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Sewer damage detection from imbalanced CCTV inspection data using deep convolutional neural networks with hierarchical classification

机译:使用分层分类的深度卷积神经网络从失衡的CCTV检查数据中检测下水道损伤

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摘要

Accurate infrastructure condition assessment is critical for optimized maintenance and rehabilitation plan. Closed Circuit Television (CCTV) inspection has been widely applied in the internal inspection of sewerage systems. However, the manual approach adopted under current practice is expertise intensive and time-consuming. Previous research has attempted to apply specialized image processing techniques for the detection of specific defects with engineered features, such as cracks and joint offset. However, these engineered features are less generalizable than the state-of-the-art deep learning methods. Another crucial problem in defect classification is the imbalance between defects and non-defects due to high volume of normal images and the imbalance between different defects due to varying defect occurrence rates. This raises a big challenge for both traditional methods and deep learning methods. In this paper, a method based on the deep convolutional neural network is proposed to detect and classify defects from CCTV inspections. To improve the performance on imbalanced datasets, a hierarchical classification approach is introduced to supervise the learning process at different levels. The high-level detection task tries to discriminate images with defects from normal images. The low-level classification calculates the probability of each defect assuming the image has defects. The final defect classification is then derived from the chain rule of conditional probability. The network was trained and tested using inspection images collected from 24.7 km sewer lines. The high-level defect detection accuracy was improved from 78.4% to 83.2% with a hierarchical classification approach. Due to the difficulty to discriminate the defects, the low-level defect classification accuracy still needs improvements, but the proposed network with hierarchical classification also demonstrated superior performance over traditional approaches.
机译:准确的基础设施状况评估对于优化维护和修复计划至关重要。闭路电视(CCTV)检查已广泛应用于下水道系统的内部检查中。但是,当前实践中采用的手动方法需要大量的专业知识和时间。先前的研究尝试将专门的图像处理技术应用于具有工程特征(例如裂缝和接头偏移)的特定缺陷的检测。但是,这些工程设计的功能比最新的深度学习方法通​​用性差。缺陷分类中的另一个关键问题是由于正常图像量大而导致的缺陷与非缺陷之间的不平衡,以及由于变化的缺陷发生率而导致的不同缺陷之间的不平衡。这对传统方法和深度学习方法都提出了巨大挑战。本文提出了一种基于深度卷积神经网络的方法,用于对央视检查中的缺陷进行检测和分类。为了提高不平衡数据集的性能,引入了分层分类方法来监督不同级别的学习过程。高级检测任务试图将具有缺陷的图像与正常图像区分开。低级分类假设图像有缺陷,计算每个缺陷的概率。然后,从条件概率的链规则中得出最终的缺陷分类。使用从24.7公里下水道收集的检查图像对网络进行了培训和测试。使用分层分类方法,高级缺陷检测精度从78.4%提高到83.2%。由于难以识别缺陷,低级缺陷分类的准确性仍需要提高,但是所提出的具有分层分类的网络也表现出优于传统方法的性能。

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