Defects increase the cost and duration of construction projects as they require significant inspection and documentation efforts. Automating defect detection could significantly reduce these efforts. This work focuses on detecting honeycombs, a substantial defect in concrete structures that may affect structural integrity. We compared honeycomb images scraped from the web with images obtained from real construction inspections. We found that web images do not capture the complete variance found in real-case scenarios and that there is still a lack of data in this domain. Our dataset is therefore freely available for further research. A Mask R-CNN and EfficientNet-B0 were trained for honeycomb detection. The Mask R-CNN model allows detecting honeycombs based on instance segmentation, whereas the EfficientNet-B0 model allows a patch-based classification. Our experiments demonstrate that both approaches are suitable for solving and automating honeycomb detection. In the future, this solution can be incorporated into defect documentation systems.
翻译:由于建筑项目需要大量的检查和文件工作,因此影响会增加项目的成本和持续时间。自动化的缺陷检测可以大大减少这些工作。这项工作侧重于检测蜂窝,这是混凝土结构中的一个重大缺陷,可能影响结构完整性。我们比较了从网络上刮出的蜂窝图像和从实际建筑检查中获得的图像。我们发现,网络图像不能反映实际情况中发现的全部差异,而且在这方面仍然缺乏数据。因此,我们的数据集可以免费获得供进一步研究之用。一个Mask R-CNN和高效网-B0已经接受了蜂窝检测培训。Mack R-CNN模型可以根据实例分割来探测蜂窝,而高效网-B0模型则可以进行基于补丁的分类。我们的实验表明,这两种方法都适合解决和自动检测蜂窝。今后,这一解决方案可以纳入缺陷文件系统。