학술논문

Cosine Scoring with Uncertainty for Neural Speaker Embedding
Document Type
Working Paper
Source
IEEE Signal Processing Letters 2024
Subject
Computer Science - Sound
Computer Science - Machine Learning
Electrical Engineering and Systems Science - Audio and Speech Processing
Language
Abstract
Uncertainty modeling in speaker representation aims to learn the variability present in speech utterances. While the conventional cosine-scoring is computationally efficient and prevalent in speaker recognition, it lacks the capability to handle uncertainty. To address this challenge, this paper proposes an approach for estimating uncertainty at the speaker embedding front-end and propagating it to the cosine scoring back-end. Experiments conducted on the VoxCeleb and SITW datasets confirmed the efficacy of the proposed method in handling uncertainty arising from embedding estimation. It achieved improvement with 8.5% and 9.8% average reductions in EER and minDCF compared to the conventional cosine similarity. It is also computationally efficient in practice.
Comment: 5 pages, 4 figures