The rise of deep learning has spurred advancements in image compression, with end-to-end learned systems gaining traction. However, their adoption in standard frameworks is limited, as they require a major overhaul of existing hardware designed for traditional methods. Moreover, their computational complexity, especially on the decoder side, remains significantly higher than conventional codecs. Consequently, optimizing traditional codecs remains a key research focus.

Learning Optimal Linear Block Transform by Rate Distortion Minimization

Gnutti, Alessandro
;
Kao, Chia-Hao;Leonardi, Riccardo
2025-01-01

Abstract

The rise of deep learning has spurred advancements in image compression, with end-to-end learned systems gaining traction. However, their adoption in standard frameworks is limited, as they require a major overhaul of existing hardware designed for traditional methods. Moreover, their computational complexity, especially on the decoder side, remains significantly higher than conventional codecs. Consequently, optimizing traditional codecs remains a key research focus.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11379/633332
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