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Article Dans Une Revue Applied Sciences Année : 2022

Serial Decoders-Based Auto-Encoders for Image Reconstruction

Honggui Li
Mohamad Sawan
  • Fonction : Auteur

Résumé

Auto-encoders are composed of coding and decoding units; hence, they hold an inherent potential of being used for high-performance data compression and signal-compressed sensing. The main disadvantages of current auto-encoders comprise the following aspects: the research objective is not to achieve lossless data reconstruction but efficient feature representation; the evaluation of data recovery performance is neglected; it is difficult to achieve lossless data reconstruction using pure auto-encoders, even with pure deep learning. This paper aims at performing image reconstruction using auto-encoders, employs cascade decoders-based auto-encoders, perfects the performance of image reconstruction, approaches gradually lossless image recovery, and provides a solid theoretical and applicational basis for auto-encoders-based image compression and compressed sensing. The proposed serial decoders-based auto-encoders include the architectures of multi-level decoders and their related progressive optimization sub-problems. The cascade decoders consist of general decoders, residual decoders, adversarial decoders, and their combinations. The effectiveness of residual cascade decoders for image reconstruction is proven in mathematics. Progressive training can efficiently enhance the quality, stability, and variation of image reconstruction. It has been shown by the experimental results that the proposed auto-encoders outperform classical auto-encoders in the performance of image reconstruction.

Dates et versions

hal-04031141 , version 1 (15-03-2023)

Identifiants

Citer

Honggui Li, Maria Trocan, Mohamad Sawan, Dimitri Galayko. Serial Decoders-Based Auto-Encoders for Image Reconstruction. Applied Sciences, 2022, 12 (16), pp.8256. ⟨10.3390/app12168256⟩. ⟨hal-04031141⟩
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