Very High Accuracy Velocity Estimation using Orientation Tensors Parametric Motion and Simultaneous Segmentation of the Motion Field

Gunnar Farnebäck
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引用次数: 140

Abstract

In a previous paper, the author presented a new velocity estimation algorithm, using orientation tensors and parametric motion models to provide both fast and accurate results. One of the tradeoffs between accuracy and speed was that no attempts were made to obtain regions of coherent motion when estimating the parametric models. In this paper we show how this can be improved by doing a simultaneous segmentation of the motion field. The resulting algorithm is slower than the previous one, but more accurate. This is shown by evaluation on the well-known Yosemite sequence, where already the previous algorithm showed an accuracy which was substantially better than for earlier published methods. This result has now been improved further.
基于方向张量、参数运动和运动场同步分割的高精度速度估计
在之前的一篇文章中,作者提出了一种新的速度估计算法,该算法使用方向张量和参数运动模型来提供快速准确的结果。在精度和速度之间的权衡之一是,在估计参数模型时,没有尝试获得相干运动区域。在本文中,我们展示了如何通过对运动场进行同步分割来改进这一点。所得到的算法比之前的算法慢,但更准确。这可以通过对著名的优胜美地序列的评估来证明,之前的算法已经显示出比之前发表的方法更好的准确性。这个结果现在得到了进一步的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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