Facial Expression Recognition by Supervised Independent Component Analysis Using MAP Estimation
スポンサーリンク
概要
- 論文の詳細を見る
Permutation ambiguity of the classical Independent Component Analysis (ICA) may cause problems in feature extraction for pattern classification. Especially when only a small subset of components is derived from data, these components may not be most distinctive for classification, because ICA is an unsupervised method. We include a selective prior for de-mixing coefficients into the classical ICA to alleviate the problem. Since the prior is constructed upon the classification information from the training data, we refer to the proposed ICA model with a selective prior as a supervised ICA (sICA). We formulated the learning rule for sICA by taking a Maximum a Posteriori (MAP) scheme and further derived a fixed point algorithm for learning the de-mixing matrix. We investigate the performance of sICA in facial expression recognition from the aspects of both correct rate of recognition and robustness even with few independent components.
- (社)電子情報通信学会の論文
- 2008-02-01
著者
-
Chen Fan
The School Of Information Science Japan Advanced Institute Of Science And Technology
-
KOTANI Kazunori
the school of information science, Japan Advanced Institute of Science and Technology
-
Kotani Kazunori
The School Of Information Science Japan Advanced Institute Of Science And Technology