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Publication

Automatic point Cloud Building Envelope Segmentation (Auto-CuBES) using Machine Learning

by Bryan P Maldonado Puente, Nolan W Hayes, Diana E Hun
Publication Type
Conference Paper
Book Title
Proceedings of the 40th International Symposium on Automation and Robotics in Construction
Publication Date
Page Numbers
48 to 55
Publisher Location
United States of America
Conference Name
40th International Symposium on Automation and Robotics in Construction (ISARC)
Conference Location
Chennai, India
Conference Sponsor
The International Association for Automation and Robotics in Construction
Conference Date
-

Modern retrofit construction practices use 3D point cloud data of the building envelope to obtain the as-built dimensions. However, manual segmentation by a trained professional is required to identify and measure window openings, door openings, and other architectural features, making the use of 3D point clouds labor-intensive. In this study, the Automatic point Cloud Building Envelope Segmentation (Auto-CuBES) algorithm is described, which can significantly reduce the time spent during point cloud segmentation. The Auto-CuBES algorithm inputs a 3D point cloud generated by commonly available surveying equipment and outputs a wire-frame model of the building envelope. Unsupervised machine learning methods were used to identify facades, windows, and doors while minimizing the number of calibration parameters. Additionally, Auto-CuBES generates a heat map of each facade indicating non-planar characteristics that are crucial for the optimization of connections used in overclad envelope retrofits. With a scan resolution of 3 mm, the resulting window dimensions showed a mean absolute error of 4.2 mm compared to manual laser measurements.