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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Part-Based Modeling of Pole-Like Objects Using Divergence-Incorporated 3-D Clustering of Mobile Laser Scanning Point Clouds
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Part-Based Modeling of Pole-Like Objects Using Divergence-Incorporated 3-D Clustering of Mobile Laser Scanning Point Clouds

机译:使用分歧的杆状物体的基于零件建模,包括流动激光扫描点云的三维簇

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摘要

3-D digital city vividly presents a real-world city and has been widely needed for many application domains. Numerous pole-like objects (PLOs), including trees, street lamps, and traffic signs, are an indispensable part of 3-D digital city. The point cloud data of mobile laser scanning (MLS) systems can capture both the geometric shape and geospatial coordinates of the PLOs while moving along the roads. This article is motivated to accurately extract and efficiently model PLOs from the point cloud data. The main contributions of this article are as follows: 1) a divergence-incorporated clustering algorithm is proposed to extract trunks accurately from the pole-like 3-D distribution perspective of point cloud; 2) an adaptive growing strategy of alternately extending and updating 3-D neighbors is proposed to get the complete canopy points of various shapes and density; and 3) the part-based modeling is proposed to synthesize the point cloud of PLOs with meaningful 3-D shapes, providing a way to model objects for the 3-D digital city vividly and efficiently. The proposed method is tested on three data sets with different interference, shape of the canopy, and point density. Experimental results demonstrate that the proposed method can extract and model the PLOs effectively and efficiently for 3-D digital city. The precision of trunk extraction is 98.45%, 98.08%, and 92.39%, the completeness of canopy extraction is 80.54%, 89.84%, and 89.29%, and the modeling time for a PLO is 0.011, 0.038, and 0.063 s in three data sets.
机译:3-D数字城市生动地提出了一个真实世界的城市,并且许多应用领域已被广泛需要。众多的极性物体(PLO),包括树木,路灯和交通标志,是3-D数字城的不可或缺的一部分。移动激光扫描(MLS)系统的点云数据可以在沿着道路移动时捕获PLO的几何形状和地理空间坐标。本文有动力从点云数据中准确提取和有效地模拟PLO。本文的主要贡献如下:1)提出了一种衍生的聚类算法,以从点云的极值3-D分布的角度精确提取树干; 2)提出了一种交替延伸和更新3-D邻居的自适应生长策略,以获得各种形状和密度的完整冠层点; 3)提出了基于零件的建模,以合成具有有意义的3-D形状的PLO点云,提供了一种模拟3-D数字城市的对象,生动和有效地模拟了对象。该方法在三个数据集上进行测试,具有不同的干扰,冠层的形状和点密度。实验结果表明,该方法可以有效且有效地提取和模拟PLO,用于3-D数字城市。躯干提取的精度为98.45%,98.08%和92.39%,冠层提取的完整性为80.54%,89.84%和89.29%,PLO的建模时间为0.011,0.038和0.063秒套。

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