快速鲁棒图像特征匹配算法改进与优化

Peiyu Chen, Y. Li, Guanghong Gong
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引用次数: 1

摘要

本文根据每种算法的特点定量分析了不同类型的图像变化,并针对不同类型的图像提出了不同的优化算法。首先,选取了四种经典匹配算法,并对其尺度、光度和旋转鲁棒性进行了比较。为了解决单一算法鲁棒性的局限性,提出了三种改进算法。在SURF和ORB算法结合的基础上,通过一个或多个特征点筛选,提高了算法的精度。其次,利用同时存在多种变化类型的图像对改进算法进行测试。结果表明,改进算法具有较强的鲁棒性,能有效提高图像匹配精度。最后,仿真结果表明,根据图像的特征选择最优算法可以最大限度地发挥不同算法的优势,满足匹配点的数量和匹配精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Robust Image Feature Matching Algorithm Improvement and Optimization
This paper quantitatively analyzes different types of image changes according to the characteristics of each algorithm, and put forward different optimal algorithms for different types of pictures. Firstly, four classical matching algorithms are selected and compared for scale, photometric and rotational robustness. In order to solve the limitation of the robustness of single algorithm, three improved algorithms are proposed. Based on the combination of SURF and ORB algorithms and one or more feature point screening, the improved algorithm is used to improve accuracy. Secondly, the improved algorithm is tested by using images with multiple types of changes at the same time. It is concluded that the improved algorithm has strong robustness and can effectively improve image matching accuracy. Finally, the simulation result shows that the selection of the optimal algorithm according to the features of the picture maximizes the advantages of different algorithms to meet the quantity of matching points and the matching accuracy.
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