Abstract

Flooding is a severe natural hazard, which poses a great threat to human life and property, especially in densely-populated urban areas. As one of the fastest developing fields in remote sensing applications, an unmanned aerial vehicle (UAV) can provide high-resolution data with a great potential for fast and accurate detection of inundated areas under complex urban landscapes. In this research, optical imagery was acquired by a mini-UAV to monitor the serious urban waterlogging in Yuyao, China. Texture features derived from gray-level co-occurrence matrix were included to increase the separability of different ground objects. A Random Forest classifier, consisting of 200 decision trees, was used to extract flooded areas in the spectral-textural feature space. Confusion matrix was used to assess the accuracy of the proposed method. Results indicated the following: (1) Random Forest showed good performance in urban flood mapping with an overall accuracy of 87.3% and a Kappa coefficient of 0.746; (2) the inclusion of texture features improved classification accuracy significantly; (3) Random Forest outperformed maximum likelihood and artificial neural network, and showed a similar performance to support vector machine. The results demonstrate that UAV can provide an ideal platform for urban flood monitoring and the proposed method shows great capability for the accurate extraction of inundated areas.

Highlights

  • Flooding is among one of the most widespread and destructive natural disasters, which exerts a heavy toll on human life and property [1,2,3,4,5]

  • A Random Forest with 200 decision trees was utilized to classify the original unmanned aerial vehicle (UAV) RGB image (RGB-only) and image added with texture features (RGB + texture)

  • To quantitatively assess the classification accuracy before and after the inclusion of texture features, confusion matrix derived from validation samples was calculated for RGB-only and RGB + texture images, the results are shown in Tables 2 and 3

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Summary

Introduction

Flooding is among one of the most widespread and destructive natural disasters, which exerts a heavy toll on human life and property [1,2,3,4,5]. The damage caused by floods is much greater in highly-developed and densely-populated urban areas than in rural countrysides. Remote sensing data used for flood mapping consists of space-borne and airborne imageries. As for the former, optical and radar data have been widely adopted to extract inundation areas with high accuracy [5,6,7,8,9,10,11,12,13]. Wang [8] used moderate resolution (30 m) Landsat 7 Thematic Mapper (TM) imagery to delineate the maximum flood event caused by Hurricane Floyd in North Carolina. Animi [5] proposed a model to generate a floodplain map based on high-resolution (1 m) Ikonos imagery and digital elevation model (DEM)

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