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A Variational Framework for Simultaneous Motion Estimation and Restoration of Motion-Blurred Video

机译:运动模糊视频同时运动估计和恢复的变分框架

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The problem of motion estimation and restoration of objects in a blurred video sequence is addressed in this paper. Fast movement of the objects, together with the aperture time of the camera, result in a motion-blurred image. The direct velocity estimation from this blurred video is inaccurate. On the other hand, an accurate estimation of the velocity of the moving objects is critical for restoration of motion-blurred video. Therefore, restoration needs accurate motion estimation and vice versa, and a joint process is called for. To address this problem we derive a novel model of the blurring process and propose a Mumford-Shah type of variational framework, acting on consecutive frames, for joint object deblurring and velocity estimation. The proposed procedure distinguishes between the moving object and the background and is accurate also close to the boundary of the moving object. Experimental results both on simulated and real data show the importance of this joint estimation and its superior performance when compared to the independent estimation of motion and restoration.
机译:本文解决了模糊视频序列中对象的运动估计和恢复问题。物体与相机的光圈时间一起快速移动,导致运动模糊图像。该模糊视频的直接速度估计是不准确的。另一方面,准确地估计移动物体的速度对于恢复运动模糊的视频至关重要。因此,恢复需要准确的运动估计,反之亦然,并调用联合过程。为了解决这个问题,我们推导了模糊过程的新型模型,并提出了一种用于联合对象去纹脉冲和速度估计的连续帧的Mumford-Shah类型的变形框架。所提出的程序区分移动物体和背景之间,并且准确也靠近移动物体的边界。模拟和实际数据的实验结果表明,与运动和恢复的独立估算相比,这种联合估计的重要性及其卓越的性能。

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