SOTAVerified

Development of a TV Broadcasts Speech Recognition System for Qatari Arabic

2014-05-01LREC 2014Unverified0· sign in to hype

Mohamed Elmahdy, Mark Hasegawa-Johnson, Eiman Mustafawi

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

A major problem with dialectal Arabic speech recognition is due to the sparsity of speech resources. In this paper, a transfer learning framework is proposed to jointly use a large amount of Modern Standard Arabic (MSA) data and little amount of dialectal Arabic data to improve acoustic and language modeling. The Qatari Arabic (QA) dialect has been chosen as a typical example for an under-resourced Arabic dialect. A wide-band speech corpus has been collected and transcribed from several Qatari TV series and talk-show programs. A large vocabulary speech recognition baseline system was built using the QA corpus. The proposed MSA-based transfer learning technique was performed by applying orthographic normalization, phone mapping, data pooling, acoustic model adaptation, and system combination. The proposed approach can achieve more than 28\% relative reduction in WER.

Tasks

Reproductions