DocumentCode :
3744904
Title :
The 2015 sheffield system for transcription of Multi-Genre Broadcast media
Author :
Oscar Saz;Mortaza Doulaty;Salil Deena;Rosanna Milner;Raymond W. M. Ng;Madina Hasan;Yulan Liu;Thomas Hain
Author_Institution :
Speech and Hearing Group, Department of Computer Science, University of Sheffield, UK
fYear :
2015
Firstpage :
624
Lastpage :
631
Abstract :
We describe the University of Sheffield system for participation in the 2015 Multi-Genre Broadcast (MGB) challenge task of transcribing multi-genre broadcast shows. Transcription was one of four tasks proposed in the MGB challenge, with the aim of advancing the state of the art of automatic speech recognition, speaker diarisation and automatic alignment of subtitles for broadcast media. Four topics are investigated in this work: Data selection techniques for training with unreliable data, automatic speech segmentation of broadcast media shows, acoustic modelling and adaptation in highly variable environments, and language modelling of multi-genre shows. The final system operates in multiple passes, using an initial unadapted decoding stage to refine segmentation, followed by three adapted passes: a hybrid DNN pass with input features normalised by speaker-based cepstral normalisation, another hybrid stage with input features normalised by speaker feature-MLLR transformations, and finally a bottleneck-based tandem stage with noise and speaker factorisation. The combination of these three system outputs provides a final error rate of 27.5% on the official development set, consisting of 47 multi-genre shows.
Keywords :
"Training","Speech","Data models","Media","Acoustics","Training data","Speech processing"
Publisher :
ieee
Conference_Titel :
Automatic Speech Recognition and Understanding (ASRU), 2015 IEEE Workshop on
Type :
conf
DOI :
10.1109/ASRU.2015.7404854
Filename :
7404854
Link To Document :
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