论文标题
使用卷积神经网络对下水道视频的阻塞水平检测
Obstruction level detection of sewer videos using convolutional neural networks
论文作者
论文摘要
在全球范围内,下水道网络旨在将废水运输到一个集中的处理厂,以进行处理并返回环境。这个过程对于当前社会至关重要,防止水传播疾病,提供安全的饮用水并增强一般卫生。为了使下水道网络完美地运行,不断进行抽样检查以识别障碍物。通常,闭路电视系统用于记录管道内部并报告阻塞水平,这可能会触发清洁操作剂。目前,障碍水平评估是手动进行的,这是耗时且不一致的。在这项工作中,我们设计了一种方法来训练卷积神经网络来识别管道中的阻塞水平,从而减少了这种频繁而重复的任务所需的人类努力。我们收集了一个视频数据库,这些视频经过探索和调整,以生成有用的框架以融入模型。我们由此产生的分类器可获得部署现成的表演。为了验证该方法的一致性及其工业适用性,我们整合了层面相关性的传播性解释性技术,这使我们能够进一步了解该任务的神经网络的行为。最后,建议的系统可以在下水道检查过程中提供更高的速度,准确性和一致性。我们的分析还发现了有关如何进一步提高数据收集方法质量的一些准则。
Worldwide, sewer networks are designed to transport wastewater to a centralized treatment plant to be treated and returned to the environment. This process is critical for the current society, preventing waterborne illnesses, providing safe drinking water and enhancing general sanitation. To keep a sewer network perfectly operational, sampling inspections are performed constantly to identify obstructions. Typically, a Closed-Circuit Television system is used to record the inside of pipes and report the obstruction level, which may trigger a cleaning operative. Currently, the obstruction level assessment is done manually, which is time-consuming and inconsistent. In this work, we design a methodology to train a Convolutional Neural Network for identifying the level of obstruction in pipes, thus reducing the human effort required on such a frequent and repetitive task. We gathered a database of videos that are explored and adapted to generate useful frames to fed into the model. Our resulting classifier obtains deployment ready performances. To validate the consistency of the approach and its industrial applicability, we integrate the Layer-wise Relevance Propagation explainability technique, which enables us to further understand the behavior of the neural network for this task. In the end, the proposed system can provide higher speed, accuracy, and consistency in the process of sewer examination. Our analysis also uncovers some guidelines on how to further improve the quality of the data gathering methodology.