In response to the situation that the conventional bridge crack manual detection method has a large amount of human and material resources wasted, this study is aimed to propose a light-weighted, high-precision, deep learning-based bridge apparent crack recognition model that can be deployed in mobile devices' scenarios. In order to enhance the performance of YOLOv5, firstly, the data augmentation methods are supplemented, and then the YOLOv5 series algorithm is trained to select a suitable basic framework. The YOLOv5s is identified as the basic framework for the light-weighted crack detection model through experiments for comparison and validation.By replacing the traditional DarkNet backbone network of YOLOv5s with GhostNet backbone network, introducing Transformer multi-headed self-attention mechanism and bi-directional feature pyramid network (BiFPN) to replace the commonly used feature pyramid network, the improved model not only has 42% fewer parameters and faster inference response, but also significantly outperforms the original model in terms of accuracy and mAP (8.5% and 1.1% improvement, respectively). Luckily each improved part has a positive impact on the result. This paper provides a feasible idea to establish a digital operation management system in the field of highway and bridge in the future and to implement the whole life cycle structure health monitoring of civil infrastructure in China.
翻译:为了应对传统桥梁裂缝人工探测法浪费了大量人力和物力资源的局面,本研究的目的是提出一个可以在移动装置情景中部署的轻量、高精度、深深深学习的桥状明显裂痕识别模型。首先,为了提高YOLOv5的性能,数据增强方法得到了补充,然后,YOLOv5系列算法得到了培训,以选择合适的基本框架。YOLOv5被确定为通过比较和验证试验轻量质裂痕检测模型的基本框架。通过GhostNet主干网取代传统的YOLOv5s暗网主干网网络,引入了变换器多头自留机制和双向地貌金字塔网络(BIFPN)以取代常用的特征金字塔网络,改进后的模型不仅减少42%的参数和更快的推断反应,而且大大超出最初的精确度和 mAP(分别为8.5%和1.1%的改进率)模型。幸运的是,中国改进后的每一个部分都对GhingNet主干网网络的网络产生了积极影响,引入了变式的移动机制,从而建立了整个民用管理结构。