采用耳蜗模型作为语音识别系统前端处理器的双层Kohonen神经网络

S. Lennon, E. Ambikairajah
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引用次数: 1

摘要

提出了一种基于Kohonen算法的双层神经网络语音识别系统。该系统采用耳蜗模型作为前端处理器。基底膜由128个数字滤波器级联表示,其中90个滤波器落在250 Hz至4 kHz的语音带宽范围内。这90个滤波器的输出每16毫秒作为Kohonen网第一层的输入向量。第二层的输入由一个连接的向量组成,该向量由连续兴奋的神经元的轨迹创建,在第一层上发射。使用Sammon的非线性映射算法作为分析工具来衡量识别过程中不同部分的有效性。该系统首先进行了仿真,随后在Inmos转发器上实现
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A two-layer Kohonen neural network using a cochlear model as a front-end processor for a speech recognition system
The authors describe a two-layer neural network speech recognition system based on Kohonen's algorithm. A cochlear model is used as a front-end processor for the system. The basilar membrane is represented by a cascade of 128 digital filters, of which 90 filters fall within the speech bandwidth of 250 Hz to 4 kHz. The outputs of these 90 filters are presented as the input vector to the first layer of the Kohonen net every 16 ms. The input to the second layer consists of a concatenated vector, created from a trajectory of successively excited neurons, firing on the first layer. Sammon's nonlinear mapping algorithm was used as an analysis tool for measuring the effectiveness of different parts of the recognition process. The system was first simulated and later implemented on Inmos transputers.<>
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