Deeply Learned Spectral Total Variation Decomposition
–Neural Information Processing Systems
Non-linear spectral decompositions of images based on one-homogeneous functionals such as total variation have gained considerable attention in the last few years. Due to their ability to extract spectral components corresponding to objects of different size and contrast, such decompositions enable filtering, feature transfer, image fusion and other applications. However, obtaining this decomposition involves solving multiple non-smooth optimisation problems and is therefore computationally highly intensive. In this paper, we present a neural network approximation of a non-linear spectral decomposition. We report up to four orders of magnitude ( 10,000) speedup in processing of mega-pixel size images, compared to classical GPU implementations.
Neural Information Processing Systems
Oct-10-2024, 18:16:39 GMT
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