Title :
A Robust Delaunay Triangulation Matching for Multispectral/Multidate Remote Sensing Image Registration
Author :
Ming Zhao ; Bowen An ; Yongpeng Wu ; Boyang Chen ; Shengli Sun
Author_Institution :
Dept. of Logistics Eng., Shanghai Maritime Univ., Shanghai, China
Abstract :
A novel dual-graph-based matching method is proposed in this letter particularly for the multispectral/multidate images with low overlapping areas, similar patterns, or large transformations. First, scale invariant feature transform based matching is improved by normalizing gradient orientations and maximizing the scale ratio similarity of all corresponding points. Next, Delaunay graphs are generated for outlier removal, and the candidate outliers are selected by comparing the distinction of Delaunay graph structures. In order to bring back the inliers removed in Delaunay triangulation matching iterations and to exclude the remaining outliers, the recovery strategy equipped with the dual graph of Delaunay is explored. Inliers located in the corresponding Voronoi cells are recovered to the residual sets. The experimental results demonstrate the accuracy and robustness of the proposed algorithm for various representative remote sensing images.
Keywords :
computational geometry; geophysical image processing; gradient methods; graph theory; image matching; image registration; mesh generation; remote sensing; wavelet transforms; Delaunay graph structure; Delaunay triangulation matching; Voronoi cells; candidate outlier; dual graph-based matching method; gradient orientation normalization; iteration method; multidate remote sensing image registration; multispectral remote sensing image registration; outlier removal; recovery strategy; scale invariant feature transform based matching; scale ratio similarity maximization; Image registration; Magnetic resonance; Pattern matching; Remote sensing; Robustness; Satellites; Delaunay triangulation (DT); graph matching; image registration; multispectral/multidate images;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2014.2359518