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基于改进SIFT算法的多源遥感影像特征匹配

Multi-source Remote Sensing Images Feature Matching Based on Improved SIFT

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【作者】 李瑞霖

【Author】 LI Ruilin;School of Geographic Spatial Information,Information Engineering University;

【机构】 信息工程大学地理空间信息学院

【摘要】 影像匹配是影像处理及应用的基础。异源遥感影像在灰度信息、比例尺及旋转角度方面都存在较大差异,采用传统的匹配算法难以对其进行匹配。SIFT算法在影像匹配方面有着广泛的应用,本文以传统SIFT算法为基础,对其结构和度量方面做出了改进,即将SIFT算子由局部向全局结构化转变,且用准欧氏距离代替欧氏距离作为相似性判定测度,从而实现了异源影像的高精度配准。以天绘一号及高分二号卫星影像进行实验,结果表明,改进后的SIFT算法在稳定性、可靠性及精度方面都有较大的提升,且能较好地匹配不同分辨率及光照变化下的异源遥感影像。

【Abstract】 Image matching is the basis of image processing and application. Because of significant differences in the gray information,scale and rotation of multi-source remote sensing images,it is difficult to match them with traditional algorithms. The algorithm of SIFT is widely used in image matching. Based on SIFT,improvements have been made in its structure and measurement in this paper.The structure of SIFT is transformed from local to global and Euclidean distance is utilized to replace Euclidean distance as the similarity measure. In this way,high precision of matching multi-source remote sensing images could be realized. Experiments were conducted on the Mapping Satellite-1 and Gaofen Satellite-2 images. The results show that the improved SIFT algorithm has a great improvement in stability,reliability and precision and could match multi-source remote sensing images with various resolutions and illumination.

【关键词】 影像匹配SIFT算法全局结构化
【Key words】 image matchingSIFT algorithmglobal structure
【基金】 国家自然科学基金项目资助(40401534)资助
  • 【文献出处】 测绘与空间地理信息 ,Geomatics & Spatial Information Technology , 编辑部邮箱 ,2019年08期
  • 【分类号】TP751
  • 【被引频次】11
  • 【下载频次】361
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