This systematic review examines the application of LRMA and LLRMA techniques in the medical imaging domain. The key highlights and insights are as follows:
LRMA techniques have been widely applied to various medical imaging modalities, including MRI, CT, microarray, and infrared imaging, to address challenges such as noise, artifacts, high dimensionality, and large data volumes. These methods have been used for image reconstruction, denoising, compression, and feature extraction.
Since 2015, there has been a notable shift towards a preference for LLRMA in the medical imaging field, demonstrating its potential and effectiveness in capturing complex structures in medical data compared to LRMA. LLRMA allows for variations in rank at the local level, enabling a more accurate representation of complex medical images and improving the performance of image processing tasks like registration.
The review highlights the limitations of shallow similarity methods commonly used in LLRMA and suggests exploring advanced deep learning models, such as DeepLab, for more robust patch similarity measurement.
The review emphasizes the importance of applying LRMA and LLRMA to different modalities of healthcare data, including structured and semi-structured data, and discusses the limitations of these techniques on irregular data types.
The impact of patch size on the quality of LLRMA approximation is discussed, and the use of random search (RS) is proposed to determine the optimal patch size. To enhance the feasibility of this approach, a hybrid method using Bayesian optimization and RS is suggested.
The review covers various medical datasets used in LRMA and LLRMA applications and discusses the strengths and weaknesses of the techniques applied to these datasets.
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by Sisipho Haml... alle arxiv.org 04-17-2024
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