首页> 外文会议>IEEE International Conference on Computational Science and Engineering;IEEE/IFIP International Conference on Embedded and Ubiquitous Computing >Distributed Extreme Learning Machine with Kernels Based on Mapreduce for Spectral-Spatial Classification of Hyperspectral Image
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Distributed Extreme Learning Machine with Kernels Based on Mapreduce for Spectral-Spatial Classification of Hyperspectral Image

机译:基于Mapreduce的带核分布式极限学习机用于高光谱图像的光谱空间分类

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ELM with kernels and MapReduce have an unparalleled advantage of other similar technologies, which attract widely attention in machine learning and distributed data processing communities respectively. In this paper, we combine the advantage of ELM with kernels and MapReduce, and propose a Distributed Extreme Learning Machine with kernels based on MapReduce framework (DK-ELMM),which makes full use of the parallel computing ability of MapReduce framework and realizes efficient learning of large-scale training data. In particular, we present a spectral-spatial DELMM-based classifier for hyperspectral remote sensing images that integrates the information provided by extended morphological profiles. The proposed spectral-spatial classifier allows different weights for both (spatial and spectral) features outperforming other ELM-based classifiers in terms of accuracy for land cover applications. The accuracy classification results are also better than those obtained by equivalent spectral-spatial SVM-based classifiers.
机译:具有内核和MapReduce的ELM具有其他类似技术的无与伦比的优势,分别在机器学习和分布式数据处理社区中引起了广泛的关注。在本文中,我们结合了ELM与内核以及MapReduce的优势,提出了一种基于MapReduce框架(DK-ELMM)的带有内核的分布式极限学习机,它充分利用了MapReduce框架的并行计算能力,实现了高效的学习。大规模训练数据。特别是,我们提出了一种基于光谱空间DELMM的高光谱遥感影像分类器,该分类器整合了扩展形态学轮廓提供的信息。拟议的光谱空间分类器在土地覆盖应用的准确性方面,可以优于(基于空间和光谱的)特征权重,胜过其他基于ELM的分类器。精度分类结果也优于通过等效的基于频谱空间SVM的分类器获得的结果。

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