Detection of Multiscale Deterioration from Point-Clouds of Furnace Walls

IF 0.9 Q4 AUTOMATION & CONTROL SYSTEMS
Tomoko Aoki, Erika Yamamoto, Hiroshi Masuda
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Abstract

Deterioration surveys of large structures such as furnaces have been mainly conducted by visual inspection, but it is desirable to automatically detect deterioration using point clouds captured by the terrestrial laser scanner. In this study, we propose flexible methods for detecting various scales of cracks, delamination, and adhesion on furnace walls by using a machine learning technique. Since small cracks have few geometrical features, they are detected from the reflection intensity images generated by projecting a point cloud onto a two-dimensional plane. For detecting cracks on the image, we use the U-Net fine-tuned by crack images denoised with a median filter. For detecting delamination and adhesion, a wall surface is approximated by a smooth B-spline surface, and deterioration is detected as differences between the point cloud and the approximated surface. However, in this method, the resolution of the B-spline surface has to be carefully determined according to the expected deterioration sizes. To robustly detect deterioration at various scales, we introduce multiscale 3D features, and detect deterioration using both multiscale 3D features and 2D features. In actual walls, it is difficult to distinguish between cracks and delamination because delamination grows from cracks. To detect both types of deterioration in a uniform manner, we combine the two detectors and propose an integrated detector for detecting deterioration at various scales. Our experimental results showed that our methods could stably detect various scales of degradation on furnace walls.
炉壁点云的多尺度劣化检测
大型结构(如熔炉)的劣化调查主要是通过目视检查进行的,但是使用地面激光扫描仪捕获的点云来自动检测劣化是可取的。在这项研究中,我们提出了一种灵活的方法,通过使用机器学习技术来检测炉壁上各种规模的裂纹,分层和粘附。由于小裂缝几乎没有几何特征,因此可以通过将点云投影到二维平面上生成的反射强度图像来检测它们。为了检测图像上的裂纹,我们使用U-Net对裂纹图像进行微调,并用中值滤波器去噪。为了检测分层和粘附,用光滑的b样条表面近似壁面,并通过点云和近似表面之间的差异来检测劣化。然而,在这种方法中,b样条曲面的分辨率必须根据预期的退化尺寸仔细确定。为了在不同尺度下稳健地检测劣化,我们引入了多尺度3D特征,并同时使用多尺度3D特征和2D特征检测劣化。在实际墙体中,由于脱层是从裂缝中产生的,因此很难区分裂缝和脱层。为了以统一的方式检测两种类型的劣化,我们将两种检测器结合起来,并提出了一种用于检测各种尺度劣化的集成检测器。实验结果表明,我们的方法可以稳定地检测炉壁上各种程度的降解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Automation Technology
International Journal of Automation Technology AUTOMATION & CONTROL SYSTEMS-
CiteScore
2.10
自引率
36.40%
发文量
96
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