Title :
Improving data selection for low-resource STT and KWS
Author :
Thiago Fraga-Silva;Antoine Laurent;Jean-Luc Gauvain;Lori Lamel;Viet-Bac Le;Abdel Messaoudi
Author_Institution :
Vocapia Research, 28 rue Jean Rostand, 91400 Orsay, France
Abstract :
This paper extends recent research on training data selection for speech transcription and keyword spotting system development. Selection techniques were explored in the context of the IARPA-Babel Active Learning (AL) task for 6 languages. Different selection criteria were considered with the goal of improving over a system built using a pre-defined 3-hour training data set. Four variants of the entropy-based criterion were explored: words, triphones, phones as well as the use of HMM-states previously introduced in [4]. The influence of the number of HMM-states was assessed as well as whether automatic or manual reference transcripts were used. The combination of selection criteria was investigated, and a novel multi-stage selection method proposed. This method was also assessed using larger data sets than were permitted in the Babel AL task. Results are reported for the 6 languages. The multi-stage selection was also applied to the surprise language (Swahili) in the NIST OpenKWS 2015 evaluation.
Keywords :
"Speech","Hidden Markov models","Acoustics","Entropy","Training","Decoding","Training data"
Conference_Titel :
Automatic Speech Recognition and Understanding (ASRU), 2015 IEEE Workshop on
DOI :
10.1109/ASRU.2015.7404788