Vacuum Insulated Glazing (VIG) is a highly thermally insulating window technology, which boasts an extremely thin profile and lower weight as compared to gas-filled insulated glazing units of equivalent performance. The VIG is a double-pane configuration with a submillimeter vacuum gap between the panes and therefore under constant atmospheric pressure over their service life. Small pillars are positioned between the panes to maintain the gap, which can damage the glass reducing the lifetime of the VIG unit. To efficiently assess any surface damage on the glass, an automated damage detection system is highly desirable. For the purpose of classifying the damage, we have developed, trained, and tested a deep learning computer vision system using convolutional neural networks. The classification model flawlessly classified the test dataset with an area under the curve (AUC) for the receiver operating characteristic (ROC) of 100%. We have automatically cropped the images down to their relevant information by using Faster-RCNN to locate the position of the pillars. We employ the state-of-the-art methods Grad-CAM and Score-CAM of explainable Artificial Intelligence (XAI) to provide an understanding of the internal mechanisms and were able to show that our classifier outperforms ResNet50V2 for identification of crack locations and geometry. The proposed methods can therefore be used to detect systematic defects even without large amounts of training data. Further analyses of our model's predictive capabilities demonstrates its superiority over state-of-the-art models (ResNet50V2, ResNet101V2 and ResNet152V2) in terms of convergence speed, accuracy, precision at 100% recall and AUC for ROC.
翻译:紫外线是高热绝热的网络悬浮层(VIG),是一种高热绝热的网络精度网状玻璃技术,与气体填充的、隔热的、类似性能的凝固器相比,其光度非常薄,重量也较低。VIG是一种双层配置,在玻璃之间有亚毫米真空间隔,因此在服务寿命的大气压力下处于恒定状态。在玻璃间放置小柱以保持差距,这可能会损害玻璃缩短VIG单元的寿命。为了有效评估玻璃表面的腐蚀,一个自动损坏检测系统是非常可取的。为了对损坏进行精确的分类,我们开发、培训和测试了一个使用同导神经神经网络网络的深层学习计算机视觉系统。 分类模型无瑕疵地将测试条件分类在曲线下的一个区域,用于接收器操作特性(ROC)100%。我们用快速RCNNN来自动将图像压缩为相关信息,我们使用最新设计的方法甚深超临界-CAM和标准-C-C-50 系统化的系统精度数据分析,因此在内部解解解解解A-C2的系统化分析中,可以解释的系统化的系统化系统解算系统化系统化系统化的系统化方法,我们使用。