INVESTIGADORES
FERRER Luciana
congresos y reuniones científicas
Título:
A transfer learning based approach for pronunciation scoring
Autor/es:
MARCELO SANCINETTI; JAZMIN VIDAL; CYNTIA BONOMI; LUCIANA FERRER
Reunión:
Congreso; ICASSP 2022; 2022
Institución organizadora:
IEEE
Resumen:
Phone-level pronunciation scoring is a  challenging task, with performance far from that of human annotators. Standard systems generate a score for each phone in a phrase using models trained for automatic speech recognition (ASR) with native data only. Better performance has been shown when using systems that are trained specifically for the task using  non-native data. Yet, such systems face the challenge that datasets labelled for this task are scarce and usually small. In this paper, we present a transfer learning-based approach that leverages a model trained for ASR, adapting it for the task of pronunciation scoring. We analyze the effect of several  design choices and compare the performance with a state-of-the-art goodness of pronunciation (GOP) system. Our final system is 20% better than the GOP system on EpaDB, a database for pronunciation scoring research, for a cost function that prioritizes low rates of unnecessary corrections.