首页> 外文会议>International Conference on Spoken Language Processing; 20041004-08; Jeju(KR) >Modeling Phones Coarticulation Effects in a Neural Network Based Speech Recognition System
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Modeling Phones Coarticulation Effects in a Neural Network Based Speech Recognition System

机译:基于神经网络的语音识别系统中的电话协同发音效果建模

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In this paper we have designed and implemented speech recognition models in phone recognition level to model phones coarticulation effects. We have inspired these models from two human cognitive systems: neocortex and hippocampus. In the model inspired from the neocortex the first step is a primary and coarse classification of inputs, then model adapts itself to contexts extracted from these primary recognitions and we classify inputs again according to their extracted context. In the model inspired form the hippocampus, previous contexts of inputs are used for better recognition, and in this way we use effects of previous phones of each input for better classification. Then we have designed and implemented a model with a structure of combination of two preceding models. Our models implementation showed 3.77% increase in accuracy of Persian phone recognition compared to a simple model that does not consider coarticulation effects.
机译:在本文中,我们已经设计并实现了电话识别级别的语音识别模型,以模拟电话的协同发音效果。我们从两个人类认知系统:新皮层和海马体中启发了这些模型。在新皮层启发的模型中,第一步是对输入进行主要和粗略的分类,然后模型使自身适应从这些主要识别中提取的上下文,然后根据提取的上下文再次对输入进行分类。在海马启发式的模型中,输入的先前上下文用于更好地识别,并且通过这种方式,我们使用每个输入的先前手机的效果来进行更好的分类。然后,我们设计并实现了一个模型,该模型具有两个先前模型的组合结构。与不考虑协同发音效果的简单模型相比,我们的模型实现显示波斯电话识别的准确性提高了3.77%。

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