A Comparison Study On Infant-Parent Voice Diarization
Junzhe Zhu, Mark Hasegawa-Johnson, Nancy McElwain
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 00:07:38
We design a framework for studying prelinguistic child voice from 3 to 24 months based on state-of-the-art algorithms in diarization. Our system consists of a time-invariant feature extractor, a context-dependent embedding generator, and a classifier. We study the effect of swapping out different components of the system, as well as changing loss function, to find the best performance. We also present a multiple-instance learning technique that allows us to pre-train our parameters on larger datasets with coarser segment boundary labels. We found that our best system achieved 43.8% DER on test dataset, compared to 55.4% DER achieved by LENA software. We also found that using convolutional feature extractor instead of logmel features significantly increases the performance of neural diarization.
Chairs:
Man-Wai Mak