Super-Resolution of Face Images Using Kernel PCA-Based Prior
IEEE Transactions on Multimedia2007Vol. 9(4), pp. 888–892
Citations Over TimeTop 10% of 2007 papers
Abstract
We present a learning-based method to super-resolve face images using a kernel principal component analysis-based prior model. A prior probability is formulated based on the energy lying outside the span of principal components identified in a higher-dimensional feature space. This is used to regularize the reconstruction of the high-resolution image. We demonstrate with experiments that including higher-order correlations results in significant improvements
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