低资源语音识别的深度最大输出网络

Yajie Miao, Florian Metze, Shourabh Rawat
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引用次数: 99

摘要

作为一种前馈结构,最近提出的maxout网络自然地集成了dropout,并在各种计算机视觉数据集上显示出最先进的结果。研究了深度最大输出网络(DMNs)在大词汇量连续语音识别中的应用。我们的重点是DMNs在低资源条件下具有有限转录语音的特殊优势。我们将DMNs扩展到混合和瓶颈特征系统,并探索两种设置的最佳网络结构(maxout层数,池化策略等)。在新发布的Babel语料库上,广泛研究了DMNs在不同数据可用性水平下的行为。实验表明,DMNs对低资源语音识别有显著改善。此外,dmn为其隐藏激活引入了稀疏性,因此可以作为稀疏特征提取器。
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Deep maxout networks for low-resource speech recognition
As a feed-forward architecture, the recently proposed maxout networks integrate dropout naturally and show state-of-the-art results on various computer vision datasets. This paper investigates the application of deep maxout networks (DMNs) to large vocabulary continuous speech recognition (LVCSR) tasks. Our focus is on the particular advantage of DMNs under low-resource conditions with limited transcribed speech. We extend DMNs to hybrid and bottleneck feature systems, and explore optimal network structures (number of maxout layers, pooling strategy, etc) for both setups. On the newly released Babel corpus, behaviors of DMNs are extensively studied under different levels of data availability. Experiments show that DMNs improve low-resource speech recognition significantly. Moreover, DMNs introduce sparsity to their hidden activations and thus can act as sparse feature extractors.
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Learning filter banks within a deep neural network framework Efficient nearly error-less LVCSR decoding based on incremental forward and backward passes Porting concepts from DNNs back to GMMs Discriminative piecewise linear transformation based on deep learning for noise robust automatic speech recognition Acoustic modeling using transform-based phone-cluster adaptive training
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