首页> 外文会议>Asian Conference on Computer Vision(ACCV 2007) pt.2; 20071118-22; Tokyo(JP) >Simultaneous Plane Extraction and 2D Homography Estimation Using Local Feature Transformations
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Simultaneous Plane Extraction and 2D Homography Estimation Using Local Feature Transformations

机译:使用局部特征变换的同时平面提取和2D同形估计

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In this paper, we use local feature transformations estimated in the matching process as initial seeds for 2D homography estimation. The number of testing hypotheses is equal to the number of matches, naturally enabling a full search over the hypothesis space. Using this property, we develop an iterative algorithm that clusters the matches under the common 2D homography into one group, I.e., features on a common plane. Our clustering algorithm is less affected by the proportion of inliers and as few as two features on the common plane can be clustered together; thus, the algorithm robustly detects multiple dominant scene planes. The knowledge of the dominant planes is used for robust fundamental matrix computation in the presence of quasi-degenerate data.
机译:在本文中,我们将在匹配过程中估计的局部特征变换用作二维单应性估计的初始种子。测试假设的数量等于匹配的数量,自然可以对假设空间进行全面搜索。利用此属性,我们开发了一种迭代算法,该算法将常见2D单应性下的匹配项聚为一组,即位于同一平面上的特征。我们的聚类算法受内部比例的影响较小,并且在公共平面上只有两个特征可以聚在一起。因此,该算法可鲁棒地检测多个主导场景平面。在存在准简并数据的情况下,将优势平面的知识用于鲁棒的基本矩阵计算。

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