A constrained neural network with complex activation function: application to time-frequency analysis

M. Ibnkahla, S. Puechmorel, F. Castanie
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引用次数: 1

Abstract

Many signal processing problems need to be solved in an adaptive way under some constraints. The paper introduces a constrained complex-valued neural network (CCNN) model. It is composed of two sub networks: a master which gives the main energy function (the error power between the master's output and a desired output), and a slave which gives a secondary energy function (related to the constraints imposed by the problem). The sum of these energy functions gives the cost function to be minimized by the CCNN. An extension of the classical back propagation algorithm to the complex plane, under some inequality constraints, is used for the training process. This model finds a natural application in the time-frequency analysis as it gives direct access to the time-frequency signature.<>
复激活函数约束神经网络在时频分析中的应用
许多信号处理问题需要在一定的约束条件下以自适应的方式解决。介绍了一种约束复值神经网络(CCNN)模型。它由两个子网络组成:一个提供主能量函数(主输出与期望输出之间的误差功率)的主网络和一个提供辅助能量函数(与问题所施加的约束相关)的从网络。这些能量函数的和给出了CCNN要最小化的代价函数。在一些不等式约束下,将经典的反向传播算法扩展到复平面,用于训练过程。这个模型在时频分析中找到了一个自然的应用,因为它可以直接访问时频特征
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