一种改进的多帧超分辨率协同自适应维纳滤波器

K. M. Mohamed, R. Hardie
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引用次数: 0

摘要

在采集过程中,数字图像总是会受到一些限制图像分辨率和效用的现象的影响。欠采样引起的混叠、光学模糊和传感器噪声是影响图像分辨率的一些因素。多帧超分辨率(SR)是一种将特定场景的几个低分辨率(LR)帧处理在一起以产生一个或多个高分辨率(HR)图像的技术。与任何LR帧相比,HR图像具有更高的空间频率内容,更少的噪声和模糊。本文作者提出的多帧自适应协同维纳滤波(CAWF)算法是目前较为有效的多帧自适应滤波算法之一。在本文中,我们通过使用空间变化的信号方差估计来改进原始的CAWF SR方法。我们没有使用全局信号方差估计作为原始CAWF SR算法的外部输入,而是在每个处理窗口中估计所需的信号方差,并将其合并到HR像素估计中。提出并论证了改进后的CAWF SR。此外,还对原CAWF SR和改进后的CAWF SR进行了性能比较。改进后的CAWF SR优于原始的CAWF SR,特别是在低信噪比图像中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A modified collaborative adaptive wiener filter for multi-frame super-resolutionaper
During acquisition, digital images are invariably degraded by a number of phenomena that limit image resolution and utility. Aliasing from undersampling, blur from optics, and sensor noise are some factors which can affect the image resolution. Multi-frame super-resolution (SR) is a technique that takes several low-resolution (LR) frames of a particular scene and processes them together to produce one or more high-resolution (HR) images. The HR images have higher spatial frequency content, and less noise and blur, than any of the LR frames. A collaborative adaptive Wiener filter (CAWF) for multi-frame SR, proposed by the current authors, is one of the very recent effective multi-frame SR algorithms. In this paper, we modify the original CAWF SR method by employing a spatially varying signal variance estimate. Instead of using a global signal variance estimate as an external input to the original CAWF SR algorithm, we estimate the desired signal variance in each processing window and incorporate it to estimate the HR pixels. The modified CAWF SR is presented and demonstrated. In addition, performance comparisons between the original and the modified CAWF SR are conducted. The modified CAWF SR outperforms the original CAWF SR, particularly in low signal-to-noise ratio images.
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