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Accredited SCOPUS
Multi-Description Image Compression Coding Algorithm Based on Depth Learning
( Yong Zhang ) , ( Guoteng Hui ) , ( Lei Zhang )
UCI I410-ECN-151-24-02-088669456

Aiming at the poor compression quality of traditional image compression coding (ICC) algorithm, a multi-description ICC algorithm based on depth learning is put forward in this study. In this study, first an image compression algorithm was designed based on multi-description coding theory. Image compression samples were collected, and the measurement matrix was calculated. Then, it processed the multi-description ICC sample set by using the convolutional self-coding neural system in depth learning. Compressing the wavelet coefficients after coding and synthesizing the multi-description image band sparse matrix obtained the multi-description ICC sequence. Averaging the multi-description image coding data in accordance with the effective single point’s position could finally realize the compression coding of multi-description images. According to experimental results, the designed algorithm consumes less time for image compression, and exhibits better image compression quality and better image reconstruction effect.

1. Introduction
2. Image Compression Sample Collection based on Compressed Sensing Theory
3. Multi-Description ICC Algorithm based on Deep Learning
4. Experimental Analysis
5. Conclusion
Acknowledgement
References
[자료제공 : 네이버학술정보]
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