Publication | Closed Access
Phoneme boundary estimation using bidirectional recurrent neural networks and its applications
17
Citations
15
References
1999
Year
Segment BoundariesEngineeringMachine LearningData SciencePhoneme Boundary EstimationPattern RecognitionComputational ComplexitySpeech ProcessingSegment LatticesComputer ScienceSpeech InputSpoken Language ProcessingVoice RecognitionDistant Speech RecognitionRecurrent Neural NetworkSpeech Recognition
This paper describes a phoneme boundary estimation method based on bidirectional recurrent neural networks (BRNNs). Experimental results showed that the proposed method could estimate segment boundaries significantly better than an HMM or a multilayer perceptron-based method. Furthermore, we incorporated the BRNN-based segment boundary estimator into the HMM-based and segment model-based recognition systems. As a result, we confirmed that (1) BRNN outputs were effective for improving the recognition rate and reducing computational time in an HMM-based recognition system and (2) segment lattices obtained by the proposed methods dramatically reduce the computational complexity of segment model-based recognition. © 1999 Scripta Technica, Syst Comp Jpn, 30(4): 20–30, 1999
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