info:eu-repo/semantics/article
Classification of ASR Word Hypotheses using prosodic information and resampling of training data
Fecha
2013-07Registro en:
Albornoz, Enrique Marcelo; Milone, Diego Humberto; Rufiner, Hugo Leonardo; López-Cózar, R.; Classification of ASR Word Hypotheses using prosodic information and resampling of training data; Planta Piloto de Ingeniería Química; Latin American Applied Research; 43; 3; 7-2013; 1-5
0327-0793
1851-8796
Autor
Albornoz, Enrique Marcelo
Milone, Diego Humberto
Rufiner, Hugo Leonardo
López-Cózar, R.
Resumen
In this work, we propose a novel re-sampling method based on word lattice information and we use prosodic cues with support vector machines for classification. The idea is to consider word recognition as a two-class classification problem, which considers the word hypotheses in the lattice of a standard recognizer either as True or False employing prosodic information. The technique developed in this paper was applied to set of words extracted from a continuous speech database. Our experimental results show that the method allows obtaining average word hypotheses recognition rate of 82%.