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Evaluation of Classical Operators and Fuzzy Logic Algorithms for Edge Detection of Panels at Exterior Cladding of Buildings

机译:建筑物外墙面板边缘检测的经典算子评估和模糊逻辑算法

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The automated process of construction defect detection using non-contact methods provides vital information for quality control and updating building information modelling. The external cladding in modular construction should be regularly controlled in terms of the quality of panels and proper installation because its appearance is very important for clients. However, there are limited computational methods for examining the installation issues of external cladding remotely in an automated manner. These issues could be the incorrect sitting of a panel, unequal joints in an elevation, scratches or cracks on the face of a panel or dimensions of different elements of external cladding. This paper aims to present seven algorithms to detect panel edges and statistically compare their performance through application on two scenarios of buildings in construction sites. Two different scenarios are selected, where the building fa?ades are available to the public, and a sample of 100 images is taken using a state-of-the-art 3D camera for edge detection analysis. The experimentation results are validated by using a series of computational error and accuracy analyses and statistical methods including Mean Square Error, Peak Signal to Noise Ratio and Structural Similarity Index. The performance of an image processing algorithm depends on the quality of images and the algorithm utilised. The results show better performance of the fuzzy logic algorithm because it detects clear edges for installed panels. The applications of classical operators including Sobel, Canny, LoG, Prewitt and Roberts algorithms give similar results and show similarities in terms of the average of errors and accuracy. In addition, the results show that the minor difference of the average of the error and accuracy indices for Sobel, Canny, LoG, Prewitt and Roberts methods between both scenarios are not statistically significant, while the difference in the average of the error and accuracy indices for RGB-Sobel and Fuzzy methods between both scenarios are statistically significant. The accuracy of the algorithms can be improved by removing unwanted items such as vegetation and clouds in the sky. The evaluated algorithms assist practitioners to analyse their images collected day to day from construction sites, and to update building information modelling and the project digital drawings. Future work may need to focus on the combination of the evaluated algorithms using new data sets including colour edge detection for automatic defect identification using RGB and 360-degree images.
机译:使用非接触式方法进行建筑缺陷检测的自动化过程为质量控制和更新建筑信息模型提供了重要信息。模块化结构的外部覆层应根据面板的质量和正确安装进行定期控制,因为其外观对于客户而言非常重要。但是,以自动化方式远程检查外部覆层的安装问题的计算方法有限。这些问题可能是面板的不正确坐姿,高低不等的接头,面板表面的划痕或裂缝或外部包层的不同元素的尺寸。本文旨在提出七种算法来检测面板边缘,并通过在建筑工地中的两种建筑物上的应用统计地比较它们的性能。选择了两种不同的方案,其中建筑立面可供公众使用,并使用最新的3D相机对边缘图像进行分析,以获取100张图像的样本。实验结果通过一系列计算误差和准确性分析以及包括均方误差,峰信噪比和结构相似性指数在内的统计方法进行验证。图像处理算法的性能取决于图像的质量和所使用的算法。结果表明模糊逻辑算法具有更好的性能,因为它可以检测已安装面板的清晰边缘。包括Sobel,Canny,LoG,Prewitt和Roberts算法在内的经典算子的应用给出了相似的结果,并且在平均误差和准确性方面显示出相似性。此外,结果表明,在两种情况下,Sobel,Canny,LoG,Prewitt和Roberts方法的误差和准确性指数的平均值之间的细微差异均无统计学意义,而误差和准确性指数的平均值中的差异两种情况之间的RGB-Sobel和Fuzzy方法的统计意义均显着。可以通过删除不需要的项目(例如天空中的植被和云)来提高算法的准确性。经过评估的算法可帮助从业人员分析他们每天从建筑工地收集的图像,并更新建筑信息模型和项目数字图纸。未来的工作可能需要集中在使用新数据集的评估算法的组合上,这些新数据集包括用于使用RGB和360度图像进行自动缺陷识别的颜色边缘检测。

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