斯洛伐克LVCSR的高级语言建模技术评估

D. Zlacký, J. Staš, J. Juhár, A. Cizmár
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摘要

本文比较了几种用于斯洛伐克语连续语音识别的高级语言建模技术。分析了五种不同的语言建模技术,考虑了它们的模型大小和复杂度、语音识别性能以及它们在斯洛伐克语语音识别实际条件下使用的复杂性。初步实验结果表明,Witten-Bell back-off算法平滑的方便n-gram模型在模型困惑度和识别精度方面具有最佳性能。其他建模技术包括最大熵、幂律贴现、分层Pitman-Yor过程或变阶Kneser-Ney平滑模型,只有在模型困惑时才能取得更好的结果。然而,增加的计算需求和较差的识别性能限制了它们在斯洛伐克语的实际语音识别任务中的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of advanced language modeling techniques for the Slovak LVCSR
In this paper we compare several advanced language modeling techniques for the Slovak continuous speech recognition. Five different language modeling techniques were analyzed, considering their model size and perplexity, speech recognition performance and complexity of their usage in real conditions of speech recognition in Slovak. The preliminary experimental results show that the convenient n-gram models smoothed by the Witten-Bell back-off algorithm produce the best performance according to the model perplexity and recognition accuracy. Other modeling techniques including Maximum Entropy, Power Law Discounting, Hierarchical Pitman-Yor process, or Variable-order Kneser-Ney smoothed models achieved better results only in the model perplexity. However, the increased computational requirements and worse recognition performance limit their usage in the real speech recognition tasks in Slovak.
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