Quantum inspired approach for denoising with application to medical imaging
Author:
Affiliation:
1. Massachusetts General Hospital & Harvard Medical School
2. Weill Cornell Medicine
3. Université de Toulouse, CNRS, UPS, LPT
4. Université de Toulouse, CNRS, IRIT
Abstract
Background noise in many fields such as medical imaging poses significant challenges for accurate diagnosis, prompting the development of denoising algorithms. Traditional methodologies, however, often struggle to address the complexities of noisy environments in high dimensional imaging systems. This paper introduces a novel quantum-inspired approach for image denoising, drawing upon principles of quantum and condensed matter physics. Our approach views medical images as amorphous structures akin to those found in condensed matter physics and we propose an algorithm that incorporates the concept of mode resolved localization directly into the denoising process. Notably, our approach eliminates the need for hyperparameter tuning. The proposed method is a standalone algorithm with minimal manual intervention, demonstrating its potential to use quantum-based techniques in classical signal denoising. Through numerical validation, we showcase the effectiveness of our approach in addressing noise-related challenges in imaging and especially medical imaging, underscoring its relevance for possible quantum computing applications.
Publisher
Springer Science and Business Media LLC
Reference48 articles.
1. Spatially guided nonlocal mean approach for denoising of PET images;Arabi H;Medical Physics,2020
2. Ultrasound image enhancement using structure oriented adversarial network;Mishra D;IEEE Signal Processing Letters,2018
3. Real-time image denoising of mixed Poisson–Gaussian noise in fluorescence microscopy images using ImageJ;Mannam V;Optica, OPTICA,2022
4. Spherical CNN for Medical Imaging Applications: Importance of Equivariance in image reconstruction and denoising;Hashemi A;Preprint at,2023
5. Some proximal methods for Poisson intensity CBCT and PET;Melot C;Inverse Problems and Imaging,2012
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