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A defect classification methodology for sewer image sets with convolutional neural networks

机译:卷积神经网络的污水图像集缺陷分类方法

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Sewer pipes are commonly inspected in situ with CCTV equipment. The CCTV footage is then reviewed by human operators in order to classify defects in the pipes and make a recommendation on possible interventions. This process is both labor-intensive and error-prone. Other researchers have suggested machine learning techniques to (partially) automate the human review of this footage, but the automated classifiers are often validated in artificial testing setups, leading to biased results that do not translate directly to operational impact. In this work, we discuss suitable evaluation metrics for this specific classification task - most notably 'specificity at sensitivity' and 'precision at recall' - and the importance of using a validation setup that includes a realistic ratio of images with defects to images without defects, and a sufficiently large dataset. We also introduce 'leavetwo-inspections-out' cross validation, designed to eliminate a data leakage bias that would otherwise cause an overestimation of classifier performance. We designed a convolutional neural network (CNN) and applied this validation methodology to automatically detect the twelve most common defect types in a dataset of over 2 million CCTV images. With this dataset and our validation methodology, our CNN outperforms the state-of-theart. Classification performance was highest for intruding and defective connections and lowest for porous pipes. While the CNN is not capable of fully automated classification at sufficient performance levels, we determined that if we augment the human operator with the CNN, this may reduce the required human labor by up to 60.5%.
机译:通常使用CCTV设备对下水道管道进行现场检查。然后,操作员将对CCTV录像进行审查,以便对管道中的缺陷进行分类并就可能的干预措施提出建议。该过程既费力又容易出错。其他研究人员建议使用机器学习技术来(部分)使该镜头的人工检查自动化,但自动分类器通常在人工测试设置中得到验证,从而导致产生偏差的结果并不直接转化为运营影响。在这项工作中,我们将讨论针对此特定分类任务的合适评估指标-最显着的是“灵敏度时的特异性”和“召回时的精度”,以及使用验证设置的重要性,该设置包括有缺陷的图像与无缺陷的图像的实际比率,以及足够大的数据集。我们还引入了“ leavetwo-inspections-out”交叉验证,该交叉验证旨在消除数据泄漏偏差,否则可能导致分类器性能过高估计。我们设计了卷积神经网络(CNN),并应用了这种验证方法来自动检测超过200万张CCTV图像的数据集中的十二种最常见的缺陷类型。有了这个数据集和我们的验证方法,我们的CNN胜过了最新技术。侵入式和有缺陷的连接的分类性能最高,而多孔管的分类性能则最低。尽管CNN不能在足够的性能水平上进行全自动分类,但我们确定,如果使用CNN扩充人工操作员,这可能最多减少60.5%的人工需求。

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