Creating virtual sensors using learning based super resolution and data fusion

Eyad Said, A. Homaifar, M. Grossberg
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引用次数: 5

Abstract

Designing, building, and launching missions to deploy space based sensors typically take many years and cost billions of dollars. Missions are often delayed or canceled, and data from some parts of the world may be unavailable. When a physical sensor is unavailable for any reason, we propose the notion of a virtual sensor, in which we exploit the hundreds of spaced based sensors already observing the earth along with statistical learning algorithms to fuse the data from multi-sensor data to estimate a virtual sensor image. The algorithm we present in this paper uses several physical source sensors to build a virtual target sensor with different characteristics and higher resolution than the source sensors. The approach is based on finding the target sensor data that Maximizes the A-Posteriori (MAP) probability. We solve the MAP problem by using a Bayesian network framework. We present a proof of concept case that shows we can predict the values of a 500m resolution band 3 data, using 1km resolution images from bands 8, 9, and 10, in Moderate-resolution Imaging Spectroradiometer (MODIS). We test the performance of our algorithm by predicting target sensor data for which we have a ground truth data based on criterion of root mean square error. The results show the effectiveness of our approach.
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使用基于学习的超分辨率和数据融合创建虚拟传感器
设计、建造和发射部署太空传感器的任务通常需要多年时间,耗资数十亿美元。特派团经常被推迟或取消,而且可能无法获得来自世界某些地区的数据。当物理传感器因任何原因无法使用时,我们提出了虚拟传感器的概念,其中我们利用数百个基于间隔的传感器已经观测到地球以及统计学习算法来融合来自多传感器数据的数据以估计虚拟传感器图像。本文提出的算法利用多个物理源传感器构建一个与源传感器特性不同、分辨率更高的虚拟目标传感器。该方法是基于寻找目标传感器数据,使a -后验(MAP)概率最大化。我们使用贝叶斯网络框架来解决MAP问题。我们提出了一个概念验证案例,表明我们可以在中分辨率成像光谱仪(MODIS)中使用来自波段8、9和10的1km分辨率图像预测500米分辨率波段3数据的值。我们通过预测目标传感器数据来测试算法的性能,我们有一个基于均方根误差准则的真实数据。结果表明了该方法的有效性。
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