DATA PROCESSING METHODOLOGY IN THE CONTEXT OF POINT CLOUDS OPTIMIZATION FOR BIM TECHNOLOGY

Wioleta Blaszczak Bak, C. Suchocki, M. Bednarczyk
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Abstract

Laser scanning can be used to acquire measurement data for Building Information Modeling (BIM). Terrestrial Laser Scanning (TLS) technology is ideal for this type of work. Having a point cloud of the measured object, dimension and model it in accordance with reality are possible. TLS gives the opportunity to obtain a big amount of observations, which on the one hand allows for an accurate depiction of the object, but on the other hand is troublesome during BIM developing. Therefore, the paper presents the methodology of preparing the TLS point cloud for BIM, taking into account the reduction of the number of observations. The reduction does not happen random, the points are examined for their usefulness and relevance during the development of BIM. The proposed methodology based on the use of the Optimum Dataset (OptD) method during reducing the size of the measurement dataset.
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bim技术中点云优化的数据处理方法
激光扫描可用于获取建筑信息模型(BIM)的测量数据。地面激光扫描(TLS)技术是这类工作的理想选择。有了被测物体的点云,可以根据实际情况对其进行量纲化和建模。TLS提供了获得大量观察的机会,这一方面允许对对象进行准确描述,但另一方面在BIM开发过程中很麻烦。因此,本文提出了为BIM准备TLS点云的方法,同时考虑到减少观测数量。减少不是随机发生的,在BIM开发过程中检查了这些点的有用性和相关性。该方法基于最优数据集(OptD)方法在减小测量数据集的大小。
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