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A Probabilistic Framework for Fusing Classifications Derived From Multi-Temporal Hyperspectral Imagery

机译:用于融合从多时间超光谱图像的分类的概率框架

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A new framework to fuse probabilistic classifications from replicate hyperspectral imagery of the same scene is presented. To improve scene classification accuracy, probabilistic outputs from a classifier, such as a Gaussian Process (GP), are fused. The framework allows fusion of several $(ngeq 2)$ images simultaneously or sequentially. The framework has been tested using hyperspectral imagery acquired from field-based platforms from a mine face at four different times during the day under different illumination conditions. Classification results of individual images showed large variations, however, using the fusion framework, the fused map showed a better agreement with the geology mapped in the field.1
机译:提出了一种新的熔断概率分类的新框架,从同一场景的复制高光谱图像。为了提高场景分类准确性,分类器(例如高斯过程(GP))的概率输出被融合。该框架允许同时或顺序地融合几$(n geq 2)$图像。在当天在不同照明条件下的一天中,使用从基于场平台获取的高光谱图像测试了框架。单个图像的分类结果显示出大的变化,然而,使用融合框架,融合图显示了与现场映射的地质更好的协议。 1

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