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应用Hessian-Affine的遥感图像配准实验
引用本文:姚国标,邓喀中,白力改,杜全叶,杨化超.应用Hessian-Affine的遥感图像配准实验[J].测绘科学,2013,38(3):154-156.
作者姓名:姚国标  邓喀中  白力改  杜全叶  杨化超
作者单位:1. 中国矿业大学江苏省资源环境信息工程重点实验室/国土环境与灾害监测国家测绘局重点实验室,江苏徐州221116;中国测绘科学研究院,北京100830
2. 中国矿业大学江苏省资源环境信息工程重点实验室/国土环境与灾害监测国家测绘局重点实验室,江苏徐州,221116
3. 北华航天工业学院建筑工程系,河北廊坊,065000
4. 中国测绘科学研究院,北京,100830
基金项目:国家自然科学基金,中国测绘科学研究院基本科研业务费项目,青年科学基金项目
摘    要:针对存在云雾遮挡、仿射变形的遥感影像,本文提出应用Hessian-Affine与最大信息熵,检测并筛选仿射不变特征,同时选刺同名点估计初始变换参数,对每一个待匹配点预测出一定圆域约束内的对应匹配点集,利用NCC相关系数迭代确定圆域内真同名点,得到初始匹配点集,然后利用均方根误差(RMSE)迭代剔除误匹配,直至完成最佳仿射变换参数估计。结果表明:该算法对发生仿射畸变、气候复杂区域的影像配准表现出较好稳健性和定位精度。

关 键 词:信息熵  圆域约束  仿射变换  图像配准

Remote sensing image registration based on Hessian-Affine
YAO Guo-biao,DENG Ka-zhong,BAI Li-gai,DU Quan-ye,YANG Hua-chao.Remote sensing image registration based on Hessian-Affine[J].Science of Surveying and Mapping,2013,38(3):154-156.
Authors:YAO Guo-biao  DENG Ka-zhong  BAI Li-gai  DU Quan-ye  YANG Hua-chao
Institution:①(①China University of Mining and Technology,Jiangsu Key Laboratory of Resources and Environmental Information Engineering / Key Laboratory for Land Environment and Disaster Monitoring of SBSM,Jiangsu Xuzhou 221116,China;②Department of Architectural Engineering,North China Institute of Aerospace Engineering,Hebei Langfang 065000,China;③China Academy of Surveying and Mapping,Beijing 100830,China)
Abstract:Registration of multi-source remote-sensing images is a tough problem in both image processing and computer vision,as it must deal with the block of clouds,affine transformation,etc.Accordingly,high-quality invariant registration primitive based on Hessian-Affine was put forward in this paper.The method could detect invariant features based on Hessian-Affine and filter invariant features based on information content of maximum.Simultaneously primary transformation parameters were estimated according to the tie points which were detected by handwork.The corresponding points within circular region restriction were predicted for every matching point,and true matching point was determined by relevant coefficient iteration,so the initial set of matching points would be obtained.Then the root mean square error(RMSE) iteration was utilized to delete mismatching.Furthermore,affine transformation parameters were calculated in this process.Eventually,image registration was achieved smoothly.Experiment results confirmed that the proposed algorithm has the robustness and good accuracy of registration for the images of affine deformation and poor weather conditions.
Keywords:information entropy  circular region restriction  affine transform  image registration
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