Detection of Road Cracks Using Convolutional Neural Networks and Threshold Segmentation

Arselan Ashraf, A. Sophian, A. Shafie, T. Gunawan, N. N. Ismail, Ali Aryo Bawono
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引用次数: 4

Abstract

Automatic road crack detection is an important transportation maintenance responsibility for ensuring driving comfort and safety. Manual inspection is considered to be a risky method because it is time consuming, costly, and dangerous for the inspectors. Automated road crack detecting techniques have been extensively researched and developed in order to overcome this issue. Despite the difficulties, most of the proposed methodologies and solutions involve machine vision and machine learning, which have lately acquired traction largely due to the increasingly more affordable processing power. Nonetheless, it remains a difficult task due to the inhomogeneity of crack intensity and the intricacy of the background.  In this paper, a convolutional neural network-based method for crack detection is proposed. The method is inspired from recent advancements in applying machine learning to computer vision. The primary goal of this work is to employ convolutional neural networks to detect the road crack. Data in the form of images has been used as input, preprocessing and threshold segmentation is applied to the input data. The processed output is feed to CNN for feature extraction and classification. The training accuracy was found to be 96.20 %, the validation accuracy to be 96.50 %, and the testing accuracy to be 94.5 %.
基于卷积神经网络和阈值分割的道路裂缝检测
道路裂缝自动检测是保障行车舒适性和安全性的重要交通维护责任。人工检查被认为是一种有风险的方法,因为它既耗时又昂贵,而且对检查人员来说很危险。为了克服这一问题,道路裂缝自动检测技术得到了广泛的研究和发展。尽管存在困难,但大多数提出的方法和解决方案都涉及机器视觉和机器学习,这些方法和解决方案最近获得了牵引力,主要是因为越来越多的处理能力可以负担得起。然而,由于裂纹强度的不均匀性和背景的复杂性,这仍然是一项艰巨的任务。本文提出了一种基于卷积神经网络的裂纹检测方法。该方法的灵感来自于最近将机器学习应用于计算机视觉的进展。本工作的主要目标是利用卷积神经网络来检测道路裂缝。以图像形式的数据作为输入,对输入数据进行预处理和阈值分割。处理后的输出馈送到CNN进行特征提取和分类。训练正确率为96.20%,验证正确率为96.50%,测试正确率为94.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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