Cic: Circular Image Compression

34 Pages Posted: 17 Oct 2024

See all articles by Honggui Li

Honggui Li

Yangzhou University

Sinan CHEN

Yangzhou University

Nahid MD LOKMAN HOSSAIN

Yangzhou University

Maria Trocan

affiliation not provided to SSRN

Dimitri Galayko

Sorbonne University

Mohamad SAWAN

Polytechnique Montreal

Multiple version iconThere are 2 versions of this paper

Abstract

Learned image compression (LIC) is currently the cutting-edge method. However, the inherent difference between testing and training images of LIC results in performance degradation to some extent. Especially for out-of-sample, out-of-distribution, or out-of-domain testing images, the performance of LIC dramatically degraded. Classical LIC is a serial image compression (SIC) approach that utilizes an open-loop architecture with serial encoding and decoding units. Nevertheless, according to the theory of automatic control, a closed-loop architecture holds the potential to improve the dynamic and static performance of LIC. Therefore, a circular image compression (CIC) approach with closed-loop encoding and decoding elements is proposed to minimize the gap between testing and training images and upgrade the capability of LIC. The proposed CIC establishes a nonlinear loop equation and proves that steady-state error between reconstructed and original images is close to zero by Taylor series expansion. The proposed CIC method possesses the property of Post-Training and plug-and-play which can be built on any existing advanced SIC methods. Experimental results on five public image compression datasets demonstrate that the proposed CIC outperforms five competing state-of-the-art open-source SIC algorithms in reconstruction capacity. Experimental results further show that the proposed method is suitable for out-of-sample testing images with dark backgrounds, sharp edges, high contrast, grid shapes, or complex patterns.

Keywords: Circular Image Compression, Learned Image Compression, Plug-and-Play, Steady-State Error, Taylor Series Expansion

Suggested Citation

Li, Honggui and CHEN, Sinan and MD LOKMAN HOSSAIN, Nahid and Trocan, Maria and Galayko, Dimitri and SAWAN, Mohamad, Cic: Circular Image Compression. Available at SSRN: https://ssrn.com/abstract=4990870 or http://dx.doi.org/10.2139/ssrn.4990870

Honggui Li (Contact Author)

Yangzhou University ( email )

88 Daxue Road (South)
Yangzhou
Jiangsu, 225009
China

Sinan CHEN

Yangzhou University ( email )

88 Daxue Road (South)
Yangzhou
Jiangsu, 225009
China

Nahid MD LOKMAN HOSSAIN

Yangzhou University ( email )

88 Daxue Road (South)
Yangzhou
Jiangsu, 225009
China

Maria Trocan

affiliation not provided to SSRN ( email )

Dimitri Galayko

Sorbonne University ( email )

UFR 927, 4 Place Jussieu
Paris, PA F-75252
France

Mohamad SAWAN

Polytechnique Montreal ( email )

Canada

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