Abstract

Rapid flood mapping is crucial in hazard evaluation and forecasting, especially in the early stage of hazards. Synthetic aperture radar (SAR) images are able to penetrate clouds and heavy rainfall, which is of special importance for flood mapping. However, change detection is a key part and the threshold selection is very complex in flood mapping with SAR. In this paper, a novel approach is proposed to rapidly map flood regions and estimate the flood degree, avoiding the critical step of thresholding. It converts the change detection of thresholds to land cover backscatter classifications. Sentinel-1 SAR images are used to get the land cover backscatter classifications with the help of Sentinel-2 optical images using a supervised classifier. A pixel-based change detection is used for change detection. Backscatter characteristics and variation rules of different ground objects are essential prior knowledge for flood analysis. SAR image classifications of pre-flood and flooding periods both take the same input to make sense of the change detection between them. This method avoids the inaccuracy caused by a single threshold. A case study in Shouguang is tested by this new method, which is compared with the flood map extracted by Otsu thresholding and normalized difference water index (NDWI) methods. The results show that our approach can identify the flood beneath vegetation well. Moreover, all required data and data processing are simple, so it can be popularized in rapid flooding mapping in early disaster relief.

Highlights

  • Flooding is one of the most frequent and destructive natural hazards, which often causes property and life loss [1,2]

  • The traditional remote sensing of flood monitoring is still difficult due to the lack of data with sufficient acquisition frequency and timeliness [4], while synthetic aperture radar (SAR) systems offer the possibility to operate in day and night time [5]

  • Optical satellite images are vulnerable to weather conditions, and have poor quality during the period of disaster because it is always cloudy and rainy during that time

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Summary

Introduction

Flooding is one of the most frequent and destructive natural hazards, which often causes property and life loss [1,2]. Li et al [7] proposed a two-step automatic change detection chain for rapid flood mapping based on Sentinel-1 SAR images, which only dealt with the negative change caused by open water in rural areas. This approach can only detect completely inundated areas, but cannot identify slightly inundated areas. Amitrano et al [8] exploited Sentinel-1 ground range detected (GRD) products with an unsupervised method for rapid flood mapping, and classic co-occurrence measurements combined with amplitude information were used for a fuzzy classification system without a threshold selection.

Method of Flood Mapping
Supervised Classification
Backscatter Characteristics and Variation Rules of Ground Objects
Change Detection and Flood Estimation Rules
Flood Extraction with Otsu Thresholding and NDWI
Flood Extraction and Evaluation
Flood Extraction with NDWI

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