System Combination for Short Utterance Speaker Recognition
Abstract
For text-independent short-utterance speaker recognition (SUSR), the performance often degrades dramatically. This paper presents a combination approach to the SUSR tasks with two phonetic-aware systems: one is the DNN-based i-vector system and the other is our recently proposed subregion-based GMM-UBM system. The former employs phone posteriors to construct an i-vector model in which the shared statistics offers stronger robustness against limited test data, while the latter establishes a phone-dependent GMM-UBM system which represents speaker characteristics with more details. A score-level fusion is implemented to integrate the respective advantages from the two systems. Experimental results show that for the text-independent SUSR task, both the DNN-based i-vector system and the subregion-based GMM-UBM system outperform their respective baselines, and the score-level system combination delivers performance improvement.
Keywords
Cite
@article{arxiv.1603.09460,
title = {System Combination for Short Utterance Speaker Recognition},
author = {Lantian Li and Dong Wang and Xiaodong Zhang and Thomas Fang Zheng and Panshi Jin},
journal= {arXiv preprint arXiv:1603.09460},
year = {2016}
}
Comments
APSIPA ASC 2016