MACNBR   00242
MUSEO ARGENTINO DE CIENCIAS NATURALES "BERNARDINO RIVADAVIA"
Unidad Ejecutora - UE
artículos
Título:
A dynamical system as the source of augmentation in a deep learning problem
Autor/es:
TUBARO, P.L.; MINDLIN, G.B.
Revista:
Chaos, Solitons and Fractals: X
Editorial:
Elsevier Ltd
Referencias:
Año: 2019 vol. 2
Resumen:
In this work we build a convolutional neural network capable of identifying individual birds by their songs. Since the actual data available from each individual is very limited, we use a dynamical system capable of synthesizing realistic songs, to generate surrogate-training data. The different synthetic songs are the result of integrating the dynamical system with slightly varied parameters. We show that a data set built in this way allows us to train the network to successfully identify the different individuals in our study. In this way, we present a novel way to perform data augmentation using dynamical systems.