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GENERALIZED MULTIVARIATE EXPONENTIAL POWER PRIOR FOR WAVELET-BASED MULTICHANNEL IMAGE RESTORATION

机译:基于小波的多通道图像恢复之前的广义多元指数功率

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In multichannel imaging, several observations of the same scene acquired in different spectral ranges are available. Very often, the spectral components are degraded by a blur modelled by a linear operator and an additive noise. In this paper, we address the problem of recovering the image components in a wavelet domain by adopting a variational approach. Our contribution is twofold. First, an appropriate multivariate penalty function is derived from a novel joint prior model of the probability distribution of the wavelet coefficients located at the same spatial position in a given subband through all the channels. Secondly, we address the challenging issue of computing the Maximum A Posteriori estimate by using a Majorize-Minimize optimization strategy. Simulation tests carried out on multispectral satellite images show that the proposed method outperforms conventional techniques.
机译:在多通道成像中,可以使用在不同光谱范围内获得的相同场景的若干观察。通常,光谱分量通过线性操作员和添加剂噪声模拟的模糊而劣化。在本文中,我们通过采用变分方法解决了在小波域中恢复图像分量的问题。我们的贡献是双重的。首先,适当的多变量惩罚函数来自小波系数的概率分布的新颖联合模型,其通过所有通道在给定子带中的相同空间位置。其次,我们解决了通过使用多大化最小化优化策略来计算最大后验估计的具有挑战性的问题。在多光谱卫星图像上进行的仿真测试表明,所提出的方法优于传统技术。

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