子词检测器的最小检测误差训练

Alfonso M. Canterla, M. H. Johnsen
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引用次数: 2

摘要

本文介绍了连续语音中子词检测器的优化方法和结果。语音检测器在基于检测的语音识别、发音训练、语音分析、单词识别等领域都很有用。我们提出了一种新的基于最小电话错误框架的子词单元检测器判别训练准则。该标准可以优化f分数或任何其他检测性能指标。将该方法应用于手机探测器中hmm滤波器组和MFCC滤波器组的优化。所得到的滤波器组彼此不同,并反映相应检测类的声学特性。在TIMIT的实验中,优化后的检测器的相对精度比基线提高了31.3%,比之前基于mce的方法提高了18.2%。
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Minimum detection error training of subword detectors
This paper presents methods and results for optimizing subword detectors in continuous speech. Speech detectors are useful within areas like detection-based ASR, pronunciation training, phonetic analysis, word spotting, etc. We propose a new discriminative training criterion for subword unit detectors that is based on the Minimum Phone Error framework. The criterion can optimize the F-score or any other detection performance metric. The method is applied to the optimization of HMMs and MFCC filterbanks in phone detectors. The resulting filterbanks differ from each other and reflect acoustic properties of the corresponding detection classes. For the experiments in TIMIT, the best optimized detectors had a relative accuracy improvement of 31.3% over baseline and 18.2% over our previous MCE-based method.
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