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A sequential Bayesian procedure for integrating heterogeneous remotely sensed data for irrigation management

机译:一种序贯贝叶斯程序,用于整合异构远程感测数据进行灌溉管理

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In irrigation management the estimation of the radiometric surface temperature is of fundamental importance in evaluating the spatial distribution of land surface evapotranspiration. However, obtaining both high spatial and temporal resolutions data is impossible for any real sensor. In this paper we propose and investigate the use of sequential Bayesian techniques for integrating heterogeneous data with complementary features. A validation is performed by means of images acquired from SEVIRI and MODIS sensors in the thermal channels IR 10.8 and 31, respectively.
机译:在灌溉管理中,辐射表面温度的估计在评估土地表面蒸散的空间分布方面是至关重要的。但是,任何真实传感器都不可能获得高空间和时间分辨率数据。在本文中,我们提出并调查了顺序贝叶斯技术与互补特征集成了异质数据。通过从热通道IR 10.8和31中的来自Seviri和MODIS传感器获取的图像来执行验证。

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