Automatic Speech Recognition in L2 Learning: A Review Based on PRISMA Methodology

Author:

Farrús Mireia12ORCID

Affiliation:

1. Centre de Llenguatge i Computació (CLiC), Universitat de Barcelona, 08007 Barcelona, Spain

2. Institut de Recerca en Sistemes Complexos (UBICS), Universitat de Barcelona, 08028 Barcelona, Spain

Abstract

The language learning field is not exempt from benefiting from the most recent techniques that have revolutionised the field of speech technologies. L2 learning, especially when it comes to learning some of the most spoken languages in the world, is increasingly including more and more automated methods to assess linguistics aspects and provide feedback to learners, especially on pronunciation issues. On the one hand, only a few of these systems integrate automatic speech recognition as a helping tool for pronunciation assessment. On the other hand, most of the computer-assisted language pronunciation tools focus on the segmental level of the language, providing feedback on specific phonetic pronunciation, and disregarding the suprasegmental features based on intonation, among others. The current review, based on the PRISMA methodology for systematic reviews, overviews the existing tools for L2 learning, classifying them in terms of the assessment level, (grammatical, lexical, phonetic, and prosodic), and trying the explain why so few tools are nowadays dedicated to evaluate the intonational aspect. Moreover, the review also addresses the existing commercial systems, as well as the existing gap between those tools and the research developed in this area. Finally, the manuscript finishes with a discussion of the main findings and foresees future lines of research.

Publisher

MDPI AG

Subject

Linguistics and Language,Language and Linguistics

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