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Band Selection for Hyperspectral Image Classification Using Extreme Learning Machine

机译:基于极限学习机的高光谱图像分类波段选择

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Extreme learning machine (ELM) is a feedforward neural network with one hidden layer, which is similar to a multilayer perceptron (MLP). To reduce the complexity in the training process of MLP using the traditional backpropagation algorithm, the weights in ELM between input and hidden layers are random variables. The output layer in the ELM is linear, as in a radial basis function neural network (RBFNN), so the output weights can be easily estimated with a least squares solution. It has been demonstrated in our previous work that the computational cost of ELM is much lower than the standard support vector machine (SVM), and a kernel version of ELM can offer comparable performance as SVM. In our previous work, we also investigate the impact of the number of hidden neurons to the performance of ELM. Basically, more hidden neurons are needed if the number of training samples and data dimensionality are large, which results in a very large matrix inversion problem. To avoid handling such a large matrix, we propose to conduct band selection to reduce data dimensionality (i.e., the number of input neurons), thereby reducing network complexity. Experimental results show that ELM using selected bands can yield similar or even better classification accuracy than using all the original bands.
机译:极限学习机(ELM)是具有一个隐藏层的前馈神经网络,类似于多层感知器(MLP)。为了减少使用传统的反向传播算法在MLP训练过程中的复杂性,输入层和隐藏层之间的ELM权重是随机变量。 ELM中的输出层是线性的,就像在径向基函数神经网络(RBFNN)中一样,因此可以使用最小二乘解轻松估算输出权重。在我们以前的工作中已经证明,ELM的计算成本远低于标准支持向量机(SVM),并且ELM的内核版本可以提供与SVM相当的性能。在我们以前的工作中,我们还研究了隐藏神经元数量对ELM性能的影响。基本上,如果训练样本的数量和数据维数很大,则需要更多的隐藏神经元,这将导致非常大的矩阵求逆问题。为了避免处理如此大的矩阵,我们建议进行频带选择以降低数据维数(即输入神经元的数量),从而降低网络复杂度。实验结果表明,与使用所有原始频段相比,使用选定频段的ELM可以产生相似甚至更好的分类精度。

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