Publication Date:
2024
Abstract:
This work introduces a Transformer-based image compression system. It has the flexibility to switch between the standard image reconstruction and the denoising reconstruction from a single compressed bitstream. Instead of training separate decoders for these tasks, we incorporate two add-on modules to adapt a pre-trained image decoder from performing the standard image reconstruction to joint decoding and denoising. Our scheme adopts a two-pronged approach. It features a latent refinement module to refine the latent representation of a noisy input image for reconstructing a noise-free image. Additionally, it incorporates an instance-specific prompt generator that adapts the decoding process to improve on the latent refinement. Experimental results show that our method achieves a similar level of denoising quality to training a separate decoder for joint decoding and denoising at the expense of only a modest increase in the decoder's model size and computational complexity.
CRIS type:
4.1 Contributo in Atti di convegno
Keywords:
compressed-domain image denoising; Learned image compression; Transformer
List of contributors:
Chen, Yi-Hsin; Ho, Kuan-Wei; Tsai, Shiau-Rung; Lin, Guan-Hsun; Gnutti, Alessandro; Peng, Wen-Hsiao; Leonardi, Riccardo
Book title:
2024 Picture Coding Symposium, PCS 2024 - Proceedings