评估基于学习的绑定点匹配,用于轨道外卫星立体图像的几何处理

Shuang Song, Luca Morelli, Xinyi Wu, Rongjun Qin, H. Albanwan, F. Remondino
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摘要

摘要非轨道立体图像的连接点匹配是一项极具挑战性的任务,会影响偏差补偿和数字地表模型(DSM)的生成。与轨道内立体图像相比,轨道外立体图像更为复杂,这主要是由于太阳光照、传感器响应、大气条件和季节性土地覆盖变化造成的辐射差异,其次是由于较长的基线和较大的交角。这些挑战极大地限制了将卫星档案中的大量图像用于自动几何处理和制图。基于深度学习(DL)的匹配技术的最新进展表明,通过学习示例,针对不同光照度、视角和尺度的图像进行匹配的结果大有可为。本文评估了解决非轨道卫星立体图像中领结点匹配问题的潜力。具体来说,我们将重点放在经典匹配算法(即 SIFT(尺度不变特征变换))失效或表现不佳的立体图像对上,并通过其产生的相对方向几何精度和生成的 DSM 来评估基于 DL 的连接点匹配器。实验使用了来自全球四个不同地区的 40 个离轨卫星立体对。我们得出的结论是,基于 DL 的方法即使匹配精度略低于传统算法,但在匹配具有挑战性的多时空立体对时,成功率明显更高。
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Evaluating Learning-based Tie Point Matching for Geometric Processing of Off-Track Satellite Stereo
Abstract. Tie-point matching of off-track stereo images is a very challenging task, which can impact bias compensation and digital surface model (DSM) generation. Compared to in-track stereo images, off-track stereo images are more complex primarily due to the radiometric differences caused by sun illumination, sensor responses, atmospheric conditions, and seasonal land cover variations, and secondly due to the longer baseline and larger intersection angle. These challenges significantly limit the use of the vast number of images in satellite archives for automated geometric processing and mapping. Recent advances in deep learning (DL) based matching show promising results against images with diverse illuminations, viewing angles and scales through learning examples. This paper evaluates the potentials of addressing the tie point matching problems in off-track satellite stereo images. Specifically, we focus on stereo pairs that failed or underperformed in classic matching algorithms (i.e., SIFT (scale invariant feature transform)), and evaluate the DL-based tie points matchers by its resulting geometric accuracy in relative orientation, and the generated DSM. The experiments are carried out using 40 off-track satellite stereo pairs from four different regions around the world. We conclude that DL-based methods provide a significant higher success rate in matching challenging multi-temporal stereo pairs, even if their matching accuracy is slightly lower than classic algorithms.
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