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Towards autonomous inspection of concrete deterioration in sewers with legged robots

机译:对腿机器人的下水道混凝土劣化的自主检测

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The regular inspection of sewer systems is essential to assess the level of degradation and to plan maintenance work. Currently, human inspectors must walk through sewers and use their sense of touch to inspect the roughness of the floor and check for cracks. The sense of touch is used since the floor is often covered by (waste) water and biofilm, which renders visual inspection very challenging. In this paper, we demonstrate a robotic inspection system which evaluates concrete deterioration using tactile interaction. We deployed the quadruped robot ANYmal in the sewers of Zurich and commanded it using shared autonomy for several such missions. The inspection itself is realized via a well-defined scratching motion using one of the limbs on the sewer floor. Inertial and force/torque sensors embedded within specially designed feet captured the resulting vibrations. A pretrained support vector machine (SVM) is evaluated to assess the state of the concrete. The results of the classification are then displayed in a three-dimensional map recorded by the robot for easy visualization and assessment. To train the SVM we recorded 625 samples with ground truth labels provided by professional sewer inspectors. We make this data set publicly available. We achieved deterioration level estimates within three classes of more than 92% accuracy. During the four deployment missions, we covered a total distance of 300 m and acquired 130 inspection samples.
机译:定期检查下水道系统对于评估劣化水平并计划维护工作至关重要。目前,人类检查员必须穿过下水道并使用他们的触摸感染地板的粗糙度并检查裂缝。自由地板经常被(废物)水和生物膜覆盖以来,使用感应感,这使得目视检查非常具有挑战性。在本文中,我们展示了一种机器人检查系统,使用触觉相互作用来评估混凝土劣化。我们在苏黎世的下水道中部署了四足机器人,并使用分享自治的若干这样的特派团命令。通过污水底板上的一个肢体通过明确定义的刮擦运动来实现检查。在特殊设计的脚内嵌入的惯性和力/扭矩传感器捕获所产生的振动。评估预制支持向量机(SVM)以评估混凝土的状态。然后将分类结果显示在机器人记录的三维地图中,以便于可视化和评估。要培训SVM,我们录制了625个样本,采用专业下水道检查员提供的地面真理标签。我们将此数据设置为公开可用。我们实现了超过92%的三种课程的恶化水平估计。在四个部署任务中,我们涵盖了300米的总距离,并获得了130个检查样本。

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