IVN声学模型训练中基于i向量的声学嗅探判别特征提取研究

Yu Zhang, Jian Xu, Zhijie Yan, Qiang Huo
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引用次数: 0

摘要

最近,我们提出了一种基于i向量的声学嗅探方法,用于大词汇量连续语音识别(LVCSR)中基于不相关可变性归一化的声学模型训练。在Switchboard- 1对话式电话语音转录任务上的实验结果证实了该方法的有效性。本文研究了几种i向量空间的判别特征提取方法,以提高识别精度和运行效率。在更大规模的LVCSR任务上,用2000小时的训练数据报道了新的实验结果。
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A study of discriminative feature extraction for i-vector based acoustic sniffing in IVN acoustic model training
Recently, we proposed an i-vector approach to acoustic sniffing for irrelevant variability normalization based acoustic model training in large vocabulary continuous speech recognition (LVCSR). Its effectiveness has been confirmed by experimental results on Switchboard- 1 conversational telephone speech transcription task. In this paper, we study several discriminative feature extraction approaches in i-vector space to improve both recognition accuracy and run-time efficiency. New experimental results are reported on a much larger scale LVCSR task with about 2000 hours training data.
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