Phoneme recognition: neural networks vs. hidden Markov models vs. hidden Markov models

A. Waibel, Toshiyuki Hanazawa, Geoffrey E. Hinton, K. Shikano, Kevin J. Lang
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引用次数: 175

Abstract

A time-delay neural network (TDNN) for phoneme recognition is discussed. By the use of two hidden layers in addition to an input and output layer it is capable of representing complex nonlinear decision surfaces. Three important properties of the TDNNs have been observed. First, it was able to invent without human interference meaningful linguistic abstractions in time and frequency such as formant tracking and segmentation. Second, it has learned to form alternate representations linking different acoustic events with the same higher level concept. In this fashion it can implement trading relations between lower level acoustic events leading to robust recognition performance despite considerable variability in the input speech. Third, the network is translation-invariant and does not rely on precise alignment or segmentation of the input. The TDNNs performance is compared with the best of hidden Markov models (HMMs) on a speaker-dependent phoneme-recognition task. The TDNN achieved a recognition of 98.5% compared to 93.7% for the HMM, i.e., a fourfold reduction in error.<>
音素识别:神经网络vs.隐马尔科夫模型vs.隐马尔科夫模型
讨论了一种用于音素识别的时滞神经网络(TDNN)。通过使用两个隐藏层加上输入和输出层,它能够表示复杂的非线性决策面。已经观察到tdnn的三个重要性质。首先,它能够在没有人为干扰的情况下,在时间和频率上发明有意义的语言抽象,如峰跟踪和分割。其次,它学会了将不同的声音事件与相同的更高层次的概念联系起来,形成交替的表征。以这种方式,它可以实现较低级别声学事件之间的交易关系,从而在输入语音存在相当大的可变性的情况下实现稳健的识别性能。第三,该网络是平移不变的,不依赖于输入的精确对齐或分割。在依赖于说话人的音素识别任务中,将TDNNs的性能与最佳隐马尔可夫模型(hmm)进行了比较。TDNN的识别率为98.5%,而HMM的识别率为93.7%,即误差降低了四倍。
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