乌兹别克语语音识别系统整体模型的开发

M. Musaev, Ilyos Khujayorov, M. Ochilov
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引用次数: 4

摘要

本文研究了基于端到端模型的乌兹别克语词识别的实现方法。本文还介绍了用于集成模型的神经网络结构的一些理论数据,以及在此基础上进行的初步实验研究的结果。深度递归神经网络,它结合了在深度网络中被证明非常有效的多层表示,以及远程上下文的灵活使用,赋予了rnn能力。当使用合适的正则化方法进行端到端训练时,我们发现深度brnn在我们的数据集上达到了CER=49.1%的测试集误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of integral model of speech recognition system for Uzbek language
In this paper investigates the approach to realization of recognition of Uzbek words on the basis of end-to-end models is considered. Also presented are some theoretical data on the architecture of neural networks used in the integrated model, and the results of preliminary experimental studies conducted on their basis. Deep recurrent neural networks, which combine the multiple levels of representation that have proved so effective in deep networks with the flexible use of long-range context that empowers RNNs. When trained end-to-end with suitable regularization, we find that deep BRNNs achieve a test set error of CER=49.1% on our dataset.
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