2023
DOI: 10.3390/s23239502
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Enhancing Medical Image Denoising with Innovative Teacher–Student Model-Based Approaches for Precision Diagnostics

Shakhnoza Muksimova,
Sabina Umirzakova,
Sevara Mardieva
et al.

Abstract: The realm of medical imaging is a critical frontier in precision diagnostics, where the clarity of the image is paramount. Despite advancements in imaging technology, noise remains a pervasive challenge that can obscure crucial details and impede accurate diagnoses. Addressing this, we introduce a novel teacher–student network model that leverages the potency of our bespoke NoiseContextNet Block to discern and mitigate noise with unprecedented precision. This innovation is coupled with an iterative pruning tec… Show more

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Cited by 15 publications
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References 33 publications
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