Comparison of MDA and EMC in robustness against over-fitting for facial expression recognition (コンピュータビジョンとイメージメディア)
スポンサーリンク
概要
- 論文の詳細を見る
Eigen-space Mehod based on Class-features(EMC), a variant of Multiple Discriminant Analysis(MDA), has been proposed and applied for automatic facial expression recognition. Although EMC was reported to outperform MDA in Ref. [1][2], no mathematical explanations for the difference of performance have been given. In the present paper, we will first refomualte MDA and EMC based on a new model of Maximum Log Likelihood(MLL) estimation. By using this model, we will explain from the perspective of statistical inference that the difference of the underlying mechanism locates in that EMC is a variant of MDA with lower degree of freedom by assuming the covariance to be sphered in all directions. A thorough comparison between EMC and MDA in robust recognition of facial expressions will also be made to verify our conclusion that EMC outperforms MDA because it is more robust against over-fitting due to its lower degree of freedom.
- 2008-03-10
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
- Comparison of MDA and EMC in robustness against over-fitting for facial expression recognition (コンピュータビジョンとイメージメディア)
- Comparison of MDA and EMC in robustness against over-fitting for facial expression recognition (パターン認識・メディア理解)
- 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