航天器导航地形建模中的鲁棒视差估计

G. Paar, W. Pölzleitner
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引用次数: 42

摘要

行星际任务的轨道、下降和着陆阶段的导航和成像需要能够利用遥感工具得出行星体高程图的方法。作者提出立体视觉技术来完成这项任务。介绍了地形自动建模的关键步骤——对应匹配算法。它使用众所周知的基于金字塔的数据结构,但在直接应用统计模式识别方法方面是新颖的。特征向量用于对应匹配,特征选择技术用于寻找最优特征。这些特征包括灰度统计(平均方差)以及更复杂的特征,如局部频率边缘梯度,或者作为扩展,Moravec-, Gabor-或fourier -特征。通过对火星表面的模拟,验证了该算法在行星际任务遥感场景中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust disparity estimation in terrain modeling for spacecraft navigation
Navigation and imagery in the orbit, descent, and landing phases during an interplanetary mission require methods that are able to derive the elevation map of a planetary body using remote sensing tools. The authors propose stereovision techniques for this task. An algorithm for correspondence matching, which is one of the crucial steps in automatic terrain modeling, is introduced. It uses well known pyramid-based data structures, but is novel in its direct application of methods from statistical pattern recognition. Feature vectors for correspondence matching and feature selection techniques are used to find optimal features. These include grey-level statistics (mean variance) as well as more sophisticated features derived from operators like local frequency edge gradient or, as an extension, Moravec-, Gabor- or Fourier-features. The applicability of the algorithm in the remote sensing scenario of interplanetary missions is verified using a mockup simulation of the Martian surface.<>
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