Back to Search Start Over

CN-Celeb: multi-genre speaker recognition

Authors :
Li, Lantian
Liu, Ruiqi
Kang, Jiawen
Fan, Yue
Cui, Hao
Cai, Yunqi
Vipperla, Ravichander
Zheng, Thomas Fang
Wang, Dong
Publication Year :
2020

Abstract

Research on speaker recognition is extending to address the vulnerability in the wild conditions, among which genre mismatch is perhaps the most challenging, for instance, enrollment with reading speech while testing with conversational or singing audio. This mismatch leads to complex and composite inter-session variations, both intrinsic (i.e., speaking style, physiological status) and extrinsic (i.e., recording device, background noise). Unfortunately, the few existing multi-genre corpora are not only limited in size but are also recorded under controlled conditions, which cannot support conclusive research on the multi-genre problem. In this work, we firstly publish CN-Celeb, a large-scale multi-genre corpus that includes in-the-wild speech utterances of 3,000 speakers in 11 different genres. Secondly, using this dataset, we conduct a comprehensive study on the multi-genre phenomenon, in particular the impact of the multi-genre challenge on speaker recognition and the performance gain when the new dataset is used to conduct multi-genre training.<br />Comment: submitted to Speech Communication

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2012.12468
Document Type :
Working Paper