Artículos de revistas
Noisy Speech Recognition Based on Combined Audio-Visual Classifiers
Fecha
2015-01Registro en:
Terissi, Lucas Daniel; Sad, Gonzalo Daniel; Gomez, Juan Carlos; Parodi, Marianela; Noisy Speech Recognition Based on Combined Audio-Visual Classifiers; Springer; Lecture Notes In Computer Science; 8869; 1-2015; 43-53
978-3-319-14898-4
978-3-319-14899-1
0302-9743
Autor
Terissi, Lucas Daniel
Sad, Gonzalo Daniel
Gomez, Juan Carlos
Parodi, Marianela
Resumen
An isolated word speech recognition system based on audio-visual features is proposed in this paper. To enhance the recognition over different noisy conditions, this system combines three classifiers based on audio, visual and audio-visual information, respectively. The performance of the proposed recognition system is evaluated over two isolated word audio-visual databases, a public one and a database compiled by the authors of this paper. Experimental results show that the structure of the proposed system leads to significant improvements of the recognition rates through a wide range of signal-to-noise ratios.