Sciweavers

ICASSP
2008
IEEE

Unsupervised validity measures for vocalization clustering

14 years 6 months ago
Unsupervised validity measures for vocalization clustering
This paper describes unsupervised speech/speaker cluster validity measures based on a dissimilarity metric, for the purpose of estimating the number of clusters in a speech data set as well as assessing the consistency of the clustering procedure. The number of clusters is estimated by minimizing the cross-data dissimilarity values, while algorithm consistency is evaluated by calculating the dissimilarity values across multiple experimental runs. The method is demonstrated on the task of Beluga whale vocalization clustering.
Kuntoro Adi, Kristine E. Sonstrom, Peter M. Scheif
Added 30 May 2010
Updated 30 May 2010
Type Conference
Year 2008
Where ICASSP
Authors Kuntoro Adi, Kristine E. Sonstrom, Peter M. Scheifele, Michael T. Johnson
Comments (0)