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End-to-End Speech Translation for Code Switched Speech

Authors :
Weller, Orion
Sperber, Matthias
Pires, Telmo
Setiawan, Hendra
Gollan, Christian
Telaar, Dominic
Paulik, Matthias
Publication Year :
2022

Abstract

Code switching (CS) refers to the phenomenon of interchangeably using words and phrases from different languages. CS can pose significant accuracy challenges to NLP, due to the often monolingual nature of the underlying systems. In this work, we focus on CS in the context of English/Spanish conversations for the task of speech translation (ST), generating and evaluating both transcript and translation. To evaluate model performance on this task, we create a novel ST corpus derived from existing public data sets. We explore various ST architectures across two dimensions: cascaded (transcribe then translate) vs end-to-end (jointly transcribe and translate) and unidirectional (source -> target) vs bidirectional (source <-> target). We show that our ST architectures, and especially our bidirectional end-to-end architecture, perform well on CS speech, even when no CS training data is used.<br />Comment: Accepted to Findings of ACL 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2204.05076
Document Type :
Working Paper