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Automated Pipe Defect Detection and Categorization Using Camera/Laser-Based Profiler and Artificial Neural Network

机译:使用基于照相机/激光的探查器和人工神经网络自动进行管道缺陷检测和分类

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Closed-circuit television (CCTV) is currently used in many inspection applications, such as the inspection of nonaccessible pipe surfaces. This human-oriented approach based on offline analysis of the raw images is highly subjective and prone to error because of the exorbitant amount of data to be assessed. Laser profilers have been recently proposed to project well-defined light patterns, improving the illumination of standard CCTV systems as well as enhancing the capability of automating the assessment process. This research shows that positional (geometrical) as well as intensity information, related to potential defects, can be extracted from the acquired laser projections. While most researchers focus on the analysis of positional information obtained from the acquired profiler signals, here the intensity information contained within the reflected light is also exploited for the purpose of defect classification and visualization. This paper describes novel strategies created for the automation of defect classification in tubular structures and explores new methods to fuse intensity and positional information, achieving improved multivariable defect classification. The acquired camera/laser images are processed in order to extract signal information for the purpose of visualization and map creation for further assessment. Then, a two-stage approach based on image processing and artificial neural networks is used to classify the images. First, a binary classifier identifies defective pipe sections, and then in a second stage, the defects are classified into different types, such as holes, cracks, and protruding obstacles. Experimental results are provided. Note to Practitioners-The method presented in this paper aims to automate the inspection of nonaccessible pipe surfaces. The method was thought to be employed in the inspection of sewers; however, it could be used in many other industrial applications and could also be extended to other shapes rather than tubul- ar structures. A laser ring profiler, consisting, for instance, of a laser diode and a ring projector, can be easily integrated into existing closed-circuit television systems. The proposed algorithm identifies defective areas and categorizes the types of defects, analyzing the successive recorded camera images that will contain the reflected ring of light. The algorithm, that can be used online, makes use of the deformation of the reflected laser ring together with its changes in intensity. The fact of combining the two kinds of data using artificial-intelligent algorithms makes the method robust enough to work in harsh environments
机译:闭路电视(CCTV)当前用于许多检查应用中,例如不可触及的管道表面的检查。基于原始图像的离线分析的这种以人为本的方法具有很高的主观性,并且由于要评估的数据量过大,因此容易出错。最近提出了激光轮廓仪,以投射清晰的光图案,改善标准CCTV系统的照度,并增强自动化评估过程的能力。这项研究表明,可以从获取的激光投影中提取与潜在缺陷有关的位置(几何)信息和强度信息。尽管大多数研究人员专注于分析从采集的轮廓仪信号中获得的位置信息,但此处还利用反射光中包含的强度信息进行缺陷分类和可视化。本文介绍了为管状结构缺陷分类自动化创建的新策略,并探索了融合强度和位置信息以实现改进的多变量缺陷分类的新方法。处理获取的相机/激光图像,以便提取信号信息以进行可视化和创建地图以进行进一步评估。然后,采用基于图像处理和人工神经网络的两阶段方法对图像进行分类。首先,用二元分类器识别出有缺陷的管段,然后在第二阶段将缺陷分类为不同的类型,例如孔,裂纹和突出的障碍物。提供实验结果。给从业者的注意-本文介绍的方法旨在自动检查不可触及的管道表面。该方法被认为可用于下水道的检查。但是,它可以用于许多其他工业应用,也可以扩展到其他形状,而不是管状结构。由例如激光二极管和环形投影仪组成的激光环形轮廓仪可以很容易地集成到现有的闭路电视系统中。所提出的算法可以识别缺陷区域,并对缺陷类型进行分类,分析连续记录的相机图像,这些图像将包含反射的光环。该算法可以在线使用,它利用了反射激光环的变形及其强度变化。使用人工智能算法将两种数据结合在一起的事实使该方法足够健壮,可以在恶劣的环境下工作

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