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Statistical processing of large image sequences

机译:大图像序列的统计处理

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The dynamic estimation of large-scale stochastic image sequences, as frequently encountered in remote sensing, is important in a variety of scientific applications. However, the size of such images makes conventional dynamic estimation methods, for example, the Kalman and related filters, impractical. We present an approach that emulates the Kalman filter, but with considerably reduced computational and storage requirements. Our approach is illustrated in the context of a 512 /spl times/ 512 image sequence of ocean surface temperature. The static estimation step, the primary contribution here, uses a mixture of stationary models to accurately mimic the effect of a nonstationary prior, simplifying both computational complexity and modeling. Our approach provides an efficient, stable, positive-definite model which is consistent with the given correlation structure. Thus, the methods of this paper may find application in modeling and single-frame estimation.
机译:遥感中经常遇到的大规模随机图像序列的动态估计在各种科学应用中都很重要。然而,这种图像的尺寸使得常规的动态估计方法(例如,卡尔曼和相关的滤波器)不切实际。我们提出了一种模拟卡尔曼滤波器的方法,但是大大减少了计算和存储需求。我们的方法是在512个/ spl次/ 512个海洋表面温度图像序列的背景下进行说明的。静态估计步骤是这里的主要贡献,它使用固定模型的混合来精确模拟非平稳先验的影响,从而简化了计算复杂性和建模。我们的方法提供了一个有效,稳定,正定的模型,该模型与给定的相关结构一致。因此,本文的方法可以在建模和单帧估计中找到应用。

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