Efficient Image Compression Using Advanced State Space Models
Bouzid Arezki, Anissa Mokraoui, Fangchen Feng

TL;DR
This paper introduces a novel State Space Model-based architecture for image compression that achieves a good balance between high compression performance and low computational complexity, making it practical for real-world use.
Contribution
It proposes a new SSM-based image compression model that outperforms existing methods in efficiency and speed while maintaining high compression quality.
Findings
Achieves superior BD-rate compared to existing methods.
Reduces computational complexity and latency significantly.
Balances performance and efficiency effectively.
Abstract
Transformers have led to learning-based image compression methods that outperform traditional approaches. However, these methods often suffer from high complexity, limiting their practical application. To address this, various strategies such as knowledge distillation and lightweight architectures have been explored, aiming to enhance efficiency without significantly sacrificing performance. This paper proposes a State Space Model-based Image Compression (SSMIC) architecture. This novel architecture balances performance and computational efficiency, making it suitable for real-world applications. Experimental evaluations confirm the effectiveness of our model in achieving a superior BD-rate while significantly reducing computational complexity and latency compared to competitive learning-based image compression methods.
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Taxonomy
TopicsAlgorithms and Data Compression · Advanced Data Compression Techniques · Error Correcting Code Techniques
MethodsKnowledge Distillation
