This report describes the SJTU-AISPEECH system for the Voxceleb Speaker Recognition Challenge 2022. For track1, we implemented two kinds of systems, the online system and the offline system. Different ResNet-based backbones and loss functions are explored. Our final fusion system achieved 3rd place in track1. For track3, we implemented statistic adaptation and jointly training based domain adaptation. In the jointly training based domain adaptation, we jointly trained the source and target domain dataset with different training objectives to do the domain adaptation. We explored two different training objectives for target domain data, self-supervised learning based angular proto-typical loss and semi-supervised learning based classificatio...
This paper describes our DKU-OPPO system for the 2022 Spoofing-Aware Speaker Verification (SASV) Cha...
For self-supervised speaker verification, the quality of pseudo labels decides the upper bound of th...
This work considers training neural networks for speaker recognition with a much smaller dataset siz...
This technical report describes our system for track 1, 2 and 4 of the VoxCeleb Speaker Recognition ...
In this report, we describe our submitted system for track 2 of the VoxCeleb Speaker Recognition Cha...
In this technical report, we describe the Royalflush submissions for the VoxCeleb Speaker Recognitio...
This report describes the UNISOUND submission for Track1 and Track2 of VoxCeleb Speaker Recognition ...
This paper discribes the DKU-DukeECE submission to the 4th track of the VoxCeleb Speaker Recognition...
This report describes the submission from Technical University of Catalonia (UPC) to the VoxCeleb Sp...
Different speaker recognition challenges have been held to assess the speaker verification system in...
The third instalment of the VoxCeleb Speaker Recognition Challenge was held in conjunction with Inte...
This paper presents the SJTU system for both text-dependent and text-independent tasks in short-dura...
This report describes our speaker verification systems for the tasks of the CN-Celeb Speaker Recogni...
This paper describes the BUCEA speaker diarization system for the 2022 VoxCeleb Speaker Recognition ...
This technical report describes the SJTU X-LANCE Lab system for the three tracks in CNSRC 2022. In t...
This paper describes our DKU-OPPO system for the 2022 Spoofing-Aware Speaker Verification (SASV) Cha...
For self-supervised speaker verification, the quality of pseudo labels decides the upper bound of th...
This work considers training neural networks for speaker recognition with a much smaller dataset siz...
This technical report describes our system for track 1, 2 and 4 of the VoxCeleb Speaker Recognition ...
In this report, we describe our submitted system for track 2 of the VoxCeleb Speaker Recognition Cha...
In this technical report, we describe the Royalflush submissions for the VoxCeleb Speaker Recognitio...
This report describes the UNISOUND submission for Track1 and Track2 of VoxCeleb Speaker Recognition ...
This paper discribes the DKU-DukeECE submission to the 4th track of the VoxCeleb Speaker Recognition...
This report describes the submission from Technical University of Catalonia (UPC) to the VoxCeleb Sp...
Different speaker recognition challenges have been held to assess the speaker verification system in...
The third instalment of the VoxCeleb Speaker Recognition Challenge was held in conjunction with Inte...
This paper presents the SJTU system for both text-dependent and text-independent tasks in short-dura...
This report describes our speaker verification systems for the tasks of the CN-Celeb Speaker Recogni...
This paper describes the BUCEA speaker diarization system for the 2022 VoxCeleb Speaker Recognition ...
This technical report describes the SJTU X-LANCE Lab system for the three tracks in CNSRC 2022. In t...
This paper describes our DKU-OPPO system for the 2022 Spoofing-Aware Speaker Verification (SASV) Cha...
For self-supervised speaker verification, the quality of pseudo labels decides the upper bound of th...
This work considers training neural networks for speaker recognition with a much smaller dataset siz...