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Statistical image modeling with the magnitude probability density function of complex wavelet coefficients

机译:利用复小波系数的幅度概率密度函数进行统计图像建模

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We derive the probability density function (pdf) of the magnitude of complex wavelet coefficients with the assumption that each of the real and imaginary parts is characterized by the generalized Gaussian distribution (GGD) model. The parameter estimation method using maximum likelihood for the derived pdf is presented. The derived pdf fits acceptably well with the actual coefficient magnitude of images. To show the usefulness of the derived pdf, we use it to model the magnitude of complex coefficients of texture images for an application in texture image retrieval. The experimental results show that using the derived magnitude pdf yields higher retrieval rate than using the GGD model to fit with the real part or imaginary part of coefficients, and than using the mean and standard deviation of the magnitude of coefficients.
机译:我们假设复数小波系数的大小的概率密度函数(pdf)假设每个实部和虚部都具有广义高斯分布(GGD)模型的特征。提出了针对导出的pdf使用最大似然性的参数估计方法。导出的pdf与图像的实际系数幅度非常吻合。为了显示导出的pdf的有用性,我们使用它来对纹理图像的复系数的大小进行建模,以用于纹理图像检索。实验结果表明,与使用GGD模型拟合系数的实部或虚部相比,使用导出的幅度pdf会产生更高的检索率,并且比使用系数幅度的均值和标准差要高。

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