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首页> 外文期刊>IEEE Transactions on Speech and Audio Proceessing >Training issues and channel equalization techniques for theconstruction of telephone acoustic models using a high-quality speechcorpus
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Training issues and channel equalization techniques for theconstruction of telephone acoustic models using a high-quality speechcorpus

机译:使用高质量语音语料库构建电话声学模型的培训问题和信道均衡技术

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摘要

We describe an approach for the estimation of acoustic phonetic models that will be used in a hidden Markov model (HMM) recognizer operating over the telephone. We explore two complementary techniques to developing telephone acoustic models. The first technique presents two new channel compensation algorithms. Experimental results on the Wall Street Journal corpus show no significant improvement over sentence-based cepstral-mean removal. The second technique uses an existing “high-quality” speech corpus to train acoustic models that are appropriate for the switchboard credit card task over long-distance telephone lines. Experimental results show that cross-database acoustic training yields performance similar to that of conventional task-dependent acoustic training
机译:我们描述了一种估计声学语音模型的方法,该方法将在通过电话操作的隐马尔可夫模型(HMM)识别器中使用。我们探索两种互补的技术来开发电话声学模型。第一种技术提出了两种新的信道补偿算法。 《华尔街日报》语料库上的实验结果表明,与基于句子的倒谱均值去除相比,没有明显的改善。第二种技术使用现有的“高质量”语音语料库来训练适用于长途电话线上的总机信用卡任务的声学模型。实验结果表明,跨数据库声学训练的性能与常规的依赖于任务的声学训练相似

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