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Image probability distribution based on generalized gamma function
40
Citations
13
References
2005
Year
EngineeringImage AnalysisComputational ImagingDistribution TestsStatisticsImage Probability DistributionMaximum LikelihoodRadiologyHealth SciencesImage FormationMachine VisionDensity EstimationMedical ImagingProbability TheoryOptical Image RecognitionMedical Image ComputingDct CoefficientsComputer VisionImage Coding
In this letter, we propose results of distribution tests that indicate that for many natural images, the statistics of the discrete cosine transform (DCT) coefficients are best approximated by a generalized gamma function (G/spl Gamma/F), which includes the conventional Gaussian, Laplacian, and gamma probability density functions. The major parameter of the G/spl Gamma/F is estimated according to the maximum likelihood (ML) principle. Experimental results on a number of /spl chi//sup 2/ tests indicate that the G/spl Gamma/F can be used effectively for modeling the DCT coefficients compared to the conventional Laplacian and generalized Gaussian function (GGF).
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