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Unveiling the Future of Human and Machine Coding: A Survey of End-to-End Learned Image Compression

Chen-Hsiu Huang, Ja‐Ling Wu

2024Entropy14 citationsDOIOpen Access PDF

Abstract

End-to-end learned image compression codecs have notably emerged in recent years. These codecs have demonstrated superiority over conventional methods, showcasing remarkable flexibility and adaptability across diverse data domains while supporting new distortion losses. Despite challenges such as computational complexity, learned image compression methods inherently align with learning-based data processing and analytic pipelines due to their well-suited internal representations. The concept of Video Coding for Machines has garnered significant attention from both academic researchers and industry practitioners. This concept reflects the growing need to integrate data compression with computer vision applications. In light of these developments, we present a comprehensive survey and review of lossy image compression methods. Additionally, we provide a concise overview of two prominent international standards, MPEG Video Coding for Machines and JPEG AI. These standards are designed to bridge the gap between data compression and computer vision, catering to practical industry use cases.

Topics & Concepts

Computer scienceLossy compressionImage compressionData compressionJPEGArtificial intelligenceCodecAdaptabilityCoding (social sciences)End-to-end principleJPEG 2000Image processingComputer visionComputer engineeringData scienceMachine learningImage (mathematics)Computer hardwareStatisticsMathematicsBiologyEcologyAdvanced Data Compression TechniquesVideo Coding and Compression TechnologiesAdvanced Image Processing Techniques
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