上下文相关的深度神经网络音频索引的现实生活数据

Gang Li, Huifeng Zhu, G. Cheng, Kit Thambiratnam, Behrooz Chitsaz, Dong Yu, F. Seide
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引用次数: 10

摘要

我们将上下文相关的深度神经网络hmm或cd - dnn - hmm应用于跨各种来源的音频数据索引的现实问题。最近,我们已经证明,在与扬声器无关的电话转录的交换机基准测试中,与判别训练的高斯混合hmm相比,具有7个隐藏层的cd - dnn - hmm可将单词错误率降低多达三分之一,如果GMM-HMM还使用fMPE特征,则可降低四分之一。本文将基于CD-DNN-HMM的识别应用到音频索引的实际应用中。我们发现,对于我们最好的独立于演讲者的CD-DNN-HMM,在2000h的数据上训练了32k senones,四分之一的减少确实延续到非同质的现场数据(视频播客和演讲)。与扬声器自适应GMM系统相比,在非常相似的端到端运行时,相对改进为18%。在系统构建中,我们发现dnn比GMM-HMM受益于更多的senones;即使在我们生成丰富网格的宽波束环境中,DNN可能性评估也是一个相当大的运行时因素:将模型大小减少60%,运行时减少三分之一,相对WER损失为5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-dependent Deep Neural Networks for audio indexing of real-life data
We apply Context-Dependent Deep-Neural-Network HMMs, or CD-DNN-HMMs, to the real-life problem of audio indexing of data across various sources. Recently, we had shown that on the Switchboard benchmark on speaker-independent transcription of phone calls, CD-DNN-HMMs with 7 hidden layers reduce the word error rate by as much as one-third, compared to discriminatively trained Gaussian-mixture HMMs, and by one-fourth if the GMM-HMM also uses fMPE features. This paper takes CD-DNN-HMM based recognition into a real-life deployment for audio indexing. We find that for our best speaker-independent CD-DNN-HMM, with 32k senones trained on 2000h of data, the one-fourth reduction does carry over to inhomogeneous field data (video podcasts and talks). Compared to a speaker-adaptive GMM system, the relative improvement is 18%, at very similar end-to-end runtime. In system building, we find that DNNs can benefit from a larger number of senones than the GMM-HMM; and that DNN likelihood evaluation is a sizeable runtime factor even in our wide-beam context of generating rich lattices: Cutting the model size by 60% reduces runtime by one-third at a 5% relative WER loss.
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