Intelligent Flood Detection using Traffic Surveillance Images based on Convolutional Neural Network and Image Parsing

E. Piedad, Elmer C. Peramo, Jeffrey A. Aborot, Joshua Russel Bensig, Paulyn Jamila Deiparine, Stephanie Marie Flores, Ciara Gumera, Franz A de Leon
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Abstract

An intelligent flood detection system is developed from an existing traffic surveillance structure. Images are captured from closed-circuit television (CCTV) with actual setting conditions - (a) normal, raining and flooding, and (b) day and night. The proposed system applied scene parsing method to avoid the impact of varying the physical setting of CCTV structures. This image parsing method uses pre-trained model, DeepLabv3, to detect objects common to traffic CCTV images such as road and vehicles. Supervised learning is performed to detect floods based on a convolutional neural network (CNN) model. The CNN model is validated ten times by training and testing it with randomly partitioned training and testing datasets, respectively. Initial results show that all validating models perform very close to each other. The best-trained model yields 80.67% accuracy, 86.33% precision, 81% recall, and 79.67% F1-score which shows satisfactory performance. This initial system brings the first step to a more reliable flood monitoring system.
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基于卷积神经网络和图像解析的交通监控图像智能洪水检测
在现有交通监控系统的基础上开发了智能洪水检测系统。图像是从闭路电视(CCTV)拍摄的,具有实际设置条件- (a)正常,下雨和洪水,以及(b)白天和黑夜。该系统采用场景解析的方法,避免了CCTV结构物理设置变化带来的影响。该图像解析方法使用预训练模型DeepLabv3来检测交通闭路电视图像中常见的物体,如道路和车辆。基于卷积神经网络(CNN)模型进行监督学习来检测洪水。分别用随机分割的训练数据集和测试数据集对CNN模型进行了10次训练和测试。初步结果表明,所有验证模型的性能都非常接近。训练最好的模型准确率为80.67%,精密度为86.33%,召回率为81%,f1得分为79.67%,表现出令人满意的性能。这个初步的系统为更可靠的洪水监测系统迈出了第一步。
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