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Multiple output Gaussian process regression algorithm for multi-frequency scattered data interpolation

机译:多频散射数据插值的多输出高斯过程回归算法

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In recent years, CubeSats have emerged as a platform of intense interest for a wide range of applications, including remote sensing. Of specific interest in this paper are data processing challenges associated with the MIT's Microwave Atmospheric Satellite (MicroMAS). Due to the motion of MicroMAS and the geometry of the data acquisition process, measurements are not collected on a regular grid of spatial locations as required by most applications. Thus, a fundamental problem in processing these data is that of interpolation. The problem is further complicated by the fact that MicroMAS collects data from several frequencies at a single location. A baseline algorithm that can be used to solve this multi-frequency scattered data interpolation problem is to fit data from each frequency via independent Gaussian Process (GP) and apply standard GP regression to estimate unknown data on the regular grid for each frequency separately. However, this approach ignores the correlation between frequencies. From the covariance structure in the aforementioned Independent Multiple output GP Regression (IMGPR) algorithm, we proposed a Correlated Multiple output GP Regression (CMGPR) algorithm which replaces a set of delta vectors with parameterized weight vectors learned from the dataset. To test the effectiveness of our proposed algorithms, we use NOAA's ATMS temperature data. According to the experimental results, the CMGPR algorithm performs better than the IMGPR.
机译:近年来,CubeSats已成为广泛应用的强烈兴趣的平台,包括遥感。本文的具体兴趣是与麻省理工学院的微波大气卫星(Micromas)相关的数据处理挑战。由于Micromas的运动和数据采集过程的几何形状,根据大多数应用程序的要求,不会在空间位置的常规网格上收集测量。因此,处理这些数据的基本问题是插值的问题。由于Micromas从单个位置处从几个频率收集数据,因此问题进一步复杂化。可以用于解决该多频散射数据插值问题的基线算法是通过独立的高斯过程(GP)来拟合来自每个频率的数据,并应用标准GP回归以分别为每个频率估计正则网格上的未知数据。然而,这种方法忽略了频率之间的相关性。从上述独立多输出GP回归(IMGPR)算法中的协方差结构,我们提出了一种相关的多输出GP回归(CMGPR)算法,其替换了一组具有来自数据集的参数化权重向量的DELTA向量。为了测试我们所提出的算法的有效性,我们使用NOAA的ATMS温度数据。根据实验结果,CMGPR算法比IMGPR更好。

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