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Implementation of an autoassociative recurrent neural network for speech recognition

机译:用于语音识别的自动关联经常性神经网络的实施

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This paper describes an implementation of a small vocabulary isolated word speech recognition system using a recurrent neural network and some of the extensions required for a large vocabulary forms. The network operates in a self-supervised manner by adjusting an internally generated segmentation of the speech input according to the algorithm proposed by Lee et al. (see IEEE Proceedings of the International Conference ASSP, vol.5, p.3319-22, 1995) and employs the recurrent real-time learning rule described by Williams and Zipser (1989).
机译:本文介绍了使用经常性神经网络的小词汇隔离词语音识别系统的实现,以及大词汇表格所需的一些延伸。通过根据Lee等人提出的算法调整语音输入的内部生成的语音分割,网络以自我监督方式操作。 (参见国际会议ASSP的IEEE程序,Vol.5,P.3319-22,995),并采用威廉姆斯和拉链(1989)描述的经常性实时学习规则。

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