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A New Global Motion Estimation Algorithm

机译:一种新的全局运动估计算法

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GME (Global Motion Estimation) is an important tool widely used in computer vision, video processing, and other fields. In this paper, we propose an efficient, robust, and fast method for the estimation of global motion from compressed image sequences. With regard to global motion models, we adopt six-parameter affine model because of its reasonable tradeoff between complexity and accuracy. In order to improve accuracy and computational efficiency of global motion estimation, we present a new algorithm for segmentation between background and foreground. Then, motion vectors samples associated with background macroblocks are selected to estimate motion model parameters. Lastly, according to the statistics of estimated error, some sample pairs may be rejected as outliers to compensate further for the fact that some of the samples obtained from the P-frame motion vectors are highly erroneous and the parameters may be refined by estimating from the remaining data. The extensive experiments show that the proposed method is efficient and robust in terms of both computational complexity and accuracy.
机译:GME(全球运动估计)是计算机视觉,视频处理和其他领域广泛应用的重要工具。在本文中,我们提出了一种从压缩图像序列估计全局运动的有效,鲁棒和快速的方法。关于全球运动模型,我们采用六参数仿射模型,因为复杂性和准确性之间合理的权衡。为了提高全球运动估计的准确性和计算效率,我们提出了一种新的背景和前景分割算法。然后,选择与背景宏块相关联的示例以估计运动模型参数。最后,根据估计误差的统计数据,可以拒绝一些样本对作为异常值以进一步补偿,因为从P帧运动矢量获得的一些样本是高度错误的,并且可以通过估计来改进参数剩余数据。广泛的实验表明,在计算复杂性和准确性方面,该方法是高效且稳健的。

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