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Kernel Case: Caltech 101

Linear Dimensionality Reduction Using the Sparse Linear Model. Ioannis Gkioulekas and Todd Zickler. Harvard School of Engineering and Applied Sciences. Unsupervised Linear Dimensionality Reduction. Locality Preserving Projections: preserve local distances.

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Kernel Case: Caltech 101

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  1. Linear Dimensionality Reduction Using the Sparse Linear Model IoannisGkioulekas and Todd Zickler Harvard School of Engineering and Applied Sciences Unsupervised Linear Dimensionality Reduction Locality Preserving Projections: preserve local distances Principal Component Analysis: preserve global structure Challenge: Euclidean structure of input space not directly useful Formulation Sparse Linear Model Preservation of inner products in expectation: Generative model Equivalent to, in the case of the sparse linear model: MAP inference: lasso (convex relaxation of sparse coding) Data-adaptive (ovecomplete) dictionary Global minimizer: Our Approach where and are the top M eigenpairs of and sparse coding • Similar to performing PCA on the dictionary instead of the training samples. See paper for: • kernel extension (extension of model to Hilbert spaces, representer theorem); • relations to compressed sensing (approximate minimization of mutual incoherence). Recognition Experiments Linear Case: Facial Images (CMU PIE) LPP illumination Visualization Proposed expression pose Kernel Case: Caltech 101 Application: low-power sensor Recognition and Unsupervised Clustering Experiments References Face detection with 8 printed templates and SVM [1] X. He and P. Niyogi. Locality Preserving Projections. NIPS, 2003. [2] M.W. Seeger. Bayesian inference and optimal design for the sparse linear model. JMLR, 2008. [3] H. Lee, A. Battle, R. Raina, and A.Y. Ng. Efficient sparse coding algorithms. NIPS, 2007. [4] R.G. Baraniuk, V. Cevher, and M.B. Wakin. Low-Dimensional Models for Dimensionality Reduction and Signal Recovery: A Geometric Perspective. Proceedings of the IEEE, 2010. [5] P. Gehler and S. Nowozin. On feature combination for multiclass object classification. ICCV, 2009. [6] S.J. Koppal, I. Gkioulekas, T. Zickler, and G.L. Barrows. Wide-angle micro sensors for vision on a tight budget. CVPR, 2011.

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