特征方程多根自回归参数辨识问题的求解

N. Andriyanov, M. N. Sluzhivyi
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引用次数: 4

摘要

在用数学模型描述真实图像时,模型参数的辨识是一个重要的问题。在这种情况下,当特定类型的模型已知时,识别本身更容易执行。换句话说,如果存在多个具有不同属性特征的模型,那么如果与适合的图像类型有对应关系,那么就可以提前确定要使用的模型。因此,在本文中,我们不考虑模型选择的标准,而是对自回归模型(包括具有多个特征方程根的模型)进行参数识别。这是因为该模型生成的图像验证了识别的有效性。然而,即使在已知模型的情况下使用这种方法,也必须首先确定模型的顺序。为此,在YuleWalker方程的基础上,研究了一种确定模型阶数的算法,并找到了模型的最优参数。在这种情况下,该算法可以用于处理真实图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solution for the problem of the parameters identification for autoregressions with multiple roots of characteristic equations
When describing a real image using a mathematical model, the problem of model parameters identification is of importance. In this case the identification itself is easier to perform when a particular type of model is known. In other words, if there is a number of models characterized by different properties, then if there is a correspondence with the type of suitable images, then the model to be used can be determined in advance. Therefore, in this paper, we do not consider the criteria for model selection, but perform the identification of parameters for autoregressive models, including those with multiple roots of characteristic equations. This is due to the fact that the effectiveness of identification is verified by the images generated by this model. However, even using this approach where the model is known, one must first determine the order of the model. In this regard, on the basis of YuleWalker equations, an algorithm for determining the order of the model is investigated, and the optimal parameters of the model are also found. In this case the proposed algorithm can be used when processing real images.
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