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Singular value decomposition based image matching

机译:基于奇异值分解的图像匹配

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摘要

This paper presents a simple and effective method for matching two uncalibrated images. Corner points are firstly extracted as interest points in the two images. Each interest point is assigned one dominant orientation. The initial set of point matches is then obtained by singular value decomposition of a correspondence strength matrix. A new expression of this matrix is introduced to handle more complicated imaging conditions. Each element of this matrix is the similarity measure between two interest points. The new similarity measure is invariant to image rotation by taking into account the dominant orientation of the two interest points. The epipolar geometry constraint is finally imposed to reject the false matches. Experimental results on real images show this approach to be effective for general image matching.
机译:本文提出了一种简单有效的方法来匹配两个未校准的图像。首先在两个图像中提取角点作为兴趣点。每个兴趣点都分配有一个主导方向。然后通过对应强度矩阵的奇异值分解获得初始的点匹配集。引入了该矩阵的新表达式来处理更复杂的成像条件。该矩阵的每个元素都是两个兴趣点之间的相似性度量。通过考虑两个兴趣点的主导方向,新的相似性度量不变于图像旋转。最终施加对极几何约束以拒绝错误匹配。在真实图像上的实验结果表明,这种方法对于一般的图像匹配是有效的。

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