Authors
Bruce A Draper, Kyungim Baek, Marian Stewart Bartlett, J Ross Beveridge
Publication date
2003/7/1
Journal
Computer vision and image understanding
Volume
91
Issue
1-2
Pages
115-137
Publisher
Academic Press
Description
This paper compares principal component analysis (PCA) and independent component analysis (ICA) in the context of a baseline face recognition system, a comparison motivated by contradictory claims in the literature. This paper shows how the relative performance of PCA and ICA depends on the task statement, the ICA architecture, the ICA algorithm, and (for PCA) the subspace distance metric. It then explores the space of PCA/ICA comparisons by systematically testing two ICA algorithms and two ICA architectures against PCA with four different distance measures on two tasks (facial identity and facial expression). In the process, this paper verifies the results of many of the previous comparisons in the literature, and relates them to each other and to this work. We are able to show that the FastICA algorithm configured according to ICA architecture II yields the highest performance for identifying faces, while the …
Total citations
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Scholar articles
BA Draper, K Baek, MS Bartlett, JR Beveridge - Computer vision and image understanding, 2003