Powerful Lossy Compression for Noisy Images

Image compression and denoising represent fundamental challenges in image processing with many real-world applications. To address practical demands, current solutions can be categorized into two main strategies: 1) sequential method; and 2) joint method. However, sequential methods have the disadva...

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Veröffentlicht in:arXiv.org 2024-03
Hauptverfasser: Cai, Shilv, Liang, Xiaoguo, Cao, Shuning, Luxin Yan, Zhong, Sheng, Chen, Liqun, Zou, Xu
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Liang, Xiaoguo
Cao, Shuning
Luxin Yan
Zhong, Sheng
Chen, Liqun
Zou, Xu
description Image compression and denoising represent fundamental challenges in image processing with many real-world applications. To address practical demands, current solutions can be categorized into two main strategies: 1) sequential method; and 2) joint method. However, sequential methods have the disadvantage of error accumulation as there is information loss between multiple individual models. Recently, the academic community began to make some attempts to tackle this problem through end-to-end joint methods. Most of them ignore that different regions of noisy images have different characteristics. To solve these problems, in this paper, our proposed signal-to-noise ratio~(SNR) aware joint solution exploits local and non-local features for image compression and denoising simultaneously. We design an end-to-end trainable network, which includes the main encoder branch, the guidance branch, and the signal-to-noise ratio~(SNR) aware branch. We conducted extensive experiments on both synthetic and real-world datasets, demonstrating that our joint solution outperforms existing state-of-the-art methods.
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subjects Image compression
Image processing
Noise reduction
Signal to noise ratio
title Powerful Lossy Compression for Noisy Images
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