Seminar by Tatiana GELVEZ
Low rank regularizations for spectral Imaging recovery problems
Using prior information is crucial for solving ill-posed inverse problems in image processing. Specifically, a spectral image (SI) can be modeled as a three-dimensional array with two spatial and one spectral dimension. Natural scenes typically contain redundant spectral responses and self-similar spatial structures so that the so-called low-rank prior indicates that a SI lies in a lowdimensional subspace. This talk addresses the question of how to take advantage of the low-rank for solving spectral imaging recovery problems, such as SI denoising, single hyperspectral image super-resolution, spectral imaging fusion, and compressive spectral imaging reconstruction.
Additional informations
- https://gofast.insa-lyon.fr/node/905765
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303-01-04 (Bat. Saint-Exupéry)