自动语音识别的大距特征自适应

Chih-Chieh Cheng, Fei Sha, L. Saul
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引用次数: 4

摘要

我们考虑了如何优化隐藏马尔可夫模型(hmm)用于自动语音识别(ASR)的声学特征。我们研究了一种错误驱动的算法,该算法区分地重新加权声学特征,以便在很大程度上分离正确和错误转录的对数可能性。该算法通过使HMM参数适应前端计算的重加权特征,同时对后端HMM参数进行优化。使用在线方法,我们在每个训练话语解码后增量更新特征权重和模型参数。为了减轻来自单个训练话语的强烈偏差梯度,我们并行训练了几个不同的识别器,同时将特征转换捆绑在它们的前端。我们表明,这种跨不同识别器的参数绑定导致更稳定的更新和更少的识别错误。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-margin feature adaptation for automatic speech recognition
We consider how to optimize the acoustic features used by hidden Markov models (HMMs) for automatic speech recognition (ASR). We investigate a mistake-driven algorithm that discriminatively reweights the acoustic features in order to separate the log-likelihoods of correct and incorrect transcriptions by a large margin. The algorithm simultaneously optimizes the HMM parameters in the back end by adapting them to the reweighted features computed by the front end. Using an online approach, we incrementally update feature weights and model parameters after the decoding of each training utterance. To mitigate the strongly biased gradients from individual training utterances, we train several different recognizers in parallel while tying the feature transformations in their front ends. We show that this parameter-tying across different recognizers leads to more stable updates and generally fewer recognition errors.
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