Multi-view face detection
In order to improve the speed and robustness of multi-view face detection, this dissertation proposes a face detection method called multi-view face detection based on asymmetric principal component analysis (APCA) and support vector machine (SVM) classifier. APCA is proposed to remove the unreliabl...
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sg-ntu-dr.10356-730982023-07-04T15:05:58Z Multi-view face detection Yang, Ziwei Jiang Xudong School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering In order to improve the speed and robustness of multi-view face detection, this dissertation proposes a face detection method called multi-view face detection based on asymmetric principal component analysis (APCA) and support vector machine (SVM) classifier. APCA is proposed to remove the unreliable dimensions more effectively than the conventional PCA. Targeted at the two-class problem, an asymmetric discriminant analysis in the APCA subspace is proposed to regularize the eigenvalue which is a biased estimate of the variance in the corresponding dimension. In the training phase, five SVM linear classifiers are trained by using the positive database with different angles. Then APCA is applied on each group after classification. In the test phase, the linear classifier is used to quickly determine the different angles of faces, and then the Bhattacharyya distance is applied on asymmetric DA to further verify the face area of each group, thus to detect the face. The experimental results show the effectiveness and correctness of the proposed method. Master of Science (Signal Processing) 2018-01-03T05:37:54Z 2018-01-03T05:37:54Z 2018 Thesis http://hdl.handle.net/10356/73098 en 65 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering Yang, Ziwei Multi-view face detection |
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In order to improve the speed and robustness of multi-view face detection, this dissertation proposes a face detection method called multi-view face detection based on asymmetric principal component analysis (APCA) and support vector machine (SVM) classifier. APCA is proposed to remove the unreliable dimensions more effectively than the conventional PCA. Targeted at the two-class problem, an asymmetric discriminant analysis in the APCA subspace is proposed to regularize the eigenvalue which is a biased estimate of the variance in the corresponding dimension. In the training phase, five SVM linear classifiers are trained by using the positive database with different angles. Then APCA is applied on each group after classification. In the test phase, the linear classifier is used to quickly determine the different angles of faces, and then the Bhattacharyya distance is applied on asymmetric DA to further verify the face area of each group, thus to detect the face. The experimental results show the effectiveness and correctness of the proposed method. |
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Jiang Xudong |
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Jiang Xudong Yang, Ziwei |
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Theses and Dissertations |
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Yang, Ziwei |
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Yang, Ziwei |
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Multi-view face detection |
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Multi-view face detection |
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Multi-view face detection |
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Multi-view face detection |
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Multi-view face detection |
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multi-view face detection |
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2018 |
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http://hdl.handle.net/10356/73098 |
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1772826774053322752 |