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Video stabilization based on adaptive local subspace of feature point classification

机译:基于自适应局部子空间的视频稳定分类

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Video stabilization removes jitters from shaking videos, which enhances videos quality to achieve stable and comfortable ones. In this paper, we propose a novel method for video stabilization. First, we classify feature points into inliers and outliers based on the global motion estimation to exclude the feature points on moving objects to stabilize camera movements without the interference of outliers. Second, we assemble the trajectory matrix with inlier trajectories across adaptive frames to guarantee sufficient complete trajectories for factorization. Then every frame is smoothed in separate local subspace. This model is more flexible than a global subspace. In addition, to make the inter-frame transition consistent, we exploit homography consistency to alleviate the abrupt transition of inter-frame segments. Experiments demonstrate that our results are comparable with the state-of-the-art methods.
机译:视频稳定消除了摇动视频的傻瓜,这提高了视频质量,实现了稳定舒适的视频。在本文中,我们提出了一种用于视频稳定的新方法。首先,我们将特征点分类为基于全局运动估计的inliers和异常值,以排除移动对象上的特征点,以稳定相机移动而不会干扰异常值的干扰。其次,我们组装轨迹矩阵,具有跨自适应帧的inlier轨迹,以保证足够的完整轨迹进行分解。然后在单独的本地子空间中平滑每个帧。该模型比全局子空间更灵活。此外,为了使帧间转换一致,我们利用了相同的一致性来缓解帧间段的突然转换。实验表明,我们的结果与最先进的方法相当。

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