首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Machine Learning-Based Ensemble Prediction of Water-Quality Variables Using Feature-Level and Decision-Level Fusion with Proximal Remote Sensing
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Machine Learning-Based Ensemble Prediction of Water-Quality Variables Using Feature-Level and Decision-Level Fusion with Proximal Remote Sensing

机译:基于机器学习的集合预测水质变量使用具有近端遥感的特征级和决策电平融合

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摘要

The objectives of this study were to accurately model relationships between spectral reflectance and water-quality parameters, including blue-green algae phycocyanin, chlorophyll a, total suspended solids, turbidity, and total dissolved solids; evaluate feature-level fusion to spectral data for water-quality modeling; and evaluate the effectiveness of machine learning regression techniques and decision-level fusion for water-quality variable prediction. We introduce the application of canonical correlation analysis fusion as a method for water-based spectral analysis to overcome the low signal-to-noise ratio of the data. Water-quality variables and spectral reflectance were used to create predictive models via machine learning regression models, including multiple linear regression, partial least-squares regression, Gaussian process regression, support vector machine regression, and extreme learning machine regression. The models were then combined using decision-level fusion. Results indicate that canonical correlation analysis feature-level fusion and machine learning techniques are superior to traditional methods.
机译:本研究的目的是准确地模拟光谱反射率和水质参数之间的关系,包括蓝绿藻藻苷,叶绿素A,总悬浮固体,浊度和总溶解固体;评估特征级融合到水质建模的光谱数据;并评估机器学习回归技术的有效性和决策级别融合对水质可变预测。我们介绍了规范相关分析融合作为水基光谱分析方法的应用,克服了数据的低信噪比。水质变量和光谱反射率通过机器学习回归模型来创建预测模型,包括多元线性回归,部分最小二乘回归,高斯过程回归,支持向量机回归和极端学习机回归。然后使用决策级融合组合模型。结果表明,规范相关分析特征级融合和机器学习技术优于传统方法。

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