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Causal and semicausal AR image model identification using the EM algorithm

机译:基于EM算法的因果和半因果AR图像模型识别

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摘要

The method presented by T. Katayama and T. Hirai (1990), who considered the problem of semicausal autoregressive (AR) parameter identification for images degraded by observation noise, is extended. In particular, an approach to identifying both the causal and semicausal AR parameters without a priori knowledge of the observation noise power is proposed. The image is decomposed into 1-D independent complex scalar subsystems resulting from the vector state-space model, using the unitary discrete Fourier transform (DFT). Then the expectation-maximization algorithm is applied to each subsystem to identify the AR parameters of the transformed image. The AR parameters of the original image are then identified using the least-square method. The restored image is obtained as a byproduct of the EM algorithm.
机译:扩展了由T. Katayama和T. Hirai(1990)提出的方法,该方法考虑了因观察噪声而退化的图像的半因果自回归(AR)参数识别问题。特别地,提出了一种无需先验观测噪声功率就识别因果和半因果AR参数的方法。使用the离散傅里叶变换(DFT),将图像分解成由向量状态空间模型得出的一维独立复杂标量子系统。然后将期望最大化算法应用于每个子系统,以识别变换图像的AR参数。然后使用最小二乘法确定原始图像的AR参数。获得的还原图像是EM算法的副产品。

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