Random Walk Graph Laplacian based Smoothness Prior for Soft Decoding of JPEG Images
Xianming Liu, Gene Cheung, Xiaolin Wu, Debin Zhao

TL;DR
This paper introduces a novel JPEG soft decoding method that combines Laplacian, sparsity, and a new graph-signal smoothness prior based on random walk graph Laplacian eigenvectors, leading to improved image reconstruction.
Contribution
It develops a new graph-signal smoothness prior (LERaG) and integrates it with existing priors for enhanced JPEG soft decoding performance.
Findings
Outperforms state-of-the-art algorithms in objective metrics
Effectively recovers high DCT frequencies in images
Reduces block artifacts in reconstructed images
Abstract
Given the prevalence of JPEG compressed images, optimizing image reconstruction from the compressed format remains an important problem. Instead of simply reconstructing a pixel block from the centers of indexed DCT coefficient quantization bins (hard decoding), soft decoding reconstructs a block by selecting appropriate coefficient values within the indexed bins with the help of signal priors. The challenge thus lies in how to define suitable priors and apply them effectively. In this paper, we combine three image priors---Laplacian prior for DCT coefficients, sparsity prior and graph-signal smoothness prior for image patches---to construct an efficient JPEG soft decoding algorithm. Specifically, we first use the Laplacian prior to compute a minimum mean square error (MMSE) initial solution for each code block. Next, we show that while the sparsity prior can reduce block artifacts,…
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