Publication | Closed Access
Uncertainty decoding with SPLICE for noise robust speech recognition
140
Citations
8
References
2002
Year
EngineeringMachine LearningSpeech EnhancementClean Speech FeaturesSpeech RecognitionSpeech CodingData ScienceUncertainty QuantificationPattern RecognitionNoiseRobust Speech RecognitionSplice AlgorithmVoice RecognitionHealth SciencesComputer ScienceDistant Speech RecognitionSignal ProcessingSpeech CommunicationNoise Removal ProcessSpeech ProcessingSpeech Separation
Speech recognition front end noise removal algorithms have. in the past, estimated clean speech features from corrupted speech features. The accuracy of the noise removal process varies from frame to frame, and from dimension to dimension in the feature stream, due in part to the instantaneous SR of the input. In this paper, we show that localized knowledge of the accuracy of the noise removal process can be directly incorporated into the Gaussian evaluation within the decoder, to produce higher recognition accuracies. To prove this concept, we modify the SPLICE algorithm to output uncertainty information, and show that the combination of SPLICE with uncertainty decoding can remove 74.2% of the errors in a subset of the Aurora2 task.
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