An improved method of algal-bloom discrimination in Taihu Lake using Sentinel-1A data

Lin Wu, Mengwei Sun, Lin Min, Jianhui Zhao, Ning Li, Zhengwei Guo
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引用次数: 2

Abstract

The algal bloom is a prominent manifestation of water pollution. Synthetic aperture radar (SAR) shows an advantage in water monitoring due to its characteristic of all-time and all-weather. The water regions where algae gather present dark in SAR image. However, dark regions may also be caused by other factors, such as low wind. This paper proposes an improved algal bloom discrimination method based on Artificial Neural Network (ANN) to recognize the dark regions of algal bloom. Taihu Lake is chosen as the research area in this study because of its serious bloom in recent years. By means of quasi-synchronous optical images, the dark region database of SAR images labeled algal bloom and non-algal bloom are obtained. Then the segmentation algorithm and region growing algorithm are used to acquire the feature from dark regions, and divided into training feature set and testing feature set. Finally, the training and testing feature set are used for ANN-based discrimination model construction and verification. According the experimental results, the overall accuracy reaches 80%, which indicates that ANN model has a good applicability in algal bloom recognition of SAR image.
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基于Sentinel-1A数据的太湖水华判别改进方法
藻华是水污染的一个突出表现。合成孔径雷达(SAR)以其全时、全天候的特点在水体监测中显示出优势。在SAR图像中,藻类聚集的水域呈现黑色。然而,暗区也可能是由其他因素造成的,比如低风。提出了一种改进的基于人工神经网络(ANN)的藻华识别方法,用于识别藻华暗区。本研究选择太湖作为研究区域,是因为近年来太湖水华严重。利用准同步光学图像,获得了标记有藻华和非藻华的SAR图像的暗区数据库。然后采用分割算法和区域生长算法从暗区提取特征,并将其分为训练特征集和测试特征集。最后,将训练和测试特征集用于基于人工神经网络的判别模型的构建和验证。实验结果表明,人工神经网络模型在SAR图像的藻华识别中具有良好的适用性。
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