Deakin University
Browse
nasirzadeh-automatedprogress-2019.pdf (7.11 MB)

Automated progress controlling and monitoring using daily site images and building information modelling

Download (7.11 MB)
journal contribution
posted on 2019-01-01, 00:00 authored by Hadi Mahami, Farnad NasirzadehFarnad Nasirzadeh, Ali Hosseininaveh Ahmadabadian, Saeid Nahavandi
This research presents a novel method for automated construction progress monitoring. Using the proposed method, an accurate and complete 3D point cloud is generated for automatic outdoor and indoor progress monitoring throughout the project duration. In this method, Structured-from-Motion (SFM) and Multi-View-Stereo (MVS) algorithms coupled with photogrammetric principles for the coded targets’ detection are exploited to generate as-built 3D point clouds. The coded targets are utilized to automatically resolve the scale and increase the accuracy of the point cloud generated using SFM and MVS methods. Having generated the point cloud, the CAD model is generated from the as-built point cloud and compared with the as-planned model. Finally, the quantity of the performed work is determined in two real case study projects. The proposed method is compared to the Structured-from-Motion (SFM)/Clustering Multi-Views Stereo (CMVS)/Patch-based Multi-View Stereo (PMVS) algorithm, as a common method for generating 3D point cloud models. The proposed photogrammetric Multi-View Stereo method reveals an accuracy of around 99 percent and the generated noises are less compared to the SFM/CMVS/PMVS algorithm. It is observed that the proposed method has extensively improved the accuracy of generated points cloud compared to the SFM/CMVS/PMVS algorithm. It is believed that the proposed method may present a novel and robust tool for automated progress monitoring in construction projects.

History

Journal

Buildings

Volume

9

Issue

3

Article number

70

Pagination

1 - 20

Publisher

MDPI

Location

Basel, Switzerland

eISSN

2075-5309

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2019, the authors

Usage metrics

    Research Publications

    Categories

    No categories selected

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC