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Superresolution and noise filtering using moving least squares

机译:使用移动最小二乘法进行超分辨率和噪声过滤

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An irregularly spaced sampling raster formed from a sequence of low-resolution frames is the input to an image sequence superresolution algorithm whose output is the set of image intensity values at the desired high-resolution image grid. The method of moving least squares (MLS) in polynomial space has proved to be useful in filtering the noise and approximating scattered data by minimizing a weighted mean-square error norm, but introducing blur in the process. Starting with the continuous version of the MLS, an explicit expression for the filter bandwidth is obtained as a function of the polynomial order of approximation and the standard deviation (scale) of the Gaussian weight function. A discrete implementation of the MLS is performed on images and the effect of choice of the two dependent parameters, scale and order, on noise filtering and reduction of blur introduced during the MLS process is studied.
机译:由低分辨率帧序列形成的不规则间隔采样栅格是图像序列超分辨率算法的输入,该算法的输出是所需高分辨率图像网格处的一组图像强度值。事实证明,在多项式空间中移动最小二乘(MLS)的方法可用于通过最小化加权均方误差范数来过滤噪声和近似分散数据,但会在过程中引入模糊。从MLS的连续版本开始,根据近似的多项式阶数和高斯权重函数的标准偏差(比例)获得滤波器带宽的显式表达式。在图像上执行MLS的离散实现,并研究了两个相关参数的选择(比例和阶数)对MLS过程中引入的噪声过滤和模糊减少的影响。

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