For self-supervised speaker verification, the quality of pseudo labels decides the upper bound of the system due to the massive unreliable labels. In this work, we propose dynamic loss-gate and label correction (DLG-LC) to alleviate the performance degradation caused by unreliable estimated labels. In DLG, we adopt Gaussian Mixture Model (GMM) to dynamically model the loss distribution and use the estimated GMM to distinguish the reliable and unreliable labels automatically. Besides, to better utilize the unreliable data instead of dropping them directly, we correct the unreliable label with model predictions. Moreover, we apply the negative-pairs-free DINO framework in our experiments for further improvement. Compared to the best-known spe...
In this paper we propose and analyse a large margin fine-tuning strategy and a quality-aware score c...
Proceedings of Interspeech 2023International audienceThe paper introduces Diff-Filter, a multichanne...
In this paper we propose and analyse a large margin fine-tuning strategy and a quality-aware score c...
State-of-the-art speaker verification systems are inherently dependent on some kind of human supervi...
Training robust speaker verification systems without speaker labels has long been a challenging task...
The deep learning models used for speaker verification are heavily dependent on large-scale data and...
In recent years, self-supervised learning paradigm has received extensive attention due to its great...
Speaker recognition, recognizing speaker identities based on voice alone, enables important downstre...
In this work we improve the performance of a speaker verification system by matching the feature vec...
Over the last few years, deep learning has grown in popularity for speaker verification, identificat...
Current leading mispronunciation detection and diagnosis (MDD) systems achieve promising performance...
In recent years, the development of accurate deep keyword spotting (KWS) models has resulted in KWS ...
This report describes the SJTU-AISPEECH system for the Voxceleb Speaker Recognition Challenge 2022. ...
In real-world applications, speaker recognition models often face various domain-mismatch challenges...
The goal of this paper is to train effective self-supervised speaker representations without identit...
In this paper we propose and analyse a large margin fine-tuning strategy and a quality-aware score c...
Proceedings of Interspeech 2023International audienceThe paper introduces Diff-Filter, a multichanne...
In this paper we propose and analyse a large margin fine-tuning strategy and a quality-aware score c...
State-of-the-art speaker verification systems are inherently dependent on some kind of human supervi...
Training robust speaker verification systems without speaker labels has long been a challenging task...
The deep learning models used for speaker verification are heavily dependent on large-scale data and...
In recent years, self-supervised learning paradigm has received extensive attention due to its great...
Speaker recognition, recognizing speaker identities based on voice alone, enables important downstre...
In this work we improve the performance of a speaker verification system by matching the feature vec...
Over the last few years, deep learning has grown in popularity for speaker verification, identificat...
Current leading mispronunciation detection and diagnosis (MDD) systems achieve promising performance...
In recent years, the development of accurate deep keyword spotting (KWS) models has resulted in KWS ...
This report describes the SJTU-AISPEECH system for the Voxceleb Speaker Recognition Challenge 2022. ...
In real-world applications, speaker recognition models often face various domain-mismatch challenges...
The goal of this paper is to train effective self-supervised speaker representations without identit...
In this paper we propose and analyse a large margin fine-tuning strategy and a quality-aware score c...
Proceedings of Interspeech 2023International audienceThe paper introduces Diff-Filter, a multichanne...
In this paper we propose and analyse a large margin fine-tuning strategy and a quality-aware score c...