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A Multilayer Neural Network for Classification of Frequency Information Dominant Patterns

机译:一种多层神经网络,用于分类频率信息主导模式

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Features of pattern data can be expressed in a more informative feature domain in order to improve the classification performance. This paper proposes a new implementation of the multi-layer feed-forward neural network that can do classification based on the frequency features extracted by the first hidden layer that performs correlational filter operation. The correlational feature extraction layer performs the filtering operation with the Fourier transformed input pattern, which is resulted in complex data form. The correlation filter output is then converted into power spectrum data which is fed into the next layer of the next layer. Updating rule for the parameters of the correlational filter is derived using the back-propagation learning scheme. Experimental studies demonstrated that our feed-forward neural network produces superior performance for the classification problem with the patterns that have frequency information dominant property.
机译:模式数据的功能可以在更具信息丰富的特征域中表示,以提高分类性能。本文提出了一种新的多层前馈神经网络的新实现,其可以基于由执行相关滤波器操作的第一隐藏层提取的频率特征进行分类。相关特征提取层利用傅里叶变换输入图案执行滤波操作,这导致复杂的数据形式。然后将相关滤波器输出转换为电力谱数据,该数据被馈送到下一层的下一层。使用反向传播学习方案导出相关滤波器参数的更新规则。实验研究表明,我们的前锋神经网络对具有频率信息优势特性的模式产生了卓越的性能。

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