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Study on Spot5 remote sensing imagery automatic registration methods based on texture feature points

机译:基于纹理特征点的Spot5遥感图像自动注册方法研究

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Due to the problem of lower-efficiency and subjective error generated by manual operation in the process of Spot5 remote sensing satellite imagery matching, a new efficient automatic registration scheme based on imagery characteristic points was proposed. Firstly, the preprocessed 1A level multispectral imagery and panchromatic imagery were registered coarsely based on affine transformation in this workflow using the ephemeris in metadata files. Secondly, the grid constrained feature points were extracted from the two images by improved Forstner operator, and tie-points pairs were obtained by a coarse-to-fine matching using Euclid distance and correlation. Finally, error pairs were eliminated by least median of squares (LSM). After getting enough control point pairs which were high-precision matched and distributed evenly, coarse-registered multispectral imagery was rectified in local small region based on Delaunay triangulation network. Experiments were performed on many volume images, and the results show that the root mean square errors (RMSE) of the check points are less than 0.5 pixels.
机译:由于低效率和在调查中Spot5过程遥感卫星图像匹配,基于图像特征点的新的有效的自动登记方案通过手动操作产生的主观错误的问题,提出了。首先,预处理1A级多光谱图像和全色图像是基于在使用中的星历元数据文件这个工作流程仿射变换粗略注册。其次,从两个图像通过提高操作者Forstner提取的网格约束特征点,并且通过使用一个欧几里德距离和相关性粗到细匹配获得领带点对。最后,误差对由平方至少位数(LSM)消除。得到其为高精度匹配和均匀地分布足够的控制点对后,粗注册多光谱图像中基于Delaunay三角网局部小区域被纠正。实验在许多体积图像执行,结果表明,该检查点的根均方误差(RMSE)小于0.5个像素。

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