BECAS
PEPINO Leonardo Daniel
artículos
Título:
STUDY OF POSITIONAL ENCODING APPROACHES FOR AUDIO SPECTROGRAM TRANSFORMERS
Autor/es:
PEPINO, LEONARDO; RIERA, PABLO; FERRER, LUCIANA
Revista:
ICASSP, IEEE International Conference on Acoustics, Speech and Signal Processing - Proceedings
Editorial:
Institute of Electrical and Electronics Engineers Inc.
Referencias:
Año: 2022 p. 6557 - 6561
ISSN:
1520-6149
Resumen:
Transformers have revolutionized the world of deep learning, specially in the field of natural language processing. Recently, the Audio Spectrogram Transformer (AST) was proposed for audio classification, leading to state of the art results in several datasets. However, in order for ASTs to outperform CNNs, pretraining with ImageNet is needed. In this paper, we study one component of the AST, the positional encoding, and propose several variants to improve the performance of ASTs trained from scratch, without ImageNet pretraining. Our best model, which incorporates conditional positional encodings, significantly improves performance on Audioset and ESC-50 compared to the original AST.