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Local homography estimation using keypoint descriptors

机译:使用关键点描述符的局部单应性估计

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This paper presents a new learning-based approach to estimate local homography of a given 3D object and shows that it ismore accurate than specific affine region detection methods. Unlike the previous works that attempt this by adapting iterative algorithms, our method introduces a direct estimation. It performs in three step. First, a training set of features captures geometry and appearance information about keypoints taken from multiple views of the object. Then incoming keypoints are matched against the database in order to retrieve a cluster of features representing their identity. Finally the retrieved clusters are used to estimate the local pose of the patches.
机译:本文提出了一种基于学习的新方法来估计给定3D对象的局部单应性,并表明它比特定的仿射区域检测方法更准确。与以前的尝试通过调整迭代算法进行尝试的工作不同,我们的方法引入了直接估计。它分三步执行。首先,一组训练的特征捕获有关从对象的多个视图获取的关键点的几何形状和外观信息。然后,将传入的关键点与数据库进行匹配,以检索代表其身份的一组特征。最后,所检索的聚类用于估计斑块的局部姿态。

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