集成说话人和说话环境建模中在线映射参数的MAP估计

Yu Tsao, Shigeki Matsuda, Satoshi Nakamura, Chin-Hui Lee
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引用次数: 3

摘要

近年来,为了提高恶劣条件下的自动语音识别性能,提出了一种集成说话人和说话环境建模(ESSEM)框架。在ESSEM的在线阶段,利用映射函数将离线阶段准备好的环境结构转换为目标测试环境的声学模型集。在原始的ESSEM框架中,映射函数参数是基于最大似然(ML)准则估计的。在本研究中,我们建议使用最大后验(MAP)准则来计算映射函数,以避免可能出现的过度拟合问题,从而降低环境表征的准确性。对于MAP估计,本文还研究了两种类型的先验密度,即聚类先验和分层先验。在使用两种先验密度的Aurora-2任务上,基于map的ESSEM比基于ml的ESSEM性能更好,特别是在低信噪比条件下。与我们的最佳基线结果相比,在三个测试集的信噪比为0dB至20dB时,基于map的ESSEM平均降低了14.97%(5.41%至4.60%)的单词错误率。
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MAP estimation of online mapping parameters in ensemble speaker and speaking environment modeling
Recently, an ensemble speaker and speaking environment modeling (ESSEM) framework was proposed to enhance automatic speech recognition performance under adverse conditions. In the online phase of ESSEM, the prepared environment structure in the offline stage is transformed to a set of acoustic models for the target testing environment by using a mapping function. In the original ESSEM framework, the mapping function parameters are estimated based on a maximum likelihood (ML) criterion. In this study, we propose to use a maximum a posteriori (MAP) criterion to calculate the mapping function to avoid a possible over-fitting problem that can degrade the accuracy of environment characterization. For the MAP estimation, we also study two types of prior densities, namely, clustered prior and hierarchical prior, in this paper. On the Aurora-2 task using either type of prior densities, MAP-based ESSEM can achieve better performance than ML-based ESSEM, especially under low SNR conditions. When comparing to our best baseline results, the MAP-based ESSEM achieves a 14.97% (5.41% to 4.60%) word error rate reduction in average at a signal to noise ratio of 0dB to 20dB over the three testing sets.
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