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Image Source Separation Using Color Channel Dependencies

机译:使用颜色通道相关性的图像源分离

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摘要

We investigate the problem of source separation in images in the Bayesian framework using the color channel dependencies. As a case in point we consider the source separation of color images which have dependence between its components. A Markov Random Field (MRF) is used for modeling of the inter and intra-source local correlations. We resort to Gibbs sampling algorithm for obtaining the MAP estimate of the sources since non-Gaussian priors are adopted. We test the performance of the proposed method both on synthetic color texture mixtures and a realistic color scene captured with a spurious reflection.
机译:我们使用颜色通道依赖性调查贝叶斯框架中图像中的源分离问题。作为一个恰当的例子,我们考虑了彩色图像的源分离,该分离在各成分之间具有依赖性。马尔可夫随机场(MRF)用于对源间和源内局部相关性进行建模。由于采用了非高斯先验,因此我们求助于Gibbs采样算法来获得源的MAP估计。我们测试了该方法在合成颜色纹理混合物和使用伪反射捕获的逼真的颜色场景上的性能。

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