Michael Picheny, Zoltan Tuske, et al.
INTERSPEECH 2019
This paper investigates data augmentation based on label-preserving transformations for deep convolutional neural network (CNN) acoustic modeling to deal with limited training data. We show how stochastic feature mapping (SFM) can be carried out when training CNN models with log-Mel features as input and compare it with vocal tract length perturbation (VTLP). Furthermore, a two-stage data augmentation scheme with a stacked architecture is proposed to combine VTLP and SFM as complementary approaches. Improved performance has been observed in experiments conducted on the limited language pack (LLP) of Haitian Creole in the IARPA Babel program.
Michael Picheny, Zoltan Tuske, et al.
INTERSPEECH 2019
Rui Zhang, Conrad Albrecht, et al.
KDD 2020
Hagen Soltau, George Saon, et al.
IEEE Transactions on Audio, Speech and Language Processing
Youssef Mroueh, Etienne Marcheret, et al.
AISTATS 2017