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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Automatic crack detection for tunnel inspection using deep learning and heuristic image post-processing
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Automatic crack detection for tunnel inspection using deep learning and heuristic image post-processing

机译:使用深度学习和启发式图像后隧道检查自动裂纹检测

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摘要

In this paper, a crack detection mechanism for concrete tunnel surfaces is presented. The proposed methodology leverages deep Convolutional Neural Networks and domain-specific heuristic post-processing techniques to address a variety of challenges, including high accuracy requirements, low operational times and limited hardware resources, poor and variable lighting conditions, low textured lining surfaces, scarcity of training data, and abundance of noise. The proposed framework leverages the representational power of the convolutional layers of CNNs, which inherently selects effective features, thus obviating the need for the tedious task of handcrafted feature extraction. Additionally, the good performance rates attained by the proposed framework are acquired at a significantly lower execution time compared to other techniques. The presented mechanism was designed and developed as a core component of an autonomous robotic inspector deployed and validated in the tunnels of Egnatia Motorway in Metsovo, Greece. The obtained results denote the proposed approach's superiority over a variety of methods and suggest a promising potential as a driver of autonomous concrete-lining tunnel-inspection robots.
机译:本文提出了一种混凝土隧洞表面的裂纹检测机构。所提出的方法利用深度卷积神经网络和域特定的启发式后处理技术来解决各种挑战,包括高精度要求,低操作时间和硬件资源有限,差和可变的照明条件,低纹理衬砌表面,稀缺培训数据和丰富的噪音。所提出的框架利用CNN的卷积层的代表性,这固有地选择有效特征,从而避免了对手工特征提取的繁琐任务的需求。另外,与其他技术相比,在显着更低的执行时间内获得了所提出的框架所获得的良好性能速率。该机制被设计和开发为部署自治机器人检查员的核心组件,在希腊梅斯索沃的EGNATIA高速公路的隧道中部署和验证。所获得的结果表示提出的方法对各种方法的优势,并提出了作为自主混凝土衬砌隧道检查机器人驾驶员的有希望的潜力。

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