Vision-Based Concrete-Crack Detection on Railway Sleepers Using Dense U-Net Model

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Algorithms Pub Date : 2023-12-15 DOI:10.3390/a16120568
M. Khan, Seong-Hoon Kee, A. Nahid
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Abstract

Crack inspection in railway sleepers is crucial for ensuring rail safety and avoiding deadly accidents. Traditional methods for detecting cracks on railway sleepers are very time-consuming and lack efficiency. Therefore, nowadays, researchers are paying attention to vision-based algorithms, especially Deep Learning algorithms. In this work, we adopted the U-net for the first time for detecting cracks on a railway sleeper and proposed a modified U-net architecture named Dense U-net for segmenting the cracks. In the Dense U-net structure, we established several short connections between the encoder and decoder blocks, which enabled the architecture to obtain better pixel information flow. Thus, the model extracted the necessary information in more detail to predict the cracks. We collected images from railway sleepers, processed them in a dataset, and finally trained the model with the images. The model achieved an overall F1-score, precision, Recall, and IoU of 86.5%, 88.53%, 84.63%, and 76.31%, respectively. We compared our suggested model with the original U-net, and the results demonstrate that our model performed better than the U-net in both quantitative and qualitative results. Moreover, we considered the necessity of crack severity analysis and measured a few parameters of the cracks. The engineers must know the severity of the cracks to have an idea about the most severe locations and take the necessary steps to repair the badly affected sleepers.
使用密集 U-Net 模型对铁路枕木上的混凝土裂缝进行基于视觉的检测
铁路枕木的裂缝检测对于确保铁路安全和避免致命事故至关重要。传统的铁轨枕木裂缝检测方法耗时长、效率低。因此,如今研究人员开始关注基于视觉的算法,尤其是深度学习算法。在这项工作中,我们首次采用了 U-net 来检测铁路枕木上的裂缝,并提出了一种名为 Dense U-net 的改进型 U-net 结构来分割裂缝。在 Dense U-net 结构中,我们在编码器和解码器块之间建立了多个短连接,这使得该结构能够获得更好的像素信息流。这样,模型就能更详细地提取必要的信息来预测裂缝。我们收集了铁轨枕木的图像,并将其处理为数据集,最后利用这些图像对模型进行了训练。模型的总体 F1 分数、精确度、召回率和 IoU 分别达到了 86.5%、88.53%、84.63% 和 76.31%。我们将建议的模型与原始 U-net 进行了比较,结果表明我们的模型在定量和定性结果上都优于 U-net。此外,我们还考虑了裂缝严重性分析的必要性,并测量了裂缝的一些参数。工程师必须知道裂缝的严重程度,以便了解最严重的位置,并采取必要措施修复受严重影响的枕木。
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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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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