Facial Expression Recognition by Supervised ICA with Selective Prior
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概要
- 論文の詳細を見る
Feature selection is required when using the Independent Component Analysis (ICA) in feature extraction for pattern classification. Selection during ICA might provide a better candidate set of features. We propose a supervised ICA with a selective prior for the de-mixing coefficients so that those features with higher significance in discrimination could emerge easier during the learning. We formulate the learning rule for the supervised ICA in a form of the natural gradient approach and develop the algorithm of supervised ICA in facial expression analysis. The efficiency of the proposed algorithm has been investigated by numerical experiments.
- 一般社団法人情報処理学会の論文
- 2005-12-12
著者
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Chen Fan
School Of Information Science Japan Advanced Institute Of Science And Technology
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Kotani Kazunori
School Of Information Science Japan Advanced Institute Of Science And Technology
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Kotani Kazunori
School of Information Science, Japan Advanced Institute of Science and Technology
関連論文
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- Comparison of MDA and EMC in robustness against over-fitting for facial expression recognition (画像工学)
- Facial Feature Land-marking with Optimized Gabor Parameters based on Maximization of Separation between Features
- Facial Expression Recognition by Supervised ICA with Selective Prior
- Facial Feature Land-marking with Optimized Gabor Parameters based on Maximization of Separation between Features
- Facial Expression Recognition by Supervised ICA with Selective Prior
- Facial Expression Recognition by Supervised ICA with Selective Prior
- Facial Feature Land-marking with Optimized Gabor Parameters based on Maximization of Separation between Features
- Facial Expression Recognition by Supervised ICA with Selective Prior
- Facial Feature Land-marking with Optimized Gabor Parameters based on Maximization of Separation between Features