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Local Block Multilayer Sparse Extreme Learning Machine for Effective Feature Extraction and Classification of Hyperspectral Images

机译:局部块多层稀疏极限学习机用于高光谱图像的有效特征提取和分类

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摘要

Although extreme learning machines (ELM) have been successfully applied for the classification of hyperspectral images (HSIs), they still suffer from three main drawbacks. These include: 1) ineffective feature extraction (FE) in HSIs due to a single hidden layer neuron network used; 2) ill-posed problems caused by the random input weights and biases; and 3) lack of spatial information for HSIs classification. To tackle the first problem, we construct a multilayer ELM for effective FE from HSIs. The sparse representation is adopted with the multilayer ELM to tackle the ill-posed problem of ELM, which can be solved by the alternative direction method of multipliers. This has resulted in the proposed multilayer sparse ELM (MSELM) model. Considering that the neighboring pixels are more likely from the same class, a local block extension is introduced for MSELM to extract the local spatial information, leading to the local block MSELM (LBMSELM). The loopy belief propagation is also applied to the proposed MSELM and LBMSELM approaches to further utilize the rich spectral and spatial information for improving the classification. Experimental results show that the proposed methods have outperformed the ELM and other state-of-the-art approaches.
机译:尽管极限学习机(ELM)已成功应用于高光谱图像(HSI)的分类,但它们仍存在三个主要缺点。其中包括:1)由于使用了单个隐藏层神经元网络,HSI中的特征提取(FE)无效; 2)随机输入权重和偏差引起的不适定问题; 3)缺乏用于HSI分类的空间信息。为了解决第一个问题,我们构建了多层ELM,以实现来自HSI的有效有限元分析。多层ELM采用稀疏表示来解决ELM的不适定问题,可以通过乘数的交替方向方法来解决。这导致了提出的多层稀疏ELM(MSELM)模型。考虑到相邻像素更有可能来自同一类别,因此为MSELM引入了局部块扩展以提取局部空间信息,从而导致了局部块MSELM(LBMSELM)。循环置信传播也应用于所提出的MSELM和LBMSELM方法,以进一步利用丰富的频谱和空间信息来改善分类。实验结果表明,所提出的方法优于ELM和其他最新方法。

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