论文标题
机器学习和热量表应用于建筑物中裂缝的检测和分类
Machine Learning and Thermography Applied to the Detection and Classification of Cracks in Building
论文作者
论文摘要
由于建筑行业造成的环境影响,重新利用现有建筑物并使其更节能成为高优先级的问题。但是,土地开发商的合理关注与建筑物的保护状态有关。因此,红外热成像已被用作通过检测病理(例如裂纹和湿度)来表征这些建筑物保护状态的强大工具。热摄像机检测任何材料发出的辐射,并将其转换为温度色编码的图像。温度异常的变化可能表明存在病理,但是,读取热图像可能并不是很简单。该研究项目旨在结合红外热仪和机器学习(ML),以帮助利益相关者通过更有效,更准确地识别其病理和缺陷来确定重复现有建筑物的生存能力。在该研究项目的这个特定阶段,我们使用了卷积神经网络(DCNN)的图像分类机器学习模型来区分一个特定建筑物的三个级别的裂纹。比较了从两个不同的热摄像机获得的MSX和热图像之间的模型精度(通过多源信息形成),以测试输入数据和网络对检测结果的影响。
Due to the environmental impacts caused by the construction industry, repurposing existing buildings and making them more energy-efficient has become a high-priority issue. However, a legitimate concern of land developers is associated with the buildings' state of conservation. For that reason, infrared thermography has been used as a powerful tool to characterize these buildings' state of conservation by detecting pathologies, such as cracks and humidity. Thermal cameras detect the radiation emitted by any material and translate it into temperature-color-coded images. Abnormal temperature changes may indicate the presence of pathologies, however, reading thermal images might not be quite simple. This research project aims to combine infrared thermography and machine learning (ML) to help stakeholders determine the viability of reusing existing buildings by identifying their pathologies and defects more efficiently and accurately. In this particular phase of this research project, we've used an image classification machine learning model of Convolutional Neural Networks (DCNN) to differentiate three levels of cracks in one particular building. The model's accuracy was compared between the MSX and thermal images acquired from two distinct thermal cameras and fused images (formed through multisource information) to test the influence of the input data and network on the detection results.