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Ellipsoidal Function Modulated ART Neural Networks for Pattern Recognition

机译:椭球函数调制的ART神经网络用于模式识别

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In this paper, we propose a neural network that adopts the structure of the instaroutstar pair of the ART neural networks, uses the equivalent Gaussian functions of the training pattern clusters to substitute the weight vectors of the in star blocks, and two receptive fields of the covariance matrices of the equivalent Gaussian functions of the training pattern clusters to form the hyper-ellipsoidal contours to substitute the weight vectors of the out star blocks. And we call this the Ellipsoidal Function Modulated ART (EFM-ART) neural network. The proposed neural network adopts the fundamental structure of the ART neural networks but omits many other genius functions of the ART neural networks. For observation and feasibility evaluation, the vectors of the intensity of the wavelet packet parameters of sounds are adopted as the vectors of feature parameters. Simulation results can highly support the feasibility of this EFM-ART for pattern recognition and the capability in handling the problem of stability and plasticity dilemma as done by many other ART neural networks.
机译:在本文中,我们提出了一种神经网络,该神经网络采用ART神经网络的instaroutstar对的结构,使用训练模式簇的等效高斯函数替代星形块中的权重向量,并使用两个接收域训练模式簇的等效高斯函数的协方差矩阵形成超椭圆形轮廓,以替代星外块的权重向量。我们称其为椭球函数调制ART(EFM-ART)神经网络。所提出的神经网络采用了ART神经网络的基本结构,但省略了ART神经网络的许多其他功能。为了观察和可行性评估,采用声音的小波包参数强度的向量作为特征参数的向量。仿真结果可以高度支持该EFM-ART用于模式识别的可行性,以及像许多其他ART神经网络一样处理稳定性和可塑性困境的能力。

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