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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Reliable image matching via photometric and geometric constraints structured by Delaunay triangulation
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Reliable image matching via photometric and geometric constraints structured by Delaunay triangulation

机译:通过Delaunay三角剖分构造的光度和几何约束条件进行可靠的图像匹配

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Image matching is a basic task in the field of photogrammetry and remote sensing. By using the advantages of the Delaunay triangulation, this paper proposes a novel image matching method. First, neighboring structures of randomly distributed feature points are formed with the assistance of the Delaunay triangulation and its corresponding graph, and the image planes are simultaneously divided into patches of near-regular triangles. Second, two constraints, a photometric constraint and a geometric constraint, are implemented based on the constructed neighboring structures, which incorporate the hierarchical elimination and left-right checking strategies to deliver the influences of outliers on the decision of inliers and ensure the high precision of the final matches. The former utilizes a line descriptor as a second-order photometric constraint, and the latter adopts the spatial angular order (SAO) to achieve a geometric constraint for the calculation of dissimilarity scores between correspondences. In addition, with the constraints between triangles of the refined Delaunay triangulation and its corresponding graph, a match expansion is designed to exploit as many inliers as possible. Finally, a reliable image matching algorithm is proposed by sequentially executing the three constraints for outlier elimination and match expansion. Under comprehensive analysis and comparison with five state-of-the-art algorithms, the performance of the proposed method is verified by using both rigid and non-rigid datasets. The experimental results demonstrate that the Delaunay triangulation is sufficient to construct neighboring structures for the implementation of local photometric and geometric constraints, and the proposed method can achieve good performance in terms of the precision, recall and number of inliers, and provide reliable matches for stereo image pairs with both rigid and non-rigid transformations.
机译:图像匹配是摄影测量和遥感领域的基本任务。利用Delaunay三角剖分的优势,提出了一种新颖的图像匹配方法。首先,借助Delaunay三角剖分及其相应的图形形成随机分布特征点的相邻结构,并将图像平面同时划分为近似正三角形的块。其次,在构造的相邻结构的基础上实现了两个约束,即光度约束和几何约束,它们结合了层次消除和左右检查策略,以传递离群值对离群值决策的影响,并确保离群值的高精度。决赛。前者利用线描述符作为二阶光度约束,后者采用空间角阶(SAO)来实现几何约束,以计算对应关系之间的相异度得分。此外,借助精化的Delaunay三角剖分的三角形及其对应图形之间的约束,设计了一个匹配扩展来利用尽可能多的内点。最后,通过顺序执行三个约束来提出一种可靠的图像匹配算法,以消除异常值和扩大匹配范围。通过对五种最新算法的综合分析和比较,通过使用刚性和非刚性数据集验证了该方法的性能。实验结果表明,Delaunay三角剖分法足以构造相邻结构以实现局部光度和几何约束,并且该方法在精度,召回率和内部像素数量方面均能取得良好的性能,并为立体图像提供可靠的匹配具有刚性和非刚性变换的图像对。

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