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Knowledge-driven image mining system for Big Earth Observation data fusion: GIS maps inclusion in active learning stage

机译:知识驱动的大地球观测数据融合图像挖掘系统:处于主动学习阶段的GIS地图包含

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In this paper, we present an accelerated knowledge-driven content-based information mining system for Big Earth Observation data fusion. The tool combines, at pixel level, the unsupervised clustering results of different number of features. The features, extracted from different EO raster image types and from existing GIS vector maps, are combined, in form of a BoW, with a user given semantic concepts in order to calculate the posterior probability that allows the final search. The inclusion of GIS data during the active learning, based on Bayesian networks, accelerate the definition processes of semantic labels and retrieve the related images with only a few user interactions. The inclusion of GIS data in conjunction with the recently introduced search algorithm have as a result a system which greatly optimizes the computational costs and over performs existing similar systems in various orders of magnitude.
机译:在本文中,我们提出了一种用于大地球观测数据融合的基于知识驱动的基于内容的加速信息挖掘系统。该工具在像素级别结合了不同数量特征的无监督聚类结果。从Boo的形式,将从不同的EO栅格图像类型和现有GIS矢量地图中提取的特征与用户给定的语义概念进行组合,以计算允许进行最终搜索的后验概率。在主动学习过程中,基于贝叶斯网络将GIS数据包括在内,可加速语义标签的定义过程,并仅需很少的用户交互即可检索相关图像。结果,将GIS数据与最近引入的搜索算法结合在一起,就构成了一个系统,该系统极大地优化了计算成本,并且以各种数量级超额完成了现有的类似系统。

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