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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >Generalized Gaussian scale mixtures: A model for wavelet coefficients of natural images
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Generalized Gaussian scale mixtures: A model for wavelet coefficients of natural images

机译:广义高斯比例混合物:自然图像小波系数模型

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摘要

We develop a Generalized Gaussian scale mixture (GGSM) model of the wavelet coefficients of natural and distorted images. The GGSM model, which is more general than and which subsumes the Gaussian scale mixture (GSM) model, is shown to be a better representation of the statistics of the wavelet coefficients of both natural as well as distorted images. We demonstrate the utility of the model by applying it to various image processing applications, including blind distortion identification and no reference image quality assessment (NR-IQA). Similar to the GSM model, the GGSM model is useful for motivating the use of local divisive energy normalization, especially when the wavelet coefficients are computed on distorted pictures. We show that the GGSM model can lead to improved performance in distortion-related applications, while providing a more principled approach to the statistical processing of distorted image signals. The software release of a GGSM-based NR-IQA approach called DIIVINE-GGSM is available online at http://live.ece.utexas.edu/research/quality/diivine-ggsm.zip for further experimentation.
机译:我们开发了自然和扭曲图像的小波系数的广义高斯比例混合(GGSM)模型。 GGSM模型比载于高斯尺度混合(GSM)模型的GGSM模型,被证明是自然和扭曲图像的小波系数的统计的更好表示。我们通过将模型应用于各种图像处理应用来展示模型的效用,包括盲失调识别和没有参考图像质量评估(NR-IQA)。类似于GSM模型,GGSM模型可用于激励局部分裂能量归一化的使用,特别是当小波系数在扭曲的图像上计算时。我们表明GGSM模型可以导致与失真相关的应用中的性能提高,同时提供更加原则的方法来扭曲图像信号的统计处理。用于Diivine-GGSM的基于GGSM的NR-IQA方法的软件发布可在http://live.ece.utexas.edu/research/quality/diivine-gds/diivine-gds.zip中获得进一步的实验。

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