INVESTIGADORES
FERRER Luciana
congresos y reuniones científicas
Título:
A Noise-Robust System for NIST 2012 Speaker Recognition Evaluation
Autor/es:
LUCIANA FERRER; MITCH MCLAREN; NICOLAS SCHEFFER; YUN LEI; MARTIN GRACIARENA; VIKRAMJIT MITRA
Lugar:
Lyon
Reunión:
Congreso; Interspeech Conference; 2013
Resumen:
The National Institute of Standards and Technology (NIST) 2012 speaker recognition evaluation posed several new challenges including noisy data, varying test-sample length and number of enrollment samples, and a new metric. Target speakers were known during system development and could be used for model training and score normalization. For the evaluation, SRI International (SRI) submitted a system consisting of six subsystems that use different low- and high-level features, some specifically designed for noise robustness, fused at the score and iVector levels. This paper presents SRI’s submission along with a careful analysis of the approaches that provided gains for this challenging evaluation including a multiclass voice-activity detection system, the use of noisy data in system training, and the fusion of subsystems using acoustic characterization metadata.