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Image Processing-Based Recognition of Wall Defects Using Machine Learning Approaches and Steerable Filters

机译:使用机器学习方法和可控过滤器的基于图像处理的壁缺陷识别

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摘要

Detection of defects including cracks and spalls on wall surface in high-rise buildings is a crucial task of buildings’ maintenance. If left undetected and untreated, these defects can significantly affect the structural integrity and the aesthetic aspect of buildings. Timely and cost-effective methods of building condition survey are of practicing need for the building owners and maintenance agencies to replace the time- and labor-consuming approach of manual survey. This study constructs an image processing approach for periodically evaluating the condition of wall structures. Image processing algorithms of steerable filters and projection integrals are employed to extract useful features from digital images. The newly developed model relies on the Support vector machine and least squares support vector machine to generalize the classification boundaries that categorize conditions of wall into five labels longitudinal crack, transverse crack, diagonal crack, spall damage, and intact wall. A data set consisting of 500 image samples has been collected to train and test the machine learning based classifiers. Experimental results point out that the proposed model that combines the image processing and machine learning algorithms can achieve a good classification performance with a classification accuracy rate = 85.33%. Therefore, the newly developed method can be a promising alternative to assist maintenance agencies in periodic building surveys.
机译:在高层建筑中,检测包括墙壁上的裂缝和剥落在内的缺陷是建筑物维护的关键任务。如果不加以发现和处理,这些缺陷会严重影响建筑物的结构完整性和美观性。及时且经济有效的建筑状况调查方法实际上是建筑物所有者和维护机构需要取代费时费力的人工调查方法的现实。本研究构建了一种图像处理方法,用于定期评估墙壁结构的状况。可控滤波器和投影积分的图像处理算法用于从数字图像中提取有用的特征。新开发的模型依赖于支持向量机和最小二乘支持向量机来概括分类边界,该分类边界将墙的条件分为五个标签:纵向裂缝,横向裂缝,对角裂缝,剥落破坏和完整墙。收集了由500个图像样本组成的数据集,以训练和测试基于机器学习的分类器。实验结果表明,该模型结合了图像处理和机器学习算法,可以实现良好的分类性能,分类准确率为85.33%。因此,新开发的方法可能是一种有希望的替代方法,可以帮助维护机构进行定期的建筑测量。

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