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一种改进的基于SIFT特征的快速匹配算法 被引量:2

Improved Fast Matching Algorithm Based on SIFT Features
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摘要 对SIFT特征匹配算法进行改进,采用D2OG金字塔的过零点检测代替DOG金字塔的局部极值点检测,建立DOG金字塔后,利用DOG金字塔相邻层相减得到D2OG金字塔并在其上进行过零点检测;采用改进RANSAC算法二次消除错配,匹配点对经过RANSAC算法筛选后,再次利用RANSAC算法对匹配点对做进一步筛选。实验表明,改进的SIFT特征匹配算法在保证了较高精度的同时提高了算法的速度,能适应于实时性要求较高的领域。 The SIFF feature matching algorithm is improved. The improved algorithm builds a D^2OG pyramid and extreme detection in the DOG pyramid is replaced by zero crossing detection in the D^2OG pyramid. After the establishment of DOG pyramid,the D^2OG pyramid is got by the subtraction of the DOG pyramid adjacent layers and in which extremes are detected. The algorithm uses improve RANSAC twice to eliminate mismatch. The matching double points utilizes the RANSAC algorithm which has been used once for further screening. The experiment shows that the improved SIFT feature matching algorithm ensures high precision and improves the speed of the algorithm at the same time. It can adapt to the fields of higher real-time request.
机构地区 河北工业大学
出处 《电视技术》 北大核心 2013年第15期25-29,32,共6页 Video Engineering
基金 河北省教育厅高等学校科学技术研究指导项目(Z2010232)
关键词 图像匹配 尺度不变特征变换 高斯二阶差分 随机抽样一致 image matching SIFT D^2OG RANSAC
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