is proposed and their universal optimality is proven. Compression consists of sliding-window processing followed by Lempel–Ziv (LZ) compression, while the decompressor is based on a modification of the discrete universal denoiser (DUDE) algorithm to take advantage of side information. The new algorithms not only universally attain the fundamental limits, but also suggest a paradigm for practical WZ coding. The effectiveness of our approach is illustrated with experiments on binary images, and English text using a low complexity algorithm motivated by our class of universally optimal WZ codes

    Source Coding with Side Information at the Decoder and Uncertain Knowledge of the Correlation

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    International audienceThis paper considers the problem of lossless source coding with side information at the decoder, when the correlation model between the source and the side information is uncertain. Four parametrized models representing the correlation between the source and the side information are introduced. The uncertainty on the correlation appears through the lack of knowledge on the value of the parameters. For each model, we propose a practical coding scheme based on non-binary Low Density Parity Check Codes and able to deal with the parameter uncertainty. At the encoder, the choice of the coding rate results from an information theoretical analysis. Then we propose decoding algorithms that jointly estimate the source vector and the parameters. As the proposed decoder is based on the Expectation-Maximization algorithm, which is very sensitive to initialization, we also propose a method to produce first a coarse estimate of the parameters

    Codage de sources avec information adjacente et connaissance incertaine des corrélations

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    Dans cette thĂšse, nous nous sommes intĂ©ressĂ©s au problĂšme de codage de sources avec information adjacente au dĂ©codeur seulement. Plus prĂ©cisĂ©ment, nous avons considĂ©rĂ© le cas oĂč la distribution jointe entre la source et l'information adjacente n'est pas bien connue. Dans ce contexte, pour un problĂšme de codage sans pertes, nous avons d'abord effectuĂ© une analyse de performance Ă  l'aide d'outils de la thĂ©orie de l'information. Nous avons ensuite proposĂ© un schĂ©ma de codage pratique efficace malgrĂ© le manque de connaissance sur la distribution de probabilitĂ© jointe. Ce schĂ©ma de codage s'appuie sur des codes LDPC non-binaires et sur un algorithme de type EspĂ©rance-Maximisation. Le problĂšme du schĂ©ma de codage proposĂ©, c'est que les codes LDPC non-binaires utilisĂ©s doivent ĂȘtre performants. C'est Ă  dire qu'ils doivent ĂȘtre construits Ă  partir de distributions de degrĂ©s qui permettent d'atteindre un dĂ©bit proche des performances thĂ©oriques. Nous avons donc proposĂ© une mĂ©thode d'optimisation des distributions de degrĂ©s des codes LDPC. Enfin, nous nous sommes intĂ©ressĂ©s Ă  un cas de codage avec pertes. Nous avons supposĂ© que le modĂšle de corrĂ©lation entre la source et l'information adjacente Ă©tait dĂ©crit par un modĂšle de Markov cachĂ© Ă  Ă©missions Gaussiennes. Pour ce modĂšle, nous avons Ă©galement effectuĂ© une analyse de performance, puis nous avons proposĂ© un schĂ©ma de codage pratique. Ce schĂ©ma de codage s'appuie sur des codes LDPC non-binaires et sur une reconstruction MMSE. Ces deux composantes exploitent la structure avec mĂ©moire du modĂšle de Markov cachĂ©.In this thesis, we considered the problem of source coding with side information available at the decoder only. More in details, we considered the case where the joint distribution between the source and the side information is not perfectly known. In this context, we performed a performance analysis of the lossless source coding scheme. This performance analysis was realized from information theory tools. Then, we proposed a practical coding scheme able to deal with the uncertainty on the joint probability distribution. This coding scheme is based on non-binary LDPC codes and on an Expectation-Maximization algorithm. For this problem, a key issue is to design efficient LDPC codes. In particular, good code degree distributions have to be selected. Consequently, we proposed an optimization method for the selection of good degree distributions. To finish, we considered a lossy coding scheme. In this case, we assumed that the correlation channel between the source and the side information is described by a Hidden Markov Model with Gaussian emissions. For this model, we performed again some performance analysis and proposed a practical coding scheme. The proposed scheme is based on non-binary LDPC codes and on MMSE reconstruction using an MCMC method. In our solution, these two components are able to exploit the memory induced by the Hidden Markov model.PARIS11-SCD-Bib. Ă©lectronique (914719901) / SudocSudocFranceF
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