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Improving large vocabulary continuous speech recognition by combining GMM-based and reservoir-based acoustic modeling

机译:通过结合基于Gmm和基于储层的声学建模来改进大词汇量连续语音识别

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摘要

In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, a special type of recurrent neural network. In this paper, different architectures based on Reservoir Computing (RC) for large vocabulary continuous speech recognition are investigated. Besides experiments with HMM hybrids, it is shown that a RC-HMM tandem can achieve the same recognition accuracy as a classical HMM, which is a promising result for such a fairly new paradigm. It is also demonstrated that a state-level combination of the scores of the tandem and the baseline HMM leads to a significant improvement over the baseline. A word error rate reduction of the order of 20% relative is possible.
机译:在较早的工作中,我们证明了使用所谓的“储集器”(一种特殊类型的递归神经网络)可以实现良好的音素识别。本文研究了基于库计算(RC)的用于大词汇量连续语音识别的不同体系结构。除了使用HMM混合体进行的实验之外,还表明RC-HMM串联可以实现与经典HMM相同的识别精度,这对于这种相当新的范例而言是有希望的结果。还证明了串联分数和基线HMM的状态级别组合导致相对于基线的显着改善。相对而言,可能将字错误率降低20%左右。

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