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Motion estimation method for blurred videos and application of deblurring with spatially varying blur kernels

机译:模糊视频运动估计方法及空间变化模糊核去模糊的应用

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Optical flow methods, such as Lucas-Kanade and Horn-Schunck algorithms, are popular in motion estimation. However, they fall short on accuracy when they are applied to blurred videos. Some people utilize hybrid camera system to get a low resolution image to suppress the blurring effect so that more accurate optical flow for blurred high resolution image can be further derived, though in most of the practical environments it may not be feasible to deploy hybrid camera systems from cost perspective. In this paper, we propose a novel approach to estimate motion from a blurred video without the use of hybrid camera system, and to reduce motion blur by calculating its spatially varying blur kernels. Essentially, we first separate moving objects into small regions and use the corners of their boundaries as feature points, and then apply Hierarchical Block Matching Algorithm (HBMA) to track them between frames. Motions of non-corner pixels can therefore be estimated by interpolating the motion of these corner points, which further support the calculation of the spatially varying blur kernels for deblurring purpose. Experimental results demonstrate the effectiveness of proposed method.
机译:诸如Lucas-Kanade和Horn-Schunck算法之类的光流方法在运动估计中很流行。但是,将它们应用于模糊视频时,它们的准确性不足。某些人利用混合摄像机系统获取低分辨率图像以抑制模糊效果,因此可以进一步得出模糊的高分辨率图像的更精确的光流,尽管在大多数实际环境中部署混合摄像机系统可能不可行从成本的角度来看。在本文中,我们提出了一种新颖的方法,可以在不使用混合摄像头系统的情况下从模糊视频估计运动,并通过计算其空间变化的模糊内核来减少运动模糊。从本质上讲,我们首先将移动对象分成较小的区域,并使用其边界的角作为特征点,然后应用层次块匹配算法(HBMA)在帧之间跟踪它们。因此,可以通过对这些角点的运动进行插值来估计非角像素的运动,这进一步支持了为去模糊目的而计算空间变化的模糊核。实验结果证明了该方法的有效性。

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