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Multiscale MSE-Minimizing Filters for Gradient-based Motion Estimation

机译:MultiScale MSE最小化基于梯度的运动估计的过滤器

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Gradient-based algorithm play a vital role in motion estimation. In this paper, a motion estimation algorithm based on gradient methods for low signal-to-noise (SNR) scenarios was presented by using statistical performance of the estimator. The cost function model of mean square error (MSE) was developed based on Cramer-Rao low bound, which the noises were taken into account. The motion estimation MSE was minimized to find the gradient optimal filters. In combination with multiscale pyramid approach, the estimator accuracy of such an algorithm is further improved. Compared to other methods, the estimator performance is performed better for low SNR situations using this optimal filters technique. Experimental simulations show that the estimator bias is less than 0.01 pixels for large motion estimation of low SNR scenarios.
机译:基于梯度的算法在运动估计中起着重要作用。本文通过使用估计器的统计性能,给出了一种基于梯度方法的运动估计算法,介绍了低信噪比(SNR)场景。基于Cramer-Rao低界开发了平均方误差(MSE)的成本函数模型,噪音被考虑在内。运动估计MSE被最小化以找到梯度最佳滤波器。结合多尺度金字塔方法,这种算法的估计准确度进一步提高。与其他方法相比,使用这种最佳过滤器技术更好地执行估计器性能。实验模拟表明,对于低SNR场景的大型运动估计,估计器偏置小于0.01像素。

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