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Automatic martian dust storm detection via decision level fusion basedondeep extreme learning machine

机译:基于深度极限学习机的决策级融合自动火星沙尘暴检测

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This paper presents an automatic Martian dust storm detection via decision level fusion (DLF) based on deep extreme learning machine (DELM). Since Martian images are taken in multi-wavelength bands, DLF techniques which output a final classification result by integrating multiple classification results are necessary. Furthermore, since the number of Martian images taken by satellites is different for each region, the number of the classification results to be integrated is different. Thus, we present a new DLF framework based on confidence values of the classification results. Specifically, we generate multiple extreme learning machines with kernel classifiers to obtain their classification results. Moreover, we monitor the classification results as confidence values and select the same number of the classification results with high confidence for each region. Finally, these selected results can be integrated by using a DLF based on DELM, which is a multilayered ELM. This integration framework is the biggest contribution of our method. Experimental results show the effectiveness of the DLF based on DELM.
机译:本文提出了一种基于深度极限学习机(DELM)的基于决策水平融合(DLF)的火星沙尘暴自动检测方法。由于火星图像是在多波段中拍摄的,因此需要通过合并多个分类结果来输出最终分类结果的DLF技术。另外,由于卫星拍摄的火星图像的数量对于每个区域是不同的,因此要积分的分类结果的数量是不同的。因此,我们基于分类结果的置信度提出了一个新的DLF框架。具体来说,我们使用内核分类器生成了多个极限学习机,以获得它们的分类结果。此外,我们将分类结果作为置信度值进行监视,并为每个区域选择具有相同置信度的高置信度分类结果。最后,可以使用基于DELM的DLF(多层ELM)来集成这些选择的结果。这个集成框架是我们方法的最大贡献。实验结果证明了基于DELM的DLF的有效性。

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