[PDF][PDF] A hierarchical approach with feature selection for emotion recognition from speech.
P Giannoulis, G Potamianos - LREC, 2012 - academia.edu
LREC, 2012•academia.edu
We examine speaker independent emotion classification from speech, reporting
experiments on the Berlin database across six basic emotions. Our approach is novel in a
number of ways: First, it is hierarchical, motivated by our belief that the most suitable feature
set for classification is different for each pair of emotions. Further, it uses a large number of
feature sets of different types, such as prosodic, spectral, glottal flow based, and AM-FM
ones. Finally, it employs a two-stage feature selection strategy to achieve discriminative …
experiments on the Berlin database across six basic emotions. Our approach is novel in a
number of ways: First, it is hierarchical, motivated by our belief that the most suitable feature
set for classification is different for each pair of emotions. Further, it uses a large number of
feature sets of different types, such as prosodic, spectral, glottal flow based, and AM-FM
ones. Finally, it employs a two-stage feature selection strategy to achieve discriminative …
Abstract
We examine speaker independent emotion classification from speech, reporting experiments on the Berlin database across six basic emotions. Our approach is novel in a number of ways: First, it is hierarchical, motivated by our belief that the most suitable feature set for classification is different for each pair of emotions. Further, it uses a large number of feature sets of different types, such as prosodic, spectral, glottal flow based, and AM-FM ones. Finally, it employs a two-stage feature selection strategy to achieve discriminative dimensionality reduction. The approach results to a classification rate of 85%, comparable to the state-of-the-art on this dataset.
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