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Research on Cross-Correlative Blur Length Estimation Algorithm in Motion Blur Image

机译:运动模糊图像中互相关模糊长度估计算法的研究

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This paper proposes a motion blur length estimation method that is applied to motion blur image restoration. This method applies a cross-correlation algorithm to multi-frame motion-degraded images. In order to find the motion blur parameters, the Radon transform method is used to estimate the motion blur angle. We extract the gray value of pixels around the blur center, calculate the correlation for obtaining motion blur length, and use the Lucy-Richardson iterative algorithm to restore the degraded image. Experiment results show that this method can accurately estimate blur parameters, reduce noise, and obtain better restoration results. The method achieves good results on artificially blurred images and natural images (by the camera shake). The advantage of our algorithm that uses the Lucy-Richardson restoration algorithm compared with the Wiener filtering algorithm is made obvious with less computation time and better restored effects.
机译:提出了一种运动模糊长度估计方法,该方法应用于运动模糊图像的复原中。该方法将互相关算法应用于多帧运动退化图像。为了找到运动模糊参数,使用Radon变换方法来估计运动模糊角度。我们提取模糊中心周围像素的灰度值,计算相关性以获得运动模糊长度,然后使用Lucy-Richardson迭代算法还原退化的图像。实验结果表明,该方法可以准确估计模糊参数,减少噪声,获得更好的恢复效果。该方法在人工模糊的图像和自然图像上(通过相机抖动)均取得了良好的效果。与使用Wiener滤波算法相比,使用Lucy-Richardson恢复算法的算法的优势显而易见,其计算时间更少,恢复效果更好。

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