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Enhance 3D Point Cloud Accuracy Through Supervised Machine Learning for Automated Rolling Stock Maintenance: A Railway Sector Case Study

机译:通过监督机器学习来提升3D点云准确性,自动滚动股票维护:铁路部门案例研究

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This paper presents findings of a case study conducted to introduce industrial robots into automatic train coupler inspection of Siemens Class 380 rolling-stock. The targets are localized by coalescing RGB and time of flight (ToF) sensor data. The study examines several supervised machine learning techniques to improve the overall accuracy of 3D point clouds. A cost factor which reflects root mean square, mean absolute error and coefficient of determination is defined to evaluate the performance of the learning algorithms. The best-suited models are further validated using simulation data and selected to include in overall robotic sensing system.
机译:本文介绍了案例研究的表现,将工业机器人引入自动列车耦合器检查西门子380级轧制库存中。目标是通过聚结的RGB和飞行时间(TOF)传感器数据定位。该研究检查了几种监督机器学习技术,提高了3D点云的整体精度。反映均方根方形的成本因素,平均绝对误差和确定系数被定义为评估学习算法的性能。使用仿真数据进一步验证最适合的模型,并选择在整个机器人传感系统中包含。

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