Abstract:An image set matching method based on support vector domain description is proposed. Firstly, each image set from the original input space is mapped into the high dimensional feature space by support vector machine learning, and then they are modeled using support vector domain description. In feature space, the model is described by a smallest enclosing ball, which encloses the most of the mapped data. Next, by introducing an efficient similarity metric based on support vector domain, the distance between two image sets is converted to the distance between pairwise support vector domains. Finally, the proposed method is evaluated on face recognition and object classification tasks based on datasets. Experimental results show that the proposed method outperforms other state-of-the-art set based matching methods. The recognition rates of the proposed method reaches 96.37%, 100% and 95.32% on ETH80 object database, HondaUCSD and YouTube video databases, respectively.
[1] Tan X Y, Chen S C, Zhou Z H, et al. Face Recognition from a Single Image per Person: A Survey. Pattern Recognition, 2006, 39(9): 1725-1745 [2] Yamaguchi O, Fukui K, Maeda K. Face Recognition Using Temporal Image Sequence // Proc of the 3rd IEEE Conference on Automatic Face and Gesture Recognition. Nara, Japan, 1998: 318-323 [3] Roweis S T, Saul L K. Nonlinear Dimensionality Reduction by Locally Linear Embedding. Science, 2000, 290(5500): 2323-2326 [4] Fukui K, Yamaguchi O. Face Recognition Using Multi-viewpoint Patterns for Robot Vision // Proc of the 11th International Symposium of Robotics Research. Siena, Italy, 2003: 192-201 [5] Nishiyama M, Yamaguchi O, Fukui K. Face Recognition with the Multiple Constrained Mutual Subspace Method // Proc of the 5th International Conference on Audio-and Video-Based Biometric Person Authentication. New York, USA, 2005: 71-80 [6] Hamm J, Lee D D. Grassmann Discriminant Analysis: A Unifying View on Subspace-Based Learning // Proc of the 25th International Conference on Machine Learning. Helsinki, Finland, 2008: 376-383 [7] Harandi M T, Sanderson C, Shirazi S, et al. Kernel Analysis on Grassmann Manifolds for Action Recognition. Pattern Recognition Letters, 2013, 34(15): 1906-1915 [8] Harandi M T, Sanderson C, Shirazi S, et al. Graph Embedding Discriminant Analysis on Grassmannian Manifolds for Improved Image Set Matching // Proc of the IEEE Conference on Computer Vision and Pattern Recognition. Providence, USA, 2011: 2705-2712 [9] Hu Y Q, Mian A S, Owens R. Face Recognition Using Sparse Approximated Nearest Points between Image Sets. IEEE Trans on Pattern Analysis and Machine Intelligence, 2012, 34(10): 1992-2004 [10] Wang R P, Shan S G, Chen X L, et al. Manifold-Manifold Distance with Application to Face Recognition Based on Image Set // Proc of the IEEE Conference on Computer Vision and Pattern Recognition. Anchorage, USA, 2008: 1-8 [11] Wang R P, Shan S G, Chen X L, et al. Maximal Linear Embe-dding for Dimensionality Reduction. IEEE Trans on Pattern Analysis and Machine Intelligence, 2011, 33(9): 1776-1792 [12] Cui Z, Shan S G, Zhang H H, et al. Image Sets Alignment for Video-Based Face Recognition // Proc of the IEEE Conference on Computer Vision and Pattern Recognition. Providence, USA, 2012: 2626-2633 [13] Tax D M J, Duin R P W. Support Vector Domain Description. Pa-ttern Recognition Letters, 1999, 20(11/12/13): 1191-1199 [14] Tax D M J, Duin R P W. Support Vector Data Description. Machine Learning, 2004, 54(1): 45-66 [15] Viola P, Jones M J. Robust Real-Time Face Detection. International Journal of Computer Vision, 2004, 57(2): 137-154 [16] Kim M, Kumar S, Pavlovic V, et al. Face Tracking and Recognition with Visual Constraints in Real-World Videos // Proc of the IEEE Conference on Computer Vision and Pattern Recognition. Anchorage, USA, 2008: 1-8 [17] Ross D, Lim J, Yang M H. Adaptive Probabilistic Visual Tracking with Incremental Subspace Update // Proc of the 8th European Conference on Computer Vision. Prague, Czech Republic, 2004: 470-482 [18] Wang R P, Chen X L. Manifold Discriminant Analysis // Proc of the IEEE Conference on Computer Vision and Pattern Recognition. Miami, USA, 2009: 429-436 [19] Cevikalp H, Triggs B. Face Recognition Based on Image Sets // Proc of the.23rd IEEE Conference on Computer Vision and Pattern Recognition. San Francisco, USA, 2010: 2567-2573