A Survey on Medical Image Compression: From Traditional to Learning-Based Approaches
Guofeng Tong, Sixuan Liu, Yang Lv, Hanyu Pei, Feng-Lei Fan

TL;DR
This survey reviews the evolution of medical image compression techniques, emphasizing the transition from traditional mathematical methods to modern learning-based approaches, and discusses their unique challenges and future prospects.
Contribution
It provides a comprehensive taxonomy and systematic analysis of both traditional and learning-based medical image compression methods across various modalities.
Findings
Traditional methods offer predictable performance and high standardization.
Learning-based approaches adapt better to complex image features.
Future directions include hybrid methods and modality-specific optimizations.
Abstract
The exponential growth of medical imaging has created significant challenges in data storage, transmission, and management for healthcare systems. In this vein, efficient compression becomes increasingly important. Unlike natural image compression, medical image compression prioritizes preserving diagnostic details and structural integrity, imposing stricter quality requirements and demanding fast, memory-efficient algorithms that balance computational complexity with clinically acceptable reconstruction quality. Meanwhile, the medical imaging family includes a plethora of modalities, each possessing different requirements. For example, 2D medical image (e.g., X-rays, histopathological images) compression focuses on exploiting intra-slice spatial redundancy, while volumetric medical image faces require handling intra-slice and inter-slice spatial correlations, and 4D dynamic imaging…
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Taxonomy
TopicsAdvanced Data Compression Techniques
