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Reduced order strip Kalman filtering using singular perturbation method

机译:使用奇异摄动法的降阶带卡尔曼滤波

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Strip Kalman filtering for restoration of images degraded by linear shift invariant blur and additive white Gaussian noise is considered. The image process is modeled by a one-dimensional vector autoregressive (AR) model in each strip. It is shown that the composite dynamic model that is obtained by combining the image model and the blur model takes the form of a singularly perturbed system owing to the strong-weak correlation effects within a window. The time-scale property of the singularly perturbed system is then utilized to decompose the original system into reduced-order subsystems which closely capture the behavior of the full-order system. For these subsystems, the relevant Kalman filter equations are given, providing the suboptimal filtered estimates of the image and the one-step prediction estimates of the blur needed for the next stage. Simulation results are provided.
机译:考虑了带状卡尔曼滤波,用于恢复因线性移位不变模糊和加性高斯白噪声而退化的图像。图像处理由每个条带中的一维矢量自回归(AR)模型建模。结果表明,由于窗口内的强弱相关效应,将图像模型与模糊模型结合得到的复合动态模型采取奇异摄动系统的形式。然后,利用奇异摄动系统的时标特性将原始系统分解为降阶子系统,该子系统可以精确捕获全阶系统的行为。对于这些子系统,给出了相关的卡尔曼滤波方程式,提供了图像的次优滤波估计和下一阶段所需模糊的单步预测估计。提供了仿真结果。

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