SIGTYP 2021 Shared Task: Robust Spoken Language Identification (2106.03895v1)
Abstract: While language identification is a fundamental speech and language processing task, for many languages and language families it remains a challenging task. For many low-resource and endangered languages this is in part due to resource availability: where larger datasets exist, they may be single-speaker or have different domains than desired application scenarios, demanding a need for domain and speaker-invariant language identification systems. This year's shared task on robust spoken language identification sought to investigate just this scenario: systems were to be trained on largely single-speaker speech from one domain, but evaluated on data in other domains recorded from speakers under different recording circumstances, mimicking realistic low-resource scenarios. We see that domain and speaker mismatch proves very challenging for current methods which can perform above 95% accuracy in-domain, which domain adaptation can address to some degree, but that these conditions merit further investigation to make spoken language identification accessible in many scenarios.
- Elizabeth Salesky (27 papers)
- Badr M. Abdullah (15 papers)
- Sabrina J. Mielke (19 papers)
- Elena Klyachko (4 papers)
- Oleg Serikov (10 papers)
- Edoardo Ponti (11 papers)
- Ritesh Kumar (42 papers)
- Ryan Cotterell (226 papers)
- Ekaterina Vylomova (28 papers)