Utilizing the large-scale unlabeled data from the target domain via pseudo-label clustering algorithms is an important approach for addressing domain adaptation problems in speaker verification tasks. In this paper, we propose a novel progressive subgraph clustering algorithm based on multi-model voting and double-Gaussian based assessment (PGMVG clustering). To fully exploit the relationships among utterances and the complementarity among multiple models, our method constructs multiple k-nearest neighbors graphs based on diverse models and generates high-confidence edges using a voting mechanism. Further, to maximize the intra-class diversity, the connected subgraph is utilized to obtain the initial pseudo-labels. Finally, to prevent disastrous clustering results, we adopt an iterative approach that progressively increases k and employs a double-Gaussian based assessment algorithm to decide whether merging sub-classes.
@article{arxiv.2305.12703,
title = {Progressive Sub-Graph Clustering Algorithm for Semi-Supervised Domain Adaptation Speaker Verification},
author = {Zhuo Li and Jingze Lu and Zhenduo Zhao and Wenchao Wang and Pengyuan Zhang},
journal= {arXiv preprint arXiv:2305.12703},
year = {2023}
}