Title
Application-independent evaluation of speaker detection
Abstract
We propose and motivate an alternative to the traditional error-based or cost-based evaluation metrics for the goodness of speaker detection performance. The metric that we propose is an information-theoretic one, which measures the effective amount of information that the speaker detector delivers to the user. We show that this metric is appropriate for the evaluation of what we call application-independent detectors, which output soft decisions in the form of log-likelihood-ratios, rather than hard decisions. The proposed metric is constructed via analysis and generalization of cost-based evaluation metrics. This construction forms an interpretation of this metric as an expected cost, or as a total error-rate, over a range of different application-types. We further show how the metric can be decomposed into a discrimination and a calibration component. We conclude with an experimental demonstration of the proposed technique to evaluate three speaker detection systems submitted to the NIST 2004 Speaker Recognition Evaluation.
Year
DOI
Venue
2004
10.1016/j.csl.2005.08.001
Computer Speech & Language
Keywords
DocType
Volume
likelihood ratio,proper scoring rule,bayesian analysis
Conference
20
Issue
ISSN
Citations 
2
0885-2308
172
PageRank 
References 
Authors
13.34
15
2
Search Limit
100172
Name
Order
Citations
PageRank
Niko Brümmer159544.01
Johan du Preez217215.03