DBSCAN algorithm for segmenting indoor point clouds

Authors

DOI:

https://doi.org/10.46421/entac.v20i1.5834

Keywords:

Point clouds, DBSCAN, BIM

Abstract

Surveys carried out by laser scanners have been requested in a context of innovation and resource savings within the AECO (Architecture, Engineering, Construction and Operation) sector, especially in the BIM (Building Information Modeling) field, as they are capable of generating point clouds that accurately represent the real environment. Despite making surveys easier, working with point clouds can be a complex task, as they can require high computational processing power, in addition to modeling BIM models from these clouds being non-intuitive due to the overlapping of points from different elements. With the aim of facilitating BIM modeling from point clouds, the DBSCAN (Density-Based Spatial Clustering of Applications with Noise) segmentation algorithm was used in this study. An algorithm was developed in Python language using DBSCAN to segment a point cloud from an indoor environment. The algorithm proved to be useful for separating elements such as walls, floors, and roofs, allowing the export of segmented clouds of each of these elements to software such as Revit and facilitating BIM modeling.

Author Biographies

Bruna Brito Liberal, Universidade Federal de Pernambuco

Mestra em Engenharia Civil pela Universidade Federal de Pernambuco. Doutoranda em Engenharia Civil pela Universidade Federal de Pernambuco (Recife - PE, Brasil).

Gustavo de Hollanda Cavalcanti Soares, Universidade Federal de Pernambuco

Graduando em Sistemas da Informação pela Universidade Federal de Pernambuco (Recife - PE, Brasil).

Arthur Henrique da Costa e Silva, Departamento Nacional de Infraestrutura de Transportes

Graduado em Arquitetura e Urbanismo pela Uninassau. Consultor BIM do Departamento Nacional de Infraestrutura de Transportes (Recife - PE, Brasil).

Rachel Perez Palha, Universidade Federal de Pernambuco

Doutora em Engenharia de Produção pela Universidade Federal de Pernambuco. Professora no Departamento de Engenharia Civil da Universidade Federal de Pernambuco (Recife - PE, Brasil).

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Published

2024-10-07

How to Cite

LIBERAL, Bruna Brito; SOARES, Gustavo de Hollanda Cavalcanti; SILVA, Arthur Henrique da Costa e; PALHA, Rachel Perez. DBSCAN algorithm for segmenting indoor point clouds. In: NATIONAL MEETING OF BUILT ENVIRONMENT TECHNOLOGY, 20., 2024. Anais [...]. Porto Alegre: ANTAC, 2024. p. 1–9. DOI: 10.46421/entac.v20i1.5834. Disponível em: https://eventos.antac.org.br/index.php/entac/article/view/5834. Acesso em: 23 nov. 2024.

Issue

Section

Tecnologia da Informação e Comunicação

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