基于三维视点归一化的宽基线地面激光扫描鲁棒对准

Yanpeng Cao, M. Yang, J. McDonald
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引用次数: 7

摘要

自然场景的复杂性和地面激光扫描仪获取的信息量使得扫描间的配准成为一个复杂的问题。当两个单独的扫描在显著改变的视点(宽基线)上捕获时,这个问题变得更加具有挑战性。由于现在的激光扫描仪器通常配备额外的图像传感器,因此利用图像内容来改进3D扫描数据的配准过程是理所当然的。在本文中,我们提出了一种新的改进现有的特征技术,以实现两个广泛分离的3D扫描之间的自动对齐。其核心思想是从三维点云中提取优势平面结构,然后利用恢复的三维几何形状来提高二维图像特征提取和匹配的性能。由于利用了底层3D结构,所得到的特征对透视扭曲和视点变化具有很强的鉴别性和鲁棒性。利用这种新颖的视点不变性特征,在宽基线图像匹配方面自动链接相应的三维点。实际数据的初步实验证明了该方法在具有挑战性的宽基线3D扫描数据对齐任务中的潜力。
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Robust alignment of wide baseline terrestrial laser scans via 3D viewpoint normalization
The complexity of natural scenes and the amount of information acquired by terrestrial laser scanners turn the registration among scans into a complex problem. This problem becomes even more challenging when two individual scans captured at significantly changed viewpoints (wide baseline). Since laser-scanning instruments nowadays are often equipped with an additional image sensor, it stands to reason making use of the image content to improve the registration process of 3D scanning data. In this paper, we present a novel improvement to the existing feature techniques to enable automatic alignment between two widely separated 3D scans. The key idea consists of extracting dominant planar structures from 3D point clouds and then utilizing the recovered 3D geometry to improve the performance of 2D image feature extraction and matching. The resulting features are very discriminative and robust to perspective distortions and viewpoint changes due to exploiting the underlying 3D structure. Using this novel viewpoint invariant feature, the corresponding 3D points are automatically linked in terms of wide baseline image matching. Initial experiments with real data demonstrate the potential of the proposed method for the challenging wide baseline 3D scanning data alignment tasks.
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