Clustering-Based Low-Rank Matrix Approximation for Medical Image Compression
Sisipho Hamlomo, Marcellin Atemkeng

TL;DR
This paper introduces an adaptive low-rank matrix approximation method for medical image compression that groups similar patches to better preserve diagnostic details, outperforming traditional global SVD methods.
Contribution
The paper presents a novel adaptive LoRMA technique that clusters image patches for improved local structure preservation in medical image compression.
Findings
Outperforms global SVD in PSNR, SSIM, IoU, EPI
Reduces block artifacts and residual errors
Prioritizes critical regions for better diagnostic fidelity
Abstract
Medical images are inherently high-resolution and contain locally varying structures crucial for diagnosis. Efficient compression must preserve diagnostic fidelity while minimizing redundancy. Low-rank matrix approximation (LoRMA) techniques have shown strong potential for image compression by capturing global correlations; however, they often fail to adapt to local structural variations across regions of interest. To address this, we introduce an adaptive LoRMA, which partitions a medical image into overlapping patches, groups structurally similar patches into clusters using k-means, and performs SVD within each cluster. We derive the overall compression factor accounting for patch overlap and analyze how patch size influences compression efficiency and computational cost. While applicable to any data with high local variation, we focus on medical imaging due to its pronounced local…
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