adaboost音素分类器在孤立词识别中的N-Best评分

Hiroshi Fujimura, Masanobu Nakamura, Yusuke Shinohara, T. Masuko
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引用次数: 2

摘要

本文提出了一种利用生成和判别模型进行语音识别的新技术。在过去的十年中,基于判别模型的语音识别受到了广泛的关注。特别是,使用基于生成模型特征的判别词分类器的评分框架在小词汇量任务中被证明是有效的。然而,将该框架直接应用于大词汇量任务是困难的,因为分类器的数量与单词对的数量成比例地增加。我们将这个框架扩展到在大词汇量任务中利用生成和判别模型。在第一轮中获得的n个最佳假设使用AdaBoost音素分类器进行重新排序,其中基于生成模型的特征,特别是似然差异特征,被用于分类器。特别注意使用上下文相关的隐马尔可夫模型(cdhmm)作为生成模型,因为大多数最先进的语音识别器使用cdhmm。实验结果表明,在100万个词汇的孤立词识别任务中,该方法相对减少了32.68%的词错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
N-Best rescoring by adaboost phoneme classifiers for isolated word recognition
This paper proposes a novel technique to exploit generative and discriminative models for speech recognition. Speech recognition using discriminative models has attracted much attention in the past decade. In particular, a rescoring framework using discriminative word classifiers with generative-model-based features was shown to be effective in small-vocabulary tasks. However, a straightforward application of the framework to large-vocabulary tasks is difficult because the number of classifiers increases in proportion to the number of word pairs. We extend this framework to exploit generative and discriminative models in large-vocabulary tasks. N-best hypotheses obtained in the first pass are rescored using AdaBoost phoneme classifiers, where generative-model-based features, i.e. difference-of-likelihood features in particular, are used for the classifiers. Special care is taken to use context-dependent hidden Markov models (CDHMMs) as generative models, since most of the state-of-the-art speech recognizers use CDHMMs. Experimental results show that the proposed method reduces word errors by 32.68% relatively in a one-million-vocabulary isolated word recognition task.
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