Single Image Super Resolution via Manifold Approximation
Chinh Dang, Hayder Radha

TL;DR
This paper introduces an advanced single image super-resolution method that leverages manifold approximation, Grassmannian distances, and hierarchical clustering to improve reconstruction quality while reducing computational costs.
Contribution
It extends previous manifold-based super-resolution techniques by incorporating Grassmann manifold analysis and clustering for more efficient and accurate high-resolution image reconstruction.
Findings
Outperforms state-of-the-art super-resolution methods.
Reduces computational complexity significantly.
Maintains high reconstruction quality with fewer tangent subspaces.
Abstract
Image super-resolution remains an important research topic to overcome the limitations of physical acquisition systems, and to support the development of high resolution displays. Previous example-based super-resolution approaches mainly focus on analyzing the co-occurrence properties of low resolution and high-resolution patches. Recently, we proposed a novel single image super-resolution approach based on linear manifold approximation of the high-resolution image-patch space [1]. The image super-resolution problem is then formulated as an optimization problem of searching for the best matched high resolution patch in the manifold for a given low-resolution patch. We developed a novel technique based on the l1 norm sparse graph to learn a set of low dimensional affine spaces or tangent subspaces of the high-resolution patch manifold. The optimization problem is then solved based on the…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Advanced Vision and Imaging
