从神经网络到小波网络

O. Ciftcioglu
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引用次数: 13

摘要

利用神经网络进行小波变换被认为是一种多元函数逼近,其中神经网络的结构是多输入多输出的形式。通过这种方法,将分层小波分解转化为一种并行分解。也就是说,网络的输入是一个离散数据块,输出是一个小波变换块,所有的分辨率都是并行计算的。这种方法尤其适用于不适用FFT技术的时变系统和时频方法起重要作用的系统;比如实时系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From neural to wavelet network
Wavelet transform by means of a neural network is considered as a multivariate function approximation where the neural network is structured in a multi-input multi-output form. By means of this, the hierarchical wavelet decomposition is shaped as a parallel decomposition. That is, the input to the network is a block of discrete data and the output is a block of the wavelet transform, all resolution levels being computed in parallel. This approach is especially of concern for time varying systems where FFT techniques are not applicable and systems where the time-frequency approach plays an important role; real time systems for instance.
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