Automated Registration of Full Moon Remote Sensing Images Based on Triangulated Network Constraints

Huibin Ge, Yu Geng, Xiaojuan Ba, Yuxiang Wang, Jingguo Lv
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Abstract

Abstract. The registration of full-moon remote sensing images constitutes a pivotal stage in the fusion analysis of multiple lunar remote sensing datasets. Addressing prevailing issues in automatic registration, such as the broad width of full-moon data, significant internal distortion, and texture distortion in high-latitude regions, this paper proposes a method for automatic matching and correction based on triangulation constraints. The approach employs a matching strategy progressing from coarse to fine and from sparse to dense. It optimizes and combines multiple existing matching algorithms, enhances the extraction of initial network points, constructs irregular triangulation networks using these points, conducts dense matching with each triangulation network as a basic unit, and introduces a geometric correction method based on triangulation network + grid (TIN + GRID) for the registration of full-moon data. For the matching of full-moon remote sensing images in high-latitude regions, a novel approach involving memory projection forward transformation-matching-projection inverse transformation is adopted. Through registration experiments with full-moon image data and an analysis of registration accuracy at different latitudes, the average mean square error is found to be less than 2 pixels. These results signify the efficacy of the proposed method in effectively addressing the automatic registration challenges encountered in full-moon remote sensing images.
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基于三角网约束的满月遥感图像自动配准技术
摘要满月遥感图像的配准是多月球遥感数据集融合分析的关键阶段。针对目前自动配准中普遍存在的问题,如满月数据宽度大、内部失真严重、高纬度地区纹理失真等,本文提出了一种基于三角测量约束的自动匹配和校正方法。该方法采用了由粗到细、由稀到密的匹配策略。它优化组合了现有的多种匹配算法,强化了初始网络点的提取,利用这些点构建了不规则的三角网,以每个三角网为基本单元进行密集匹配,并引入了基于三角网+网格(TIN + GRID)的几何校正方法,用于满月数据的配准。针对高纬度地区的满月遥感图像匹配,采用了记忆投影正变换-匹配-投影反变换的新方法。通过对满月图像数据的配准实验和不同纬度配准精度的分析,发现平均均方误差小于 2 像素。这些结果表明,所提出的方法能有效解决满月遥感图像中遇到的自动配准难题。
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