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Automatic pipe and elbow recognition from three-dimensional point cloud model of industrial plant piping system using convolutional neural network- based primitive classification

机译:基于卷积神经网络的原始分类,工业厂管道系统三维点云模型自动管道和肘部识别

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摘要

With the recent development of laser scanning technology, the variety of applications of laser scanners has increased. One typical application is object recognition from laser-scanned point cloud models. On large-scale construction sites such as refineries and industrial plants, object recognition from point cloud models has been widely employed for construction progress monitoring, assembly inspections, and maintenance purposes. Pipelines are among the main objects of interest with regard to object recognition on such sites. There has been extensive research on recognizing pipes in pipelines; however, research on recognizing pipe-connecting elbows is still lacking. Most representative elbow recognition methods are centerline-based and connectivity-based methods. These methods do not use laser-scanned points directly; instead, they employ feature values that are calculated from laser-scanned points. However, these feature values are easily affected by noise and occlusion; therefore, the elbow recognition results could be inaccurate owing to noisy and occluded point cloud models. In this paper, we propose an automatic pipe and elbow recognition method robust against noise and occlusion in which pipes and elbows are recognized directly from laser-scanned points. This method starts with pipeline extraction, followed by elbow classification based on curvature information. Falsely classified points are filtered using convolutional neural network-based primitive classification. After elbow recognition is completed, pipe classification and recognition are performed. Experimental results obtained from three different point cloud models demonstrated that the proposed method recognizes pipes and elbows with high accuracy from noisy and occluded point cloud models.
机译:随着近期激光扫描技术的发展,激光扫描仪的各种应用增加了。一个典型的应用是来自激光扫描点云模型的对象识别。在炼油厂和工业厂房等大规模建筑工地,从点云模型的物体识别已被广泛用于施工进度监测,装配检查和维护目的。管道在此类网站上关于对象识别的主要感兴趣的目的之一。对管道中的识别管道进行了广泛的研究;然而,仍然缺乏对识别管连接肘部的研究。大多数代表性的弯头识别方法是基于中心线和基于连接的方法。这些方法不直接使用激光扫描点;相反,它们采用了从激光扫描点计算的特征值。但是,这些特征值容易受到噪声和遮挡的影响;因此,由于嘈杂和遮挡的点云模型,肘识别结果可能是不准确的。在本文中,我们提出了一种自动管道和肘识别方法稳健地防止噪声和遮挡,其中管道和肘部直接从激光扫描点识别。该方法以管道提取开始,然后基于曲率信息的肘部分类。使用基于卷积神经网络的原始分类进行筛选虚假的分类点。完成弯头识别后,执行管道分类和识别。从三种不同点云模型获得的实验结果表明,所提出的方法识别噪声和遮挡点云模型高精度的管道和肘部。

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