Weakly Supervised Training of Speaker Identification Models
Abstract
We propose an approach for training speaker identification models in a weakly supervised manner. We concentrate on the setting where the training data consists of a set of audio recordings and the speaker annotation is provided only at the recording level. The method uses speaker diarization to find unique speakers in each recording, and i-vectors to project the speech of each speaker to a fixed-dimensional vector. A neural network is then trained to map i-vectors to speakers, using a special objective function that allows to optimize the model using recording-level speaker labels. We report experiments on two different real-world datasets. On the VoxCeleb dataset, the method provides 94.6% accuracy on a closed set speaker identification task, surpassing the baseline performance by a large margin. On an Estonian broadcast news dataset, the method provides 66% time-weighted speaker identification recall at 93% precision.
Cite
@article{arxiv.1806.08621,
title = {Weakly Supervised Training of Speaker Identification Models},
author = {Martin Karu and Tanel Alumäe},
journal= {arXiv preprint arXiv:1806.08621},
year = {2018}
}
Comments
Odyssey 2018 The Speaker and Language Recognition Workshop