基于仿射SIFT的视频稳像算法

Ming Fang, Haoyue Li, Shuzhe Si
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引用次数: 6

摘要

电子稳像技术是一种重要的视频增强技术,其目的是消除视频中令人讨厌的随机抖动。目前常用的EIS算法是对特征轨迹进行滤波,如卡尔曼滤波和中值滤波。然而,这些方法滤波后的轨迹与原始轨迹偏差较大,稳定后的图像往往丢失大量信息。本文采用仿射SIFT (ASIFT)特征匹配方法得到仿射矩阵的最佳估计,然后对原始路径进行高斯低通滤波,补偿光滑路径的运动,从而稳定抖动帧。与卡尔曼滤波相比,实验表明高斯滤波能更好地保留摄像机的主动运动,稳定了视频序列,丢失的像素信息较少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A video stabilization algorithm based on affine SIFT
Electronic image stabilization (EIS) is an important video enhancement technology which aims at removing annoying random jitter from videos. At present, the commonly EIS algorithm is to filter the feature trajectory, such as Kalman filter and Median filter. However, the filtered trajectories of these methods are greatly deviated from the original trajectory, and the images often lose large information after being stabilized. This paper uses affine SIFT (ASIFT) feature matching method to get the best estimating the affine matrix, then Gaussian low-pass filtering of the original path can compensate for the motion of the smoothed path, then the jitter frame is stabilized. Compared with Kalman filter, the experiments show that Gaussian filter better retains the camera active motion, stabilized video sequences lost less pixel information.
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