A New Approach toward Corner Detection for Use in Point Cloud Registration

Remote. Sens. Pub Date : 2023-07-01 DOI:10.3390/rs15133375
W. Wang, Yi Zhang, Gengyu Ge, Huan Yang, Yue Wang
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引用次数: 1

Abstract

For this study, a new point cloud alignment method is proposed for extracting corner points and aligning them at the geometric level. It can align point clouds that have low overlap and is more robust to outliers and noise. First, planes are extracted from the raw point cloud, and the corner points are defined as the intersection of three planes. Next, graphs are constructed for subsequent point cloud registration by treating corners as vertices and sharing planes as edges. The graph-matching algorithm is then applied to determine correspondence. Finally, point clouds are registered by aligning the corresponding corner points. The proposed method was investigated by utilizing pertinent metrics on datasets with differing overlap. The results demonstrate that the proposed method can align point clouds that have low overlap, yielding an RMSE of about 0.05 cm for datasets with 90% overlap and about 0.2 cm when there is only about 10% overlap. In this situation, the other methods failed to align point clouds. In terms of time consumption, the proposed method can process a point cloud comprising 104 points in 4 s when there is high overlap. When there is low overlap, it can also process a point cloud comprising 106 points in 10 s. The contributions of this study are the definition and extraction of corner points at the geometric level, followed by the use of these corner points to register point clouds. This approach can be directly used for low-precision applications and, in addition, for coarse registration in high-precision applications.
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点云配准中角点检测的新方法
为此,提出了一种新的点云对齐方法,提取角点并在几何水平上对齐。它可以对齐低重叠的点云,并且对异常值和噪声具有更强的鲁棒性。首先,从原始点云中提取平面,并将角点定义为三个平面的交点。接下来,通过将角作为顶点,将共享平面作为边缘,为后续点云配准构建图。然后应用图匹配算法来确定对应关系。最后,通过对齐相应的角点进行点云配准。通过对不同重叠度的数据集使用相关度量来研究所提出的方法。结果表明,该方法可以对低重叠的点云进行对齐,当数据集重叠90%时,RMSE约为0.05 cm,当数据集重叠10%时,RMSE约为0.2 cm。在这种情况下,其他方法无法对齐点云。在时间消耗方面,在高度重叠的情况下,该方法可以在4 s内处理104个点云。当重叠度较低时,它也可以在10秒内处理一个包含106个点的点云。本研究的贡献是在几何水平上定义和提取角点,然后使用这些角点来配准点云。这种方法可以直接用于低精度应用,此外,在高精度应用中也可以进行粗配准。
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