Space-Variant Total Variation boosted by learning techniques in few-view tomographic imaging
- URL: http://arxiv.org/abs/2404.16900v1
- Date: Thu, 25 Apr 2024 08:58:41 GMT
- Title: Space-Variant Total Variation boosted by learning techniques in few-view tomographic imaging
- Authors: Elena Morotti, Davide Evangelista, Andrea Sebastiani, Elena Loli Piccolomini,
- Abstract summary: This paper focuses on the development of a space-variant regularization model for solving an under-determined linear inverse problem.
The primary objective of the proposed model is to achieve a good balance between denoising and the preservation of fine details and edges.
A convolutional neural network is designed, to approximate both the ground truth image and its gradient using an elastic loss function in its training.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper focuses on the development of a space-variant regularization model for solving an under-determined linear inverse problem. The case study is a medical image reconstruction from few-view tomographic noisy data. The primary objective of the proposed optimization model is to achieve a good balance between denoising and the preservation of fine details and edges, overcoming the performance of the popular and largely used Total Variation (TV) regularization through the application of appropriate pixel-dependent weights. The proposed strategy leverages the role of gradient approximations for the computation of the space-variant TV weights. For this reason, a convolutional neural network is designed, to approximate both the ground truth image and its gradient using an elastic loss function in its training. Additionally, the paper provides a theoretical analysis of the proposed model, showing the uniqueness of its solution, and illustrates a Chambolle-Pock algorithm tailored to address the specific problem at hand. This comprehensive framework integrates innovative regularization techniques with advanced neural network capabilities, demonstrating promising results in achieving high-quality reconstructions from low-sampled tomographic data.
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