大位移光流

T. Brox, C. Bregler, Jitendra Malik
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引用次数: 336

摘要

目前的文献提供了两种方法来建立具有运动物体的图像之间的点对应关系。一方面,有能量最小化方法可以产生非常精确、密集的流场,但当位移太大时就失败了。另一方面,存在允许大位移的描述符匹配,但对应非常稀疏,精度有限,并且由于缺少规则约束,存在许多异常值。本文提出了一种结合两种匹配策略优点的方法。为两个图像建立了区域层次结构。在这些区域上的描述符匹配提供了一组稀疏的对应假设。这些都集成到变分方法中,并指导局部优化到大位移解决方案。变分优化在假设中进行选择,并利用几何约束和所有可用的图像信息提供密集和亚像素级的精确估计。
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Large displacement optical flow
The literature currently provides two ways to establish point correspondences between images with moving objects. On one side, there are energy minimization methods that yield very accurate, dense flow fields, but fail as displacements get too large. On the other side, there is descriptor matching that allows for large displacements, but correspondences are very sparse, have limited accuracy, and due to missing regularity constraints there are many outliers. In this paper we propose a method that can combine the advantages of both matching strategies. A region hierarchy is established for both images. Descriptor matching on these regions provides a sparse set of hypotheses for correspondences. These are integrated into a variational approach and guide the local optimization to large displacement solutions. The variational optimization selects among the hypotheses and provides dense and subpixel accurate estimates, making use of geometric constraints and all available image information.
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