变电站三维信息模型自动建模方法研究

Junfeng Ding, Haonan Zong, Jian Zhou, Deyong Wu, Xuan Chen, Lei Wang
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引用次数: 0

摘要

逆向建模是一种将自然场景转化为三维模型的技术。该模型是根据激光扫描仪获得的点云手工生成的,耗时、费力、复杂。针对这一问题,提出了一种变电站点云数据的自动建模方法。首先,参照变电站设备的标准结构,设计了一种自动生成构件模型库的算法。然后,我们改进了欧几里得聚类来分割不相连的点云数据。最后,根据SHOT特征描述符找到对应的点,并通过霍夫投票对每个组件进行识别。获取场景中各个元素的位置信息后,将模型传递到场景中,替换点云中相应的部分,从而完成自动建模过程。实验比较了改进的欧几里得聚类和传统的欧几里得聚类的聚类结果。本文的聚类方法在执行效率上有明显的提高。此外,本文还给出了该方法的最终建模结果。与Delaunay三角剖分法和泊松曲面重建法相比,该方法建立的模型更为完整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on the automatic modeling method of 3D information model for substations
Reverse modeling is a kind of technology that transforms natural scenes into three-dimensional models. The models are generated manually by referring to the point cloud obtained by a laser scanner, which is time-consuming, laborious, and complicated. To address this problem, we propose an automatic modeling method for the point cloud data of substations. First, an algorithm is designed to automatically generate a component model library by referring to the standard structure of the substation equipment. Then, we improve the Euclidean clustering to segment disconnected point cloud data. Finally, corresponding points are found according to the SHOT feature descriptor, and each component is identified with Hough voting. After the location information for each element in the scene is obtained, the models can be transferred to the scene to replace the corresponding part in the point cloud, thus completing the process of automatic modeling. The experiment compares the results of improved Euclidean clustering and traditional Euclidean clustering. The clustering method in this paper has a significant improvement in execution efficiency. In addition, we also give the final modeling result of the method in this paper. Compared with the Delaunay triangulation and Poisson surface reconstruction methods, the model built by this method is more complete.
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