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DRASIC: Distributed recurrent autoencoder for scalable image compression

Publication ,  Journal Article
Diao, E; Ding, J; Tarokh, V
Published in: Data Compression Conference Proceedings
March 1, 2020

We propose a new architecture for distributed image compression from a group of distributed data sources. The work is motivated by practical needs of data-driven codec design, low power consumption, robustness, and data privacy. The proposed architecture, which we refer to as Distributed Recurrent Autoencoder for Scalable Image Compression (DRASIC), is able to train distributed encoders and one joint decoder on correlated data sources. Its compression capability is much better than the method of training codecs separately. Meanwhile, the performance of our distributed system with 10 distributed sources is only within 2 dB peak signal-to-noise ratio (PSNR) of the performance of a single codec trained with all data sources. We experiment distributed sources with different correlations and show how our data-driven methodology well matches the Slepian-Wolf Theorem in Distributed Source Coding (DSC). To the best of our knowledge, this is the first data-driven DSC framework for general distributed code design with deep learning.

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Published In

Data Compression Conference Proceedings

DOI

ISSN

1068-0314

Publication Date

March 1, 2020

Volume

2020-March

Start / End Page

3 / 12
 

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Diao, E., Ding, J., & Tarokh, V. (2020). DRASIC: Distributed recurrent autoencoder for scalable image compression. Data Compression Conference Proceedings, 2020-March, 3–12. https://doi.org/10.1109/DCC47342.2020.00008
Diao, E., J. Ding, and V. Tarokh. “DRASIC: Distributed recurrent autoencoder for scalable image compression.” Data Compression Conference Proceedings 2020-March (March 1, 2020): 3–12. https://doi.org/10.1109/DCC47342.2020.00008.
Diao E, Ding J, Tarokh V. DRASIC: Distributed recurrent autoencoder for scalable image compression. Data Compression Conference Proceedings. 2020 Mar 1;2020-March:3–12.
Diao, E., et al. “DRASIC: Distributed recurrent autoencoder for scalable image compression.” Data Compression Conference Proceedings, vol. 2020-March, Mar. 2020, pp. 3–12. Scopus, doi:10.1109/DCC47342.2020.00008.
Diao E, Ding J, Tarokh V. DRASIC: Distributed recurrent autoencoder for scalable image compression. Data Compression Conference Proceedings. 2020 Mar 1;2020-March:3–12.

Published In

Data Compression Conference Proceedings

DOI

ISSN

1068-0314

Publication Date

March 1, 2020

Volume

2020-March

Start / End Page

3 / 12