深度MLP架构对资源不足语音识别中不同声学建模技术的影响

David Imseng, P. Motlícek, Philip N. Garner, H. Bourlard
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引用次数: 28

摘要

基于后验的声学建模技术,如基于Kullback-Leibler散度的HMM (KL-HMM)和Tandem,能够通过多层感知器(MLP)估计的后验特征来利用语言外数据。在本文中,我们研究了在资源不足的语音识别背景下,当标准的三层MLP被更深的五层MLP取代时,基于后验的方法的性能。对于Tandem、KL-HMM以及直接使用后验估计作为发射概率的混合HMM/MLP系统,更深层次的MLP架构产生了类似的15%(相对)增益。表现最好的系统是基于深度MLP的双语KL-HMM,它在南非荷兰语和荷兰语数据上进行了联合训练,比使用相同双语MLP的混合系统性能好13%,比仅在南非荷兰语数据上训练的子空间高斯混合系统性能好26%。
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Impact of deep MLP architecture on different acoustic modeling techniques for under-resourced speech recognition
Posterior based acoustic modeling techniques such as Kullback-Leibler divergence based HMM (KL-HMM) and Tandem are able to exploit out-of-language data through posterior features, estimated by a Multi-Layer Perceptron (MLP). In this paper, we investigate the performance of posterior based approaches in the context of under-resourced speech recognition when a standard three-layer MLP is replaced by a deeper five-layer MLP. The deeper MLP architecture yields similar gains of about 15% (relative) for Tandem, KL-HMM as well as for a hybrid HMM/MLP system that directly uses the posterior estimates as emission probabilities. The best performing system, a bilingual KL-HMM based on a deep MLP, jointly trained on Afrikaans and Dutch data, performs 13% better than a hybrid system using the same bilingual MLP and 26% better than a subspace Gaussian mixture system only trained on Afrikaans data.
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