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Fusing Multisensor and Multisource Data with Implicit Knowledge for Monitoring

机译:融合具有隐式知识的多传感器和多源数据进行监视

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This paper describes a series of experiments in data fusion of remotely sensed multispectral satellite imagery, in-situ physical measurement data (temperature, pH, salinity), and implicitly encoded knowledge (contained in location and season) to predict values and classified levels of chlorophyll-a using an artificial neural net (ANN). ANNs inherently fuse data inputs and discover relationships to provide a fused interpretation of the inputs. The experiments investigated the effects of fusing data and knowledge from the three different types of sources: non-contact, physical contact, and implicit. The results indicate that fusing the three source types improved prediction of chlorophyll-a values and classification levels, and that the multisource ANN fusion approach might improve or augment present periodic sample point monitoring methods for chlorophyll-a.
机译:本文描述了一系列遥感多光谱卫星图像数据融合,原位物理测量数据(温度,pH,盐度)和隐式编码知识(包含在位置和季节)预测叶绿素值和分类水平的一系列实验。 -a使用人工神经网络(ANN)。 ANN本质上融合了数据输入并发现了相互之间的关系,以提供对输入的融合解释。实验研究了融合来自三种不同类型来源的数据和知识的影响:非接触,物理接触和隐式。结果表明,将这三种来源类型融合可以改善对叶绿素a值和分类水平的预测,并且多源ANN融合方法可能会改善或增强目前对叶绿素a的定期采样点监测方法。

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