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Video Superresolution Reconstruction Using Iterative Back Projection with Critical-Point Filters Based Image Matching

机译:基于临界点滤波器的迭代反投影与图像匹配的视频超分辨率重建

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To improve the spatial resolution of reconstructed images/videos, this paper proposes a Superresolution (SR) reconstruction algorithm based on iterative back projection. In the proposed algorithm, image matching using critical-point filters (CPF) is employed to improve the accuracy of image registration. First, a sliding window is used to segment the video sequence. CPF based image matching is then performed between frames in the window to obtain pixel-level motion fields. Finally, high-resolution (HR) frames are reconstructed based on the motion fields using iterative back projection (IBP) algorithm. The CPF based registration algorithm can adapt to various types of motions in real video scenes. Experimental results demonstrate that, compared to optical flow based image matching with IBP algorithm, subjective quality improvement and an average PSNR score of 0.53 dB improvement are obtained by the proposed algorithm, when applied to video sequence.
机译:为了提高重构图像/视频的空间分辨率,提出了一种基于迭代反投影的超分辨率(SR)重构算法。在提出的算法中,使用临界点滤波器(CPF)进行图像匹配可提高图像配准的准确性。首先,使用滑动窗口分割视频序列。然后,在窗口的帧之间执行基于CPF的图像匹配,以获得像素级运动场。最后,使用迭代反向投影(IBP)算法基于运动场重建高分辨率(HR)帧。基于CPF的配准算法可以适应真实视频场景中的各种类型的运动。实验结果表明,与基于IBP算法的基于光流的图像匹配相比,该算法应用于视频序列时,主观质量提高,平均PSNR得分提高0.53 dB。

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