A sparse coding approach to inverse problems with application to
microwave tomography
- URL: http://arxiv.org/abs/2308.03818v2
- Date: Wed, 29 Nov 2023 14:20:59 GMT
- Title: A sparse coding approach to inverse problems with application to
microwave tomography
- Authors: Cesar F. Caiafa, Ramiro M. Irastorza
- Abstract summary: We present a realistic, compact and effective generative model for natural images inspired by the visual system of mammals.
It enables us to address ill-posed linear inverse problems by training the model on a vast collection of images.
We extend the application of sparse coding to solve the non-linear and ill-posed problem in microwave tomography imaging.
- Score: 2.230861711161317
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Inverse imaging problems that are ill-posed can be encountered across
multiple domains of science and technology, ranging from medical diagnosis to
astronomical studies. To reconstruct images from incomplete and distorted data,
it is necessary to create algorithms that can take into account both, the
physical mechanisms responsible for generating these measurements and the
intrinsic characteristics of the images being analyzed. In this work, the
sparse representation of images is reviewed, which is a realistic, compact and
effective generative model for natural images inspired by the visual system of
mammals. It enables us to address ill-posed linear inverse problems by training
the model on a vast collection of images. Moreover, we extend the application
of sparse coding to solve the non-linear and ill-posed problem in microwave
tomography imaging, which could lead to a significant improvement of the
state-of-the-arts algorithms.
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