Abstract

Under fixed imaging conditions, the landmark selection method based feature traversal analysis has high computational complexity. The hierarchical statistical significance detection method uses global statistical information for feature analysis to overcome the computational complexity problem caused by feature traversal analysis. The frequency domain de-correlation method can remove repeat mode in the image by adaptive Gaussian filtering on the amplitude-frequency characteristics. In this paper, combined the hierarchical statistical saliency detection method with the frequency domain de-correlation method, a fast landmark selection algorithm based on saliency analysis is proposed. Based on the proposed algorithm, the automatic landmark selection architecture for terrain matching navigation was constructed. The selection of landmark points was carried out in the Qin-ling Mountains and the Guangdong and Guangxi hills. The results show that compared with the feature or pixel-based landmark selection method, the landmark selection efficiency of the proposed method is improved by 2 to 3 orders of magnitude. The correct matching rate of candidate landmarks selected in the Qinling Mountains and the Guangdong and Guangxi hills are 73.9% and 88.3% respectively.

Highlights

  • 本文对比了其他 2 种地标点的选择方法:第一 种通过遍历匹配的方法,对地形区域中的所有子区 域进行匹配验证,选择出在各种噪声情形下匹配性 能好的子区域作为地标点,该方法的实质就是将所 有地形子区域进行实验验证;第二种通过遍历分析 所有地形子区域的地形统计特性,并采用判定方法 选出候选地标点,随后通过实验验证确定出最终地 标点。 其中地形统计特征采用了文献[7] 中的地形 标准差 σ、地形坡度均值 ES、地形坡度标准差 σS。 设(M,M) 为实时图的尺寸, (N,N) 为地标点的尺 寸。 在仿真验证部分的匹配算法采用 NCC,该方法 复杂度为 O(M2logM)。 采用 3 种适配性分析及地标 点选取方法的复杂度分析如表 4 所示。

  • 航空学报, 2017, 38(10) : 321101 WANG Huaxia, CHENG Yongmei, LIU Nan. A Robust Scene Matching Method for Mountainous Regions with Illumination Vari⁃ ation[ J]

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Summary

Introduction

设 D(x,y) 为二维 DEM 栅格数据,设定 θi 为 D 在高程值域范围[min(D),max(D)] 内的等间隔划 结构。 利用 AS 与原有相位谱 P,进行傅里叶反变换, 得到显著图 S SN 中显著性目标的尺度与(9) 式中高斯滤波 函数 g 的尺度因子 σ 相关。 当 σ 较小时,在幅度谱

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