School of Electrical, Electronics and Computer Engineering, University of Ulsan, Ulsan 44610, Korea.
Sensors (Basel). 2019 Sep 30;19(19):4251. doi: 10.3390/s19194251.
The visual inspection of massive civil infrastructure is a common trend for maintaining its reliability and structural health. However, this procedure, which uses human inspectors, requires long inspection times and relies on the subjective and empirical knowledge of the inspectors. To address these limitations, a machine vision-based autonomous crack detection method is proposed using a deep convolutional neural network (DCNN) technique. It consists of a fully convolutional neural network (FCN) with an encoder and decoder framework for semantic segmentation, which performs pixel-wise classification to accurately detect cracks. The main idea is to capture the global context of a scene and determine whether cracks are in the image while also providing a reduced and essential picture of the crack locations. The visual geometry group network (VGGNet), a variant of the DCCN, is employed as a backbone in the proposed FCN for end-to-end training. The efficacy of the proposed FCN method is tested on a publicly available benchmark dataset of concrete crack images. The experimental results indicate that the proposed method is highly effective for concrete crack classification, obtaining scores of approximately 92% for both the recall and F1 average.
对大型民用基础设施进行目视检查是维护其可靠性和结构健康的一种常见趋势。然而,这种使用人工检查员的程序需要较长的检查时间,并且依赖于检查员的主观和经验知识。为了解决这些限制,提出了一种基于机器视觉的自主裂缝检测方法,该方法使用深度卷积神经网络(DCNN)技术。它由一个具有编码器和解码器框架的全卷积神经网络(FCN)组成,用于语义分割,执行逐像素分类以准确检测裂缝。其主要思想是捕捉场景的全局上下文,并确定图像中是否存在裂缝,同时还提供裂缝位置的简化和重要图像。所提出的 FCN 中使用视觉几何组网络(VGGNet)作为 DCCN 的变体作为骨干进行端到端训练。在混凝土裂缝图像的公开基准数据集上测试了所提出的 FCN 方法的有效性。实验结果表明,该方法对于混凝土裂缝分类非常有效,召回率和 F1 平均值的得分均约为 92%。