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Automatic Visual Leakage Inspection by Using Thermographic Video and Image Analysis

机译:通过使用热选视频和图像分析自动视觉泄漏检查

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Pipeline leakages are a critical issue in large-scale process plants, because leaks increase maintenance costs and create unsafe conditions. Therefore, detection of leakages is a crucial task for maintenance and condition monitoring. Recently, using IR cameras to detect leakages in large-scale plants was found to be a promising approach since IR cameras can capture images of leaking fluid if the fluid has a higher (or lower) temperature than its surroundings. In this paper, an approach based on thermographic data analysis using IR videos is proposed to detect leakage. In this approach, subsequent frames are subtracted to eliminate the background and reveal the motion of the leaking drops. Then, Principle Component Analysis is performed to extract features from the subtracted images. All subtracted images are individually transferred to feature vectors, which are considered as a basis for classifying the videos. Then, the K-Nearest Neighbor algorithm is used to classify the videos as normal (non-leakage) or anomalous (leakage). In order to evaluate the approach, a data set, consisting of video footage of a laboratory demonstrator plant captured by an IR camera, is considered. Leakages are simulated in the pipelines and the video data is used for image analysis. The results show that the proposed method is a promising approach to detect leakages from pipelines using IR video analysis.
机译:管道泄漏是大型过程工厂中的一个关键问题,因为泄漏增加了维护成本并创造了不安全的条件。因此,泄漏的检测是维护和条件监测的重要任务。最近,使用IR摄像机检测大型植物中的泄漏是一种有希望的方法,因为如果流体具有比其周围的环境更高(或更低)的温度,IR摄像机可以捕获泄漏的流体的图像。本文提出了一种基于IR视频的热成像数据分析的方法来检测泄漏。在这种方法中,减去后续帧以消除背景并揭示泄漏液滴的运动。然后,执行原理分量分析以提取来自减去图像的特征。所有减法的图像都被单独转移到特征向量,该特征向量被认为是对视频进行分类的基础。然后,用于将视频分类为正常(无泄漏)或异常(泄漏)对视频进行分类。为了评估方法,考虑了由IR相机捕获的实验室示范设备的视频素材组成的数据集。管道中模拟泄漏,视频数据用于图像分析。结果表明,该方法是使用IR视频分析检测管道泄漏的有希望的方法。

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