Development of Standardization Algorithm for Indoor Point Cloud Data Based on the Geometric Feature of Structural Components

구조 부재의 형상적 특성 기반의 실내 포인트 클라우드 데이터의 표준화 알고리즘 개발

  • Published : 2023.05.17

Abstract

As the shape and size of detectable objects diversifying recognition and segmentation algorithms have been developed to acquire accurate shape information. Although a high density of data captured by the repetition of scanning improves the accuracy of algorithms the high dense data decreases the efficiency due to its large size. This paper proposes standardization algorithms using the feature of structural members on indoor point cloud data to improve the process. First of all we determine the reduction rate of the density based on the features of the target objects then the data reduction algorithm compresses the data based on the reduction rate. Second the data arrangement algorithm rotates the data until the normal vector of data is aligned along the coordinate axis to allow the following algorithms to operate properly. Final the data arrangement algorithm separates the rotated data into their leaning axis. This allows reverse engineering of indoor point clouds to obtain the efficiency and accuracy of refinement processes.

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Acknowledgement

본 연구는 국토교통부 디지털 기반 건축시공 및 안전감리 기술개발 사업의 연구비지원(RS-2022-00143493, 과제번호: 1615012983)에 의해 수행되었습니다.