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Thermal anomaly detection in walls via CNN-based segmentation

机译:通过基于CNN的分割的墙壁热异常检测

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摘要

IRT (Infrared Thermography) is a commonly used non-destructive testing method for detecting thermal anomalies of a building envelope that may cause heat loss and occupant discomfort. Despite its importance, a thermal anomaly is still usually detected by manual analysis of IRT, which strongly depends on the analyzer?s experience. In this study, an automatic anomaly detection framework from thermal and visible images was developed. The wall, which is the subject of anomaly detection, is segmented from the visible image by a CNN (Convolutional Neural Network). The temperature threshold of the anomaly area is determined from the multimodal temperature distribution of the target domain. The performance of the anomaly detection was improved by applying the segmentation process (F1 score 0.497 to 0.808). The framework proposed in this study is expected to be implemented through portable devices and enable instant in-situ thermal anomaly detection.
机译:IRT(红外热成像)是一种常用的非破坏性测试方法,用于检测可能导致热损失和乘员不适的建筑物的热异常。 尽管重要的是,通常通过手动分析IRT来检测热异常,这强烈取决于分析仪的经验。 在该研究中,开发了一种自动异常检测框架,从热和可见图像开发。 作为异常检测的受试者的壁从CNN(卷积神经网络)分段。 异常区域的温度阈值由目标结构域的多峰温度分布确定。 通过施加分割过程(F1得分0.497至0.808),改善了异常检测的性能。 该研究中提出的框架预计将通过便携式设备实施,并能够即时地原位热异常检测。

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