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Image estimation using fast modified reduced update Kalman filter

机译:使用快速修正的简化更新卡尔曼滤波器进行图像估计

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摘要

The authors have proposed some modifications of the reduced update Kalman filter (RUKF) as applied to filtering of images corrupted by additive noise. They have reduced the computational complexity by reducing the state dimensionality. By doing so, it is shown that the computational requirement is reduced by an order of magnitude while the loss of performance is only marginal. Next, the RUKF is modified using the score function based approach to accommodate non-Gaussian noise. The image is modeled as a nonstationary mean and stationary variance autoregressive Gaussian process. It is shown that the stationary variance assumption is reasonable if the nonstationary mean is computed by an edge and detail preserving efficient estimator of local nonstationary mean. Such an estimator, called the hybrid multistage medium D (HMSMD) filter, is also described. Detailed experimental results are provided which indicate the success of the new filtering scheme.
机译:作者已经提出了对简化更新卡尔曼滤波器(RUKF)的一些修改,该修改应用于过滤因加性噪声破坏的图像。它们通过减小状态维数来降低计算复杂度。这样做表明,计算需求减少了一个数量级,而性能损失仅是很小的。接下来,使用基于得分函数的方法修改RUKF,以适应非高斯噪声。图像建模为非平稳均值和平稳方差自回归高斯过程。结果表明,如果利用局部非平稳均值的边缘和细节保持有效估计量来计算非平稳均值,则平稳方差假设是合理的。还描述了这种估计器,称为混合多级介质D(HMSMD)滤波器。提供了详细的实验结果,这些结果表明了新过滤方案的成功。

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