Automatic crack detection and segmentation play a significant role in the whole system of unmanned aerial vehicle inspections. In this paper, we have implemented a deep learning framework for crack detection based on classical network architectures including Alexnet, VGG, and Resnet. Moreover, inspired by the feature pyramid network architecture, a hierarchical convolutional neural network (CNN) deep learning framework which is efficient in crack segmentation is also proposed, and its performance of it is compared with other state-of-the-art network architecture. We have summarized the existing crack detection and segmentation datasets and established the largest existing benchmark dataset on the internet for crack detection and segmentation, which is open-sourced for the research community. Our feature pyramid crack segmentation network is tested on the benchmark dataset and gives satisfactory segmentation results. A framework for automatic unmanned aerial vehicle inspections is also proposed and will be established for the crack inspection tasks of various concrete structures. All our self-established datasets and codes are open-sourced at: https://github.com/KangchengLiu/Crack-Detection-and-Segmentation-Dataset-for-UAV-Inspection
翻译:在本文件中,我们根据古典网络结构,包括Alexnet、VGG和Resnet,为裂缝检测建立了一个深层次学习框架;此外,在金字塔特征网络结构的启发下,还提议了一个在裂缝分割方面高效的分层神经网络(CNN)深层学习框架,其性能与其他最先进的网络结构进行比较;我们总结了现有的裂缝检测和分割数据集,并在互联网上建立了现有最大的裂缝检测和分割基准数据集,供研究界使用。我们特有的金字塔裂缝分割网络在基准数据集上进行测试,并产生令人满意的分层结果。还提议了自动无人驾驶飞行器检查框架,并将为各种混凝土结构的裂缝检查任务建立这一框架。我们所有自建的数据集和代码都是公开来源,网址是:https://github.com/KangchengLiu/Crack-Cregation-Segion-Segiment-Dataset-AVAVPOROND)