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Robust super-resolution by fusion of interpolated frames for color and grayscale images

机译:通过融合用于彩色和灰度图像的插值帧来实现强大的超分辨率

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Multi-frame super-resolution (SR) processing seeks to overcome undersampling issues that can lead to undesirable aliasing artifacts. The key to effective multi-frame SR is accurate subpixel inter-frame registration. This accurate registration is challenging when the motion does not obey a simple global translational model and may include local motion. SR processing is further complicated when the camera uses a division-of-focal-plane (DoFP) sensor, such as the Bayer color filter array. Various aspects of these SR challenges have been previously investigated. Fast SR algorithms tend to have difficulty accommodating complex motion and DoFP sensors. Furthermore, methods that can tolerate these complexities tend to be iterative in nature and may not be amenable to real-time processing. In this paper, we present a new fast approach for performing SR in the presence of these challenging imaging conditions. We refer to the new approach as Fusion of Interpolated Frames (FIF) SR. The FIF SR method decouples the demosaicing, interpolation, and restoration steps to simplify the algorithm. Frames are first individually demosaiced and interpolated to the desired resolution. Next, FIF uses a novel weighted sum of the interpolated frames to fuse them into an improved resolution estimate. Finally, restoration is applied to deconvolve the modeled system PSF. The proposed FIF approach has a lower computational complexity than most iterative methods, making it a candidate for real-time implementation. We provide a detailed description of the FIF SR method and show experimental results using synthetic and real datasets in both constrained and complex imaging scenarios. The experiments include airborne grayscale imagery and Bayer color array images with affine background motion plus local motion.
机译:多帧超分辨率(SR)处理旨在克服可能导致不良混叠伪像的欠采样问题。有效的多帧SR的关键是精确的子像素帧间配准。当运动不遵循简单的整体平移模型并且可能包括局部运动时,这种准确的配准就具有挑战性。当相机使用焦平面分割(DoFP)传感器(如拜耳彩色滤光片阵列)时,SR处理会更加复杂。先前已经研究了这些SR挑战的各个方面。快速SR算法往往难以适应复杂的运动和DoFP传感器。此外,可以容忍这些复杂性的方法在本质上往往是迭代的,并且可能不适用于实时处理。在本文中,我们提出了在这些具有挑战性的成像条件下执行SR的新方法。我们将这种新方法称为内插帧融合(FIF)SR。 FIF SR方法将去马赛克,插值和还原步骤解耦以简化算法。首先将帧分别去马赛克并内插到所需的分辨率。接下来,FIF使用内插帧的新颖加权总和将它们融合为改进的分辨率估计。最后,应用恢复对模型化系统PSF进行反卷积。所提出的FIF方法比大多数迭代方法具有较低的计算复杂度,使其成为实时实现的候选者。我们提供了FIF SR方法的详细说明,并显示了在受限和复杂成像情况下使用合成和真实数据集的实验结果。实验包括带有仿射背景运动加局部运动的机载灰度图像和拜耳彩色阵列图像。

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