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首页> 外文期刊>Applied optics >Multiframe deconvolution with space-variant point-spread functions by use of inverse filtering and fast Fourier transform
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Multiframe deconvolution with space-variant point-spread functions by use of inverse filtering and fast Fourier transform

机译:通过使用逆滤波和快速傅立叶变换,具有空间变量点扩展功能的多帧解卷积

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摘要

A procedure for deconvolution of multiple images of the same object with space-variant point-spreadfunctions (PSFs) is presented. It is based on expressing deconvolution with inverse filtering as convolution with kernels corresponding to inverse PSFs. Sets of basis functions are made from these inverse PSFs, given at discrete sample points, through Karhunen-Loeve (K-L) decomposition. The entire field of view can then be convolved with the K-L kernels. Coadding the results using continuous maps of expansion weights, interpolated for every pixel between the sample points, results in an image that is deconvolved with smoothly varying PSFs that match the discrete measurements. A demonstration data set is used to show how the transition between the grid points improves deconvolutions compared to piecewise deconvolution and mosaicking by avoiding the blending of discontinuities at the interfaces between adjacent subfields.
机译:提出了使用空间变量点扩展函数(PSF)对同一对象的多个图像进行反卷积的过程。它基于用反滤波将反卷积表示为与对应于反PSF的内核的卷积。通过Karhunen-Loeve(K-L)分解,在离散的采样点上从这些逆PSF生成基础函数集。然后可以将整个视场与K-L内核进行卷积。使用扩展权重的连续映射(在采样点之间为每个像素插值)将结果相加,结果得到的图像将与与离散测量值相匹配的平滑变化的PSF进行去卷积。演示数据集用于显示网格点之间的过渡与分段反卷积和镶嵌相比如何通过避免相邻子场之间的界面处的不连续性混合来改善反卷积。

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