CIFASIS   20631
CENTRO INTERNACIONAL FRANCO ARGENTINO DE CIENCIAS DE LA INFORMACION Y DE SISTEMAS
Unidad Ejecutora - UE
congresos y reuniones científicas
Título:
Audio-Visual Speech Classification based on Absent Class Detection
Autor/es:
JUAN CARLOS GÓMEZ; GONZALO DANIEL SAD
Lugar:
Amsterdan
Reunión:
Conferencia; 28th European Signal Processing Conference (EUSIPCO 2020); 2020
Institución organizadora:
European Association For Signal Processing (EURASIP)
Resumen:
In the present paper, a novel method for Audio-Visual Speech Recognition is introduced, aiming to minimize the intra-class errors. Based on a novel training procedure, the Complementary Models are introduced. These models aim to detect the absence of a class, in contrast to traditional models that aim to detect the presence of a class. In the proposed method, traditional models are employed in the first stage of a cascade scheme, and then the proposed complementary models are used to make the final decision on the recognition results. Experimental results in all the scenarios evaluated (different inputs modalities, three databases, four classifiers, and acoustic noisy conditions), show that a good performance is achieved with the proposed scheme. Also, better results than other reported methods in the literature over two public databases are achieved.