基于广义语音类的声学空间划分及其声学建模

Xugang Lu, Yu Tsao, Shigeki Matsuda, Chiori Hori, H. Kashioka
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引用次数: 0

摘要

集成声学建模可以对引起声空间变异性的不同因素进行建模,并提供不同的组合,以提高自动语音识别的性能。其中一个主要问题是如何将训练数据集划分为几个子集,基于这些子集训练集成模型。在本研究中,我们重点研究了中文大词汇量连续语音识别(LVCSR)中由性别和口音引起的声学变异的合奏声学模型。考虑到性别和重音信息可能编码在少数特定语音类的局部声学实现中,而不是在全局声学分布中,我们提出了一种基于说话人广义语音类(BPC)建模的声学空间划分方法,用于整体声学建模。利用基于BPC的说话人表示主成分分析(PCA),在低维说话人因子空间中设计了涉及性别和口音信息的两级分层数据分区。集合声学模型在两个级别的分割数据集上进行训练。语音识别结果表明,使用基于第一级和第二级分区训练的声学模型,字符错误率分别相对提高了9.73%和32.29%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acoustic space partition based on broad phonetic class for ensemble acoustic modeling
Ensemble acoustic modeling can be used to model different factors that cause variability of acoustic space, and provide different combination to improve the performance of automatic speech recognition (ASR). One of the main concerns is how to partition the training data set to several subsets based on which ensemble models are trained. In this study, we focus on ensemble acoustic modeling concerned with acoustic variability caused by gender and accent for Chinese large vocabulary continuous speech recognition (LVCSR). Considering that gender and accent information may be encoded in local acoustic realizations of a few specific phonetic classes rather than in a global acoustic distribution, we proposed a acoustic space partition method based on broad phonetic class (BPC) modeling of speaker for ensemble acoustic modeling. With the principal component analysis (PCA) of the BPC based speaker representation, we designed two level hierarchical data partitions in the low dimensional speaker factor space that concerned with gender and accent information. Ensemble acoustic models were trained on the partitioned data sets on both levels. Speech recognition results showed that using acoustic models trained based on the first level and second level partitions got 9.73% and 32.29% relative improvements in character error reduction rate, respectively.
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