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基于局部SIFT特征点的双阈值配准算法
引用本文:邓朝省,陈莹.基于局部SIFT特征点的双阈值配准算法[J].计算机工程与应用,2014,50(2):189-193.
作者姓名:邓朝省  陈莹
作者单位:江南大学 物联网工程学院,江苏 无锡 214000
基金项目:国家自然科学基金(No.61104213);江苏省自然科学基金(No.BK2011146).
摘    要:针对SIFT匹配算法和SIFT与RANSAC结合的匹配算法都存在不同程度误匹配的问题,提出一种基于局部SIFT特征点的双阈值匹配算法。设计变步长迭代准则获取SIFT双阈值,其中大阈值匹配获得一组稀疏的精确匹配,小阈值匹配获得一组可能存在误匹配的密集匹配。以精确匹配建立目标的形变约束模型,以此为基础从密集匹配中删除误匹配。通过这些正确的匹配点估计两幅图像之间的变换矩阵。为了降低算法所需时间,提高效率,通过分析图像的纹理变化,采用提取其变化最为剧烈的区域来代表整幅图像进行匹配运算。实验结果表明,该算法在图像存在平移、旋转等仿射变化情况下具有配准精度高,稳定和快速等特点。

关 键 词:尺度不变特征变换(SIFT)特征点匹配  图像配准  欧氏距离  双阈值  

Double threshold matching algorithm based on local SIFT feature points
DENG Chaosheng,CHEN Ying.Double threshold matching algorithm based on local SIFT feature points[J].Computer Engineering and Applications,2014,50(2):189-193.
Authors:DENG Chaosheng  CHEN Ying
Affiliation:School of IoT Engineering, Jiangnan University, Wuxi, Jiangsu 214000, China
Abstract:Since the SIFT matching algorithm and the SIFT combined with the RANSAC matching algorithm both exist the mismatching problem in varies degree, a double threshold matching algorithm based on local SIFT feature points is proposed. This paper designs the iteration criteria of the variable step size to obtain the double threshold of the SIFT, where the large threshold matching obtains a set of sparse precision matching, and the small threshold matching obtains a set of intensive matching in which mismatching may exists. Then the deformation constraint model is established based on the precise matching, which is the basis of removing the mismatching from the intensive matching. The transformation matrix is estimated by these correct matching points between the two images. To reduce the required time and increase efficiency of the algorithm, the most sharply changing region is extracted by analysing the changes of the image texture, which represents the whole image to do the matching operation. The experimental results indicate that the proposed matching algorithm has advantages of high accuracy, stability and rapidity in the situation that the affine changes of translation, rota- tion etc exist in the images.
Keywords:Scale Invariant Feature Transform (SIFT) feature point matching  image registration  Euclidean distance  double threshold
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