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ICPR
2008
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An empirical comparison of graph-based dimensionality reduction algorithms on facial expression recognition tasks

14 years 5 months ago
An empirical comparison of graph-based dimensionality reduction algorithms on facial expression recognition tasks
Facial expression recognition is a topic of interest both in industry and academia. Recent approaches to facial expression recognition are based on mapping expressions to low dimensional manifolds. In this paper we revisit various dimensionality reduction algorithms using a graph-based paradigm. We compare eight dimensionality reduction algorithms on a facial expression recognition task. For this task, experimental results show that although Linear Discriminant Analysis (LDA) is the simplest and oldest supervised approach, its results are comparable to more flexible recent algorithms. LDA, on the other hand, is much simpler to tune, since it only depends on one parameter.
José Miguel Buenaposada, Li He, Luis Baumel
Added 06 Nov 2009
Updated 08 Jul 2010
Type Conference
Year 2008
Where ICPR
Authors José Miguel Buenaposada, Li He, Luis Baumela
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