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A spatial correlation based method for neighbor set selection in random field image models

机译:随机场图像模型中基于空间相关性的邻居集选择方法

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摘要

Random field (RF) models have widespread application in image modeling and analysis. The effectiveness of these models is largely dependent on the choice of neighbor sets, which determine the spatial interactions that are representable by the model. We consider the problem of selecting these neighbor sets for simultaneous autoregressive and Gauss-Markov random field models, based on the correlation structure of the image to be modeled. A procedure for identifying appropriate neighbor sets is proposed, and experimental results which demonstrate the viability of this method are presented.
机译:随机场(RF)模型在图像建模和分析中具有广泛的应用。这些模型的有效性在很大程度上取决于邻居集的选择,邻居集决定了模型可表示的空间相互作用。我们考虑基于要建模的图像的相关结构,为同时自回归和高斯-马尔可夫随机场模型选择这些邻居集的问题。提出了一种识别合适邻居集的方法,并给出了证明该方法可行性的实验结果。

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