Speaker Verification
Speaker verification (SV) aims to automatically authenticate a person's identity based on their voice, focusing on creating robust and accurate systems. Current research emphasizes improving the discriminative power of speaker embeddings through techniques like contrastive learning, disentangling confounding factors such as age and channel variations, and leveraging powerful pre-trained models such as WavLM and Whisper. These advancements are crucial for enhancing security in various applications, from access control to forensic investigations, and are driving ongoing efforts to improve robustness against spoofing attacks and noisy conditions.
Papers
A Probabilistic Fusion Framework for Spoofing Aware Speaker Verification
You Zhang, Ge Zhu, Zhiyao Duan
Learnable Nonlinear Compression for Robust Speaker Verification
Xuechen Liu, Md Sahidullah, Tomi Kinnunen
Royalflush Speaker Diarization System for ICASSP 2022 Multi-channel Multi-party Meeting Transcription Challenge
Jingguang Tian, Xinhui Hu, Xinkang Xu