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Semi-supervised support vector regression model for remote sensing water quality retrieving

机译:遥感水质反演的半监督支持向量回归模型

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This paper proposed a semi-supervised regression model with co-training algorithm based on support vector machine, which was used for retrieving water quality variables from SPOT5 remote sensing data. The model consisted of two support vector regressors (SVRs). Nonlinear relationship between water quality variables and SPOT5 spectrum was described by the two SVRs, and semi-supervised co-training algorithm for the SVRs was established. The model was used for retrieving concentrations of four representative pollution indicators—permanganate index (CODmn), ammonia nitrogen (NH3-N), chemical oxygen demand (COD) and dissolved oxygen (DO) of the Weihe River in Shaanxi Province, China. The spatial distribution map for those variables over a part of the Weihe River was also produced. SVR can be used to implement any nonlinear mapping readily, and semi-supervised learning can make use of both labeled and unlabeled samples. By integrating the two SVRs and using semi-supervised learning, we provide an operational method when paired samples are limited. The results show that it is much better than the multiple statistical regression method, and can provide the whole water pollution conditions for management fast and can be extended to hyperspectral remote sensing applications.
机译:提出了一种基于支持向量机的协同训练半监督回归模型,该模型用于从SPOT5遥感数据中提取水质变量。该模型由两个支持向量回归器(SVR)组成。通过两个SVR描述了水质变量与SPOT5光谱之间的非线性关系,并建立了SVR的半监督协同训练算法。该模型用于检索陕西渭河高锰酸盐指数(CODmn),氨氮(NH3 -N),化学需氧量(COD)和溶解氧(DO)四个代表性污染指标的浓度。 ,中国。还绘制了渭河部分地区这些变量的空间分布图。 SVR可用于轻松实现任何非线性映射,并且半监督学习可同时使用标记和未标记的样本。通过集成两个SVR并使用半监督学习,我们提供了配对样本有限时的一种操作方法。结果表明,该方法优于多元统计回归方法,可以快速提供整个水污染状况进行管理,可以推广到高光谱遥感应用中。

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