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Benefiting from Duplicates of Compressed Data: Shift-Based Holographic Compression of Images

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Abstract

Storage systems often rely on multiple copies of the same compressed data, enabling recovery in case of binary data errors, of course, at the expense of a higher storage cost. In this paper, we show that a wiser method of duplication entails great potential benefits for data types tolerating approximate representations, like images and videos. We propose a method to produce a set of distinct compressed representations for a given signal, such that any subset of them allows reconstruction of the signal at a quality depending only on the number of compressed representations utilized. Essentially, we implement the holographic representation idea, where all the representations are equally important in refining the reconstruction. Here, we propose to exploit the shift sensitivity of common compression processes and generate holographic representations via compression of various shifts of the signal. Two implementations for the idea, based on standard compression methods, are presented: the first is a simple, optimization-free design. The second approach originates in a challenging rate-distortion optimization, mitigated by the alternating direction method of multipliers (ADMM), leading to a process of repeatedly applying standard compression techniques. Evaluation of the approach, in conjunction with the JPEG2000 image compression standard, shows the effectiveness of the optimization in providing compressed holographic representations that, by means of an elementary reconstruction process, enable impressive gains of several dBs in PSNR over exact duplications.

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Acknowledgements

This research was supported in part by Israel Science Foundation grant no. 2597/16. The authors thank the reviewers for their constructive comments.

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Correspondence to Yehuda Dar.

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Dar, Y., Bruckstein, A.M. Benefiting from Duplicates of Compressed Data: Shift-Based Holographic Compression of Images. J Math Imaging Vis 63, 380–393 (2021). https://doi.org/10.1007/s10851-020-01003-1

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  • DOI: https://doi.org/10.1007/s10851-020-01003-1

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