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CN-Celeb: A Challenging Chinese Speaker Recognition Dataset

Yue Fan, Jian Kang, L.T. Li, Kunlun Li, Hanrui Chen, Sang Cheng, P.Y. Zhang, Zhengxu Zhou, Yunqi Cai, Deguang Wang

2020184 citationsDOI

Abstract

Recently, researchers set an ambitious goal of conducting speaker recognition in unconstrained conditions where the variations on ambient, channel and emotion could be arbitrary. However, most publicly available datasets are collected under constrained environments, i.e., with little noise and limited channel variation. These datasets tend to deliver over-optimistic performance and do not meet the request of research on speaker recognition in unconstrained conditions.In this paper, we present CN-Celeb, a large-scale speaker recognition dataset collected ‘in the wild’. This dataset contains more than 130,000 utterances from 1,000 Chinese celebrities, and covers 11 different genres in real world. Experiments conducted with two state-of-the-art speaker recognition approaches (i-vector and x-vector) show that the performance on CN-Celeb is far inferior to the one obtained on Vox-Celeb, a widely used speaker recognition dataset. This result demonstrates that in real-life conditions, the performance of existing techniques might be much worse than it was thought. Our database is free for researchers and can be downloaded from http://project.cslt.org.

Topics & Concepts

Speaker recognitionComputer scienceSpeech recognitionSet (abstract data type)Variation (astronomy)Channel (broadcasting)Noise (video)Speaker diarisationScale (ratio)Support vector machineArtificial intelligencePattern recognition (psychology)TelecommunicationsAstrophysicsProgramming languageQuantum mechanicsPhysicsImage (mathematics)Speech Recognition and SynthesisMusic and Audio ProcessingSpeech and Audio Processing
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