Speech recognition model training method and device, and electronic equipment

The invention discloses a speech recognition model training method and a device, and electronic equipment, and relates to the technical field of machine learning. The speech recognition model trainingmethod comprises the steps of: determining a plurality of differential syllable label sequences from...

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creator YUAN SHENGLONG
description The invention discloses a speech recognition model training method and a device, and electronic equipment, and relates to the technical field of machine learning. The speech recognition model trainingmethod comprises the steps of: determining a plurality of differential syllable label sequences from the second syllable label sequence; determining a target differential syllable label sequence according to the plurality of differential syllable label sequences, the target differential syllable label sequence being a union set of the plurality of differential syllable label sequences; generatinga third syllable label sequence according to the target difference syllable label sequence; and performing speech recognition model training according to the first syllable label sequence and the third syllable label sequence to obtain a mixed speech recognition model. The hybrid speech recognition model can be trained according to the first syllable label sequence and the target difference syllable label sequence, and th
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language chi ; eng
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subjects ACOUSTICS
MUSICAL INSTRUMENTS
PHYSICS
SPEECH ANALYSIS OR SYNTHESIS
SPEECH OR AUDIO CODING OR DECODING
SPEECH OR VOICE PROCESSING
SPEECH RECOGNITION
title Speech recognition model training method and device, and electronic equipment
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