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Deep Convolutional Neural Network for Flood Extent Mapping Using Unmanned Aerial Vehicles Data

机译:深度卷积神经网络用于无人机航程测绘

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摘要

Flooding is one of the leading threats of natural disasters to human life and property, especially in densely populated urban areas. Rapid and precise extraction of the flooded areas is key to supporting emergency-response planning and providing damage assessment in both spatial and temporal measurements. Unmanned Aerial Vehicles (UAV) technology has recently been recognized as an efficient photogrammetry data acquisition platform to quickly deliver high-resolution imagery because of its cost-effectiveness, ability to fly at lower altitudes, and ability to enter a hazardous area. Different image classification methods including SVM (Support Vector Machine) have been used for flood extent mapping. In recent years, there has been a significant improvement in remote sensing image classification using Convolutional Neural Networks (CNNs). CNNs have demonstrated excellent performance on various tasks including image classification, feature extraction, and segmentation. CNNs can learn features automatically from large datasets through the organization of multi-layers of neurons and have the ability to implement nonlinear decision functions. This study investigates the potential of CNN approaches to extract flooded areas from UAV imagery. A VGG-based fully convolutional network (FCN-16s) was used in this research. The model was fine-tuned and a k-fold cross-validation was applied to estimate the performance of the model on the new UAV imagery dataset. This approach allowed FCN-16s to be trained on the datasets that contained only one hundred training samples, and resulted in a highly accurate classification. Confusion matrix was calculated to estimate the accuracy of the proposed method. The image segmentation results obtained from FCN-16s were compared from the results obtained from FCN-8s, FCN-32s and SVMs. Experimental results showed that the FCNs could extract flooded areas precisely from UAV images compared to the traditional classifiers such as SVMs. The classification accuracy achieved by FCN-16s, FCN-8s, FCN-32s, and SVM for the water class was 97.52%, 97.8%, 94.20% and 89%, respectively.
机译:洪水是自然灾害对人类生命和财产的主要威胁之一,特别是在人口稠密的城市地区。快速准确地提取洪水区域是支持应急计划并在空间和时间测量中提供损害评估的关键。无人飞行器(UAV)技术由于具有成本效益,可在较低高度飞行的能力以及进入危险区域的能力,最近被公认为是一种高效的摄影测量数据采集平台,可快速提供高分辨率图像。包括SVM(支持向量机)在内的不同图像分类方法已用于洪水范围映射。近年来,使用卷积神经网络(CNN)进行的遥感图像分类已有了显着改善。 CNN已在各种任务(包括图像分类,特征提取和分割)上表现出出色的性能。 CNN可以通过多层神经元的组织从大型数据集中自动学习特征,并具有实现非线性决策功能的能力。这项研究调查了CNN方法从无人机图像中提取淹没区域的潜力。基于VGG的全卷积网络(FCN-16s)用于这项研究。对模型进行了微调,并使用k倍交叉验证来评估模型在新的无人机图像数据集上的性能。这种方法允许FCN-16在仅包含一百个训练样本的数据集上进行训练,并导致高度准确的分类。计算混淆矩阵以估计所提出方法的准确性。从FCN-8,FCN-32和SVM获得的结果比较了从FCN-16获得的图像分割结果。实验结果表明,与传统分类器(例如SVM)相比,FCN可以从无人机图像中精确提取淹没区域。 FCN-16,FCN-8,FCN-32和SVM对水质分类的准确度分别为97.52%,97.8%,94.20%和89%。

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