Robust and Efficient Pose Estimation of Pipes for Contact Inspection using Aerial Robots

M. Salvago, F. J. Pérez-Gran, J. Parra, M. A. Trujillo, A. Viguria
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Abstract

This work describes the methodology for detecting pipes and their pose in refineries inspection using Unmanned Aerial Vehicles (UAV s) for remote Ultrasonic Testing (UT). Segmentation techniques such as the Hough Transform and its variations, and Random Sample Consensus have been widely used. This paper is therefore focused on the development of an efficient computer vision algorithm to detect the position and orientation of the pipes in order to land on them autonomously to perform the inspection, by using 3D point cloud information from depth cameras. Applying a methodology based on Random Sample Consensus and point cloud pre-processing to fasten the algorithm performance has led to robust estimations of the pipes and their poses in an indoor testbed using a realistic environment, allowing the autonomous landing and the subsequent inspection.
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航空机器人接触检测中管道姿态的鲁棒高效估计
这项工作描述了在炼油厂检查中使用无人机(UAV)进行远程超声波检测(UT)来检测管道及其姿势的方法。分割技术,如霍夫变换及其变体,和随机样本一致性已被广泛使用。因此,本文的重点是开发一种高效的计算机视觉算法,通过使用深度相机的3D点云信息来检测管道的位置和方向,以便自主着陆并执行检查。采用基于随机样本共识和点云预处理的方法来提高算法性能,可以在室内测试平台上使用现实环境对管道及其姿态进行稳健估计,从而实现自主着陆和后续检查。
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