| Article ID | Journal | Published Year | Pages | File Type | 
|---|---|---|---|---|
| 10368521 | Computer Speech & Language | 2014 | 17 Pages | 
Abstract
												⺠We combine two statistic/hierarchical functional subsystems (differing in their speaker normalization method) with three GMM subsystems. ⺠We improved accuracy after taking into account that the GMM subsystems happened to be capturing lexical information that was distinct between classes only on the training and development sets. ⺠We show that background speaker normalization is a useful method for speaker state applications. ⺠Additionally, we show that longer utterances and utterances requiring higher cognitive load are easier to detect.
											Keywords
												
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											Authors
												Daniel Bone, Ming Li, Matthew P. Black, Shrikanth S. Narayanan, 
											