TR2013-091

Blocked Gibbs Sampling Based Multi-Scale Mixture Model for Speaker Clustering on Noisy Data


    •  Tawara, N., Ogawa, T., Watanabe, S., Nakamura, A., Kobayashi, T., "Blocked Gibbs Sampling Based Multi-Scale Mixture Model for Speaker Clustering on Noisy Data", IEEE International Workshop on Machine Learning for Signal Processing (MLSP), DOI: 10.1109/​MLSP.2013.6661902, September 2013, pp. 1-6.
      BibTeX TR2013-091 PDF
      • @inproceedings{Tawara2013sep,
      • author = {Tawara, N. and Ogawa, T. and Watanabe, S. and Nakamura, A. and Kobayashi, T.},
      • title = {Blocked Gibbs Sampling Based Multi-Scale Mixture Model for Speaker Clustering on Noisy Data},
      • booktitle = {IEEE International Workshop on Machine Learning for Signal Processing (MLSP)},
      • year = 2013,
      • pages = {1--6},
      • month = sep,
      • doi = {10.1109/MLSP.2013.6661902},
      • issn = {1551-2541},
      • url = {https://www.merl.com/publications/TR2013-091}
      • }
Abstract:

A novel sampling method is proposed for estimating a continuous multi-scale mixture model. The multi-scale mixture models we assume have a hierarchical structure in which each component of the mixture is represented by a Gaussian mixture model (GMM). In speaker modeling from speech, this GMM represents intra-speaker dynamics derived from the difference in the attributes such as phoneme contexts and the existence of non-stationary noise and the mixture of GMMs (MoGMMs) represents inter-speaker dynamics derived from the difference in speakers. Gibbs sampling is a powerful technique to estimate such hierarchically structured models but can easily induce the local optima problem depending on its use especially when the elemental GMMs are complex in structure. To solve this problem, a highly accurate and robust sampling method based on the blocked Gibbs sampling and iterative conditional modes (ICM) is proposed and effectively applied for reducing a singularity solution given in the model with complex multi-modal distributions. In speaker clustering experiments under non-stationary noise, the proposed sampling-based model estimation improved the clustering performance by 17% on average compared to the conventional sampling-based methods.