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Markov pyramid models in image analysis

机译:图像分析中的马尔可夫金字塔模型

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Abstract: The use of statistical pattern recognition techniques in image processing has led to simplifying assumptions on the statistical interdependence of the pixel value of an image, which allow theoretical analysis and/or computational implementation to be achieved. For instance, the assumption of statistical independence of the values or that their joint distributions are multivariate normal, simplifies the analysis enormously. However, these results are very limiting in representing models for data, and do not allow for analysis of arbitrary spatial dependencies, in the data. One method for modeling two-dimensional data on a lattice array has been developed by Abend et al. called the Markov mesh model, and is a generalization of the familiar 1D Markov chain. The Markov mesh model allows the use of a class of spatial dependencies that is popular in many 2D data processing schemes, including image processing. One advantage of using this model is that it allows a computationally attractive implementation of statistical procedures involving joint and conditional probabilities. In this paper, we generalize Abend et al.'s results to a more comprehensive model, which we call the Markov pyramid model, using the concept of partial ordering. We present the necessary background for this model and show that Abend's model is a special case of our model. Finally, we present a simple application of our results to texture modeling.!6
机译:摘要:在图像处理中使用统计模式识别技术可以简化关于图像像素值的统计相互依赖性的假设,从而可以实现理论分析和/或计算实现。例如,数值的统计独立性或它们的联合分布是多元正态的假设极大地简化了分析。但是,这些结果在表示数据模型方面非常有局限性,并且不允许分析数据中的任意空间相关性。 Abend等人已经开发出一种在栅格阵列上对二维数据建模的方法。称为Markov网格模型,是熟悉的1D Markov链的推广。马尔可夫网格模型允许使用在许多2D数据处理方案(包括图像处理)中流行的一类空间相关性。使用此模型的一个优点是,它允许对涉及联合概率和条件概率的统计过程进行有吸引力的计算实现。在本文中,我们使用部分排序的概念将Abend等人的结果推广到一个更全面的模型,称为马尔可夫金字塔模型。我们介绍了此模型的必要背景,并表明Abend模型是该模型的特例。最后,我们将结果简单地应用到纹理建模中!6

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