Reduced-Complexity Deterministic Annealing for Vector Quantizer Design

<p/> <p>This paper presents a reduced-complexity deterministic annealing (DA) approach for vector quantizer (VQ) design by using soft information processing with simplified assignment measures. Low-complexity distributions are designed to mimic the Gibbs distribution, where the latter is...

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Main Authors: Ortega Antonio, Demirciler Kemal
Format: Article
Language:English
Published: SpringerOpen 2005-01-01
Series:EURASIP Journal on Advances in Signal Processing
Subjects:
Online Access:http://dx.doi.org/10.1155/ASP.2005.1807
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spelling doaj-08814bacb2b7435085efa1a0e7d10a342020-11-24T23:18:54ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61721687-61802005-01-01200512416018Reduced-Complexity Deterministic Annealing for Vector Quantizer DesignOrtega AntonioDemirciler Kemal<p/> <p>This paper presents a reduced-complexity deterministic annealing (DA) approach for vector quantizer (VQ) design by using soft information processing with simplified assignment measures. Low-complexity distributions are designed to mimic the Gibbs distribution, where the latter is the optimal distribution used in the standard DA method. These low-complexity distributions are simple enough to facilitate fast computation, but at the same time they can closely approximate the Gibbs distribution to result in near-optimal performance. We have also derived the theoretical performance loss at a given system entropy due to using the simple soft measures instead of the optimal Gibbs measure. We use thederived result to obtain optimal annealing schedules for the simple soft measures that approximate the annealing schedule for the optimal Gibbs distribution. The proposed reduced-complexity DA algorithms have significantly improved the quality of the final codebooks compared to the generalized Lloyd algorithm and standard stochastic relaxation techniques, both with and without the pairwise nearest neighbor (PNN) codebook initialization. The proposed algorithms are able to evade the local minima and the results show that they are not sensitive to the choice of the initial codebook. Compared to the standard DA approach, the reduced-complexity DA algorithms can operate over 100 times faster with negligible performance difference. For example, for the design of a 16-dimensional vector quantizer having a rate of 0.4375 bit/sample for Gaussian source, the standard DA algorithm achieved 3.60 dB performance in 16 483 CPU seconds, whereas the reduced-complexity DA algorithm achieved the same performance in 136 CPU seconds. Other than VQ design, the DA techniques are applicable to problems such as classification, clustering, and resource allocation.</p>http://dx.doi.org/10.1155/ASP.2005.1807deterministic annealingcomplexity reductionvector quantizationstochastic relaxationGibbs distributioncodebook initialization
collection DOAJ
language English
format Article
sources DOAJ
author Ortega Antonio
Demirciler Kemal
spellingShingle Ortega Antonio
Demirciler Kemal
Reduced-Complexity Deterministic Annealing for Vector Quantizer Design
EURASIP Journal on Advances in Signal Processing
deterministic annealing
complexity reduction
vector quantization
stochastic relaxation
Gibbs distribution
codebook initialization
author_facet Ortega Antonio
Demirciler Kemal
author_sort Ortega Antonio
title Reduced-Complexity Deterministic Annealing for Vector Quantizer Design
title_short Reduced-Complexity Deterministic Annealing for Vector Quantizer Design
title_full Reduced-Complexity Deterministic Annealing for Vector Quantizer Design
title_fullStr Reduced-Complexity Deterministic Annealing for Vector Quantizer Design
title_full_unstemmed Reduced-Complexity Deterministic Annealing for Vector Quantizer Design
title_sort reduced-complexity deterministic annealing for vector quantizer design
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6172
1687-6180
publishDate 2005-01-01
description <p/> <p>This paper presents a reduced-complexity deterministic annealing (DA) approach for vector quantizer (VQ) design by using soft information processing with simplified assignment measures. Low-complexity distributions are designed to mimic the Gibbs distribution, where the latter is the optimal distribution used in the standard DA method. These low-complexity distributions are simple enough to facilitate fast computation, but at the same time they can closely approximate the Gibbs distribution to result in near-optimal performance. We have also derived the theoretical performance loss at a given system entropy due to using the simple soft measures instead of the optimal Gibbs measure. We use thederived result to obtain optimal annealing schedules for the simple soft measures that approximate the annealing schedule for the optimal Gibbs distribution. The proposed reduced-complexity DA algorithms have significantly improved the quality of the final codebooks compared to the generalized Lloyd algorithm and standard stochastic relaxation techniques, both with and without the pairwise nearest neighbor (PNN) codebook initialization. The proposed algorithms are able to evade the local minima and the results show that they are not sensitive to the choice of the initial codebook. Compared to the standard DA approach, the reduced-complexity DA algorithms can operate over 100 times faster with negligible performance difference. For example, for the design of a 16-dimensional vector quantizer having a rate of 0.4375 bit/sample for Gaussian source, the standard DA algorithm achieved 3.60 dB performance in 16 483 CPU seconds, whereas the reduced-complexity DA algorithm achieved the same performance in 136 CPU seconds. Other than VQ design, the DA techniques are applicable to problems such as classification, clustering, and resource allocation.</p>
topic deterministic annealing
complexity reduction
vector quantization
stochastic relaxation
Gibbs distribution
codebook initialization
url http://dx.doi.org/10.1155/ASP.2005.1807
work_keys_str_mv AT ortegaantonio reducedcomplexitydeterministicannealingforvectorquantizerdesign
AT demircilerkemal reducedcomplexitydeterministicannealingforvectorquantizerdesign
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