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Water quality monitoring based on multiple remote sensing imageries

机译:基于多遥感识别仪的水质监测

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Remote sensing imageries are widely applied in the field of water quality monitoring since they have the features of wide detection range and fast data acquisition. Water quality monitoring based on remote sensing imagery takes the semi-empirical method mostly. However, the resolution of the most remote sensing imageries processed by the semi-empirical method is relatively low. The semi-empirical method needs a lot of manpower for data collection. Meanwhile it has limits in time and space since it cannot process every single image from different imaging conditions adaptively. In this paper, a novel approach of integrating high spatial resolution imageries and hyperspectral imageries (HSI) to monitor water quality is presented. According to multispectral high spatial resolution image, a one class support vector data description (SVDD) classifier is first trained. Pixels with anomalous spectrum are detected with this SVDD classifier. These pixels show that there exists pollution. Abnormal pixels corresponding to HSI imagery are then uncovered by mapping the abnormal pixels in high spatial resolution imagery to HSI imagery of neighboring date. To retrieve different pollution indexes of water quality, two bands of abnormal pixel in HSI data are selected with feature selection method. Finally, different linear regression models are built with appropriate combinations of feature bands to retrieve pH, dissolved oxygen (DO), permanganate index and ammonia concentration. Experiment on the GF-1 Wide Field of View (WFV) imageries and HJ-1A HSI imageries of Lanshanzui Region in the western bank of Taihu has showed that water pollution condition can be detected automatically and accurately by applying our method.
机译:遥感成像广泛应用于水质监测领域,因为它们具有广泛检测范围和快速数据采集的特征。基于遥感图像的水质监测主要采用半经验法。但是,由半经验方法处理的最遥感成像的分辨率相对较低。半实证方法需要大量的数据收集人力。同时它在时间和空间中具有限制,因为它无法自适应地从不同的成像条件处理每种图像。本文介绍了一种集成高空间分辨率成像和高光谱成像(HSI)来监测水质的新方法。根据多光谱高空间分辨率图像,首先训练一个类支持向量数据描述(SVDD)分类器。使用该SVDD分类器检测具有异常频谱的像素。这些像素显示存在污染。然后通过将高空间分辨率图像中的异常像素映射到相邻日期的HSI图像来覆盖对应于HSI图像的异常像素。为了检索水质的不同污染指标,选择HSI数据中的两条异常像素,具有特征选择方法。最后,采用不同的线性回归模型以特征带的适当组合构建,以检索pH,溶解氧(DO),高锰酸盐指数和氨浓度。在太湖西岸兰山嘴地区的GF-1广场(WFV)成像和HJ-1A HSI成像的实验表明,通过应用我们的方法,可以自动和准确地检测水污染状况。

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