This paper aims to propose a system for defect detection in constructed elements that is able to indicate deformity positions. It also evaluates the defects in finishing materials of constructed building elements to support the subjective visual quality investigation of the aesthetics of an architectural work.,This strategy depends on defect features analysis that evaluates the defect value in digital images using digital image processing methods. The research uses the three-dimensional (3D) modeling techniques and image processing algorithms to generate a system that is able to perform some of the monitoring activities by computers. Based on the collected site scans, a 3D model is created for the building. Then, several images can be exported from the 3D model to investigate a specific element. Different image denoizing techniques are compared such as mean filter, median filter, Wiener filter and Split–Bregman iterations. The most efficient technique is implemented in the system. Then, the following six different methods are used for image segmentation to separate the concerned object from the background; color segmentation, region growing segmentation, histogram segmentation, local standard deviation segmentation, adaptive threshold segmentation and mean-shift cluster segmentation.,The proposed system is able to detect the cracks and defected areas in finishing works and calculate the percentage of the defected area compared to the total captured area in the photo with high accuracy.,The proposed system increases the precision of decision-making by decreasing the contribution of human subjective judgment. Investigation of different finishing surfaces is applied to validate the proposed system.
[1]
Dorin Comaniciu,et al.
Mean Shift: A Robust Approach Toward Feature Space Analysis
,
2002,
IEEE Trans. Pattern Anal. Mach. Intell..
[2]
M. Kazubek,et al.
Wavelet domain image denoising by thresholding and Wiener filtering
,
2003,
IEEE Signal Processing Letters.
[3]
Chollada Laofor,et al.
Defect detection and quantification system to support subjective visual quality inspection via a digital image processing: A tiling work case study
,
2012
.
[4]
Pedro Arias-Sánchez,et al.
Assessment of cracks on concrete bridges using image processing supported by laser scanning survey
,
2017
.
[5]
Carl J. Debono,et al.
Tunnel inspection using photogrammetric techniques and image processing: A review
,
2018,
ISPRS Journal of Photogrammetry and Remote Sensing.
[6]
Burcu Akinci,et al.
Automatic Creation of Semantically Rich 3D Building Models from Laser Scanner Data
,
2013
.
[7]
Tom Goldstein,et al.
The Split Bregman Method for L1-Regularized Problems
,
2009,
SIAM J. Imaging Sci..
[8]
Mani Golparvar-Fard,et al.
Segmentation of building point cloud models including detailed architectural/structural features and MEP systems
,
2015
.
[10]
Stephen O. Ogunlana,et al.
Problems causing delays in major construction projects in Thailand
,
2008
.
[11]
Shuji Hashimoto,et al.
Image‐Based Crack Detection for Real Concrete Surfaces
,
2008
.
[12]
Felipe Buill Pozuelo,et al.
Generation of virtual models of cultural heritage
,
2012
.