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a multi-class magnitude classifying sparse source model for compressible sources
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نویسنده
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aramideh m. ,namjoo e. ,nooshyar m.
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منبع
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مهندسي برق دانشگاه تبريز - 2021 - دوره : 51 - شماره : 2 - صفحه:169 -182
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چکیده
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Source modelling is a gateway to the fascinating world of source coding. many realworld sources are sparse or have a sparse representation. according to this fact, this work has focused on providing a new model to represent realworld nonstrictly sparse (compressible) sources. to this aim, a novel model has been evolved from a simple sparse binary source to reflect the characteristics of compressible sources. the model is capable to represents realworld compressible sources by classifying samples into different classes based on their magnitudes. the model parameters are estimated using an innovative approach, a combination of a clustering technique and the binary genetic algorithm. the ability of the new approach has been assessed in modeling dct coefficients of still images and video sequences. the proposed model also inspires an efficient coding approach to compress a wide range of sources including compressible sources. comparison with classical wellknown distributions including laplace, cauchy, and generalized gaussian distribution and also with the most recent noisy bg model reveals the capabilities of the proposed model in describing the characteristics of sparse sources. the numerical results based on the “chisquare goodness of fit” show that the proposed model provides a better fit to reflect the statistical characteristics of compressible sources.
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کلیدواژه
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1binary genetic algorithm ,chi-square goodness of fit ,compressible sources ,gaussian mixture model ,parameter estimation ,source modelling
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آدرس
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engineering faculty, electrical engineering department, iran, engineering faculty, electrical engineering department, iran, university of mohaghegh ardabili, engineering faculty, electrical and computer engineering department, iran
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پست الکترونیکی
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nooshyar@uma.ac.ir
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A Multi-class Magnitude Classifying Sparse Source Model for Compressible Sources
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Authors
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Aramideh M. ,Namjoo E. ,Nooshyar M.
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Abstract
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Source modelling is a gateway to the fascinating world of source coding. Many realworld sources are sparse or have a sparse representation. According to this fact, this work has focused on providing a new model to represent realworld nonstrictly sparse (compressible) sources. To this aim, a novel model has been evolved from a simple sparse binary source to reflect the characteristics of compressible sources. The model is capable to represents realworld compressible sources by classifying samples into different classes based on their magnitudes. The model parameters are estimated using an innovative approach, a combination of a clustering technique and the binary genetic algorithm. The ability of the new approach has been assessed in modeling DCT coefficients of still images and video sequences. The proposed model also inspires an efficient coding approach to compress a wide range of sources including compressible sources. Comparison with classical wellknown distributions including Laplace, Cauchy, and generalized Gaussian distribution and also with the most recent Noisy BG model reveals the capabilities of the proposed model in describing the characteristics of sparse sources. The numerical results based on the “chisquare goodness of fit” show that the proposed model provides a better fit to reflect the statistical characteristics of compressible sources.
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Keywords
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1Binary genetic algorithm ,Chi-square goodness of fit ,Compressible sources ,gaussian mixture model ,parameter estimation ,Source modelling
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