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MAP estimation of finite gray-scale digital images corrupted by supremum/infimum noise

机译:最高/最低噪声破坏的有限灰度数字图像的MAP估计

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摘要

Finite gray-scale digital images are modeled as realizations of discrete random functions (DRF), and then the estimation of realizations of DRF corrupted by a supremum/infimum noise model is considered. It is proved that morphological operators such as openings, closings, supremum of openings and infimum of closings are optimal maximum a posteriori (MAP) estimators under an appropriate and minimal set of assumptions relating to the structural and statistical constraints on image DRF and noise DRF. These results are obtained for independent, identically distributed (i.i.d.) noise for single and multiframe observation scenarios. Next, the assumption of i.i.d. noise is relaxed and the MAP optimality and strong consistency of morphological filters for filtering image DRF degraded by morphologically smooth noise (i.e., colored noise) is proved. Simulations on actual image data are carried out in support of the validity of theoretical results presented.
机译:将有限的灰度数字图像建模为离散随机函数(DRF)的实现,然后考虑由最高/最低噪声模型破坏的DRF的实现的估计。事实证明,在与图像DRF和噪声DRF的结构和统计约束有关的适当且最小的假设集下,形态运算符(例如,开口,闭合,开口的最大值和闭合的最小值)是最佳的最大后验(MAP)估计量。这些结果是针对单帧和多帧观察场景的独立,均匀分布(i.d.)噪声获得的。接下来,i.d。的假设噪声被放松,并且证明了用于过滤由形态上平滑的噪声(即彩色噪声)退化的图像DRF的形态学滤波器的MAP最优性和强一致性。对实际图像数据进行了仿真,以支持所提出的理论结果的有效性。

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