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Defect Detection and Segmentation Framework for Remote Field Eddy Current Sensor Data

机译:远场涡流传感器数据的缺陷检测与分割框架

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摘要

Remote-Field Eddy-Current (RFEC) technology is often used as a Non-Destructive Evaluation (NDE) method to prevent water pipe failures. By analyzing the RFEC data, it is possible to quantify the corrosion present in pipes. Quantifying the corrosion involves detecting defects and extracting their depth and shape. For large sections of pipelines, this can be extremely time-consuming if performed manually. Automated approaches are therefore well motivated. In this article, we propose an automated framework to locate and segment defects in individual pipe segments, starting from raw RFEC measurements taken over large pipelines. The framework relies on a novel feature to robustly detect these defects and a segmentation algorithm applied to the deconvolved RFEC signal. The framework is evaluated using both simulated and real datasets, demonstrating its ability to efficiently segment the shape of corrosion defects.
机译:远程磁场涡流(RFEC)技术通常用作无损评估(NDE)方法,以防止水管故障。通过分析RFEC数据,可以量化管道中存在的腐蚀。量化腐蚀涉及检测缺陷并提取其深度和形状。对于大型管道,如果手动执行,则可能会非常耗时。因此,自动化方法的动机很好。在本文中,我们提出了一个自动框架,该框架可以从对大型管道进行的原始RFEC测量开始,来定位和分段各个管道中的缺陷。该框架依靠一种新颖的功能来稳健地检测这些缺陷,并采用一种应用于反卷积RFEC信号的分割算法。使用模拟和真实数据集对框架进行了评估,证明了该框架可以有效地分割腐蚀缺陷的形状。

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