深度学习用于下水道检测中的自动结壳检测

Wasiu Yusuf , Hafiz Alaka , Mubashir Ahmad , Wusu Godoyon , Saheed Ajayi , Luqman Olalekan Toriola-Coker , Abdullahi Ahmed
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引用次数: 0

摘要

近几十年来,快速的城市化和人口增长给城市带来了巨大压力,使其不得不严重依赖下水道和隧道等地下基础设施来维持基本服务的提供。这些下水道的使用寿命通常只有 50 到 100 年,很容易出现各种形式的缺陷。以往的研究主要针对常见的下水道缺陷,如裂缝、根系侵入和渗透等,而对于结壳难题--下水道系统内坚硬沉积物的形成--却关注较少。本研究利用英国 14 个不同下水道的调查视频,提出了一种检测下水道结壳的开创性深度学习方法。我们的工作标志着利用深度学习技术开发专门用于检测结壳的模型的首次尝试,因为之前的研究主要针对其他类型的沉积物,如沉降和附着沉积物。通过将视频转换为连续图像帧,我们对其进行了全面分析,并采用了多种图像预处理技术。我们的贡献包括开发和比较了使用 AlexNet、VGG16、EfficientNet 和 VGG19 等骨干 CNN 网络对包壳进行分类的不同分类模型。值得注意的是,本研究首次对这些骨干网络进行了基于度量的比较,以确定最有效的结壳检测模型。结果表明,使用 VGG19 的深度架构,准确率达到了令人印象深刻的 96%。除了准确率,本研究还探讨了数据扩增和网络剔除对减少过拟合和提高模型性能的影响。此外,我们还分析了使用和不使用数据增强训练模型的时间复杂性,为了解我们方法的效率提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning for automated encrustation detection in sewer inspection
Rapid urbanization and population growth in recent decades have placed significant pressure on urban cities to rely heavily on underground infrastructure, such as sewers and tunnels, to maintain the provision of essential services. These sewers, typically having a limited lifespan of 50 to 100 years, are prone to various forms of defects. While prior research has primarily addressed common sewer defect like crack, root intrusion, and infiltration among others, the challenge of encrustation—the formation of hard deposits within sewer systems—has received less attention. This study presents a pioneering deep-learning approach to detect encrustation in sewers by leveraging survey videos from 14 different sewers in the United Kingdom. Our work marks the first effort to develop models specifically for detecting encrustation using deep learning techniques, as previous studies have focused on other types of deposits such as settled and attached deposits. By converting the videos into sequential image frames, we subjected them to thorough analysis and several image pre-processing techniques. Our contributions include the development and comparison of different classification models using backbone CNN networks such as AlexNet, VGG16, EfficientNet, and VGG19 to classify encrustation. Notably, this study provides the first metric-based comparison of these backbone networks to identify the most effective model for encrustation detection. The results demonstrate an impressive 96 % accuracy using the deep architecture of VGG19. Beyond accuracy, this research explores the impact of data augmentation and network dropout on reducing overfitting and enhancing model performance. Additionally, we analyze the time complexities associated with training models with and without data augmentation, providing valuable insights into the efficiency of our approach.
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