Kilian Weinberger & Lawrence Saul
Unsupervised Learning of Image Manifolds by Semidefinite Programming
CVPR 2004
Abstract: Can we detect low dimensional structure in high dimensional data sets of images and video? The problem of dimensionality reduction arises often in computer vision and pattern recognition. In this paper, we propose a new solution to this problem based on semidefinite programming. Our algorithm can be used to analyze high dimensional data that lies on or near a low dimensional manifold. It overcomes certain limitations of previous work in manifold learning, such as Isomap and locally linear embedding. It also bridges two recent developments in machine learning: semidefinite programming for learning kernel matrices and spectral methods for nonlinear dimensionality reduction. We illustrate the algorithm on easily visualized examples of curves and surfaces, as well as on actual images of faces, handwritten digits, and solid objects.
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