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Erschienen in: Arabian Journal for Science and Engineering 8/2022

07.02.2022 | Research Article-Computer Engineering and Computer Science

DeepComp: A Hybrid Framework for Data Compression Using Attention Coupled Autoencoder

verfasst von: S. Sriram, Arun K. Dwivedi, P. Chitra, V. Vijay Sankar, S. Abirami, S. J. Rethina Durai, Divya Pandey, Manoj K. Khare

Erschienen in: Arabian Journal for Science and Engineering | Ausgabe 8/2022

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Abstract

Due to the evolution of new media formats, emphasis on appropriate compression of data becomes paramount. Compression algorithms employed in real-time streaming applications must provide high compression ratio with acceptable loss. For such applications, the compression ratio of traditional compression algorithms used in Windows remains a challenge. Integrating deep learning algorithms with traditional Windows archivers can help the research objective in overcoming the challenges encountered by traditional Windows archivers. In this study, we propose a hybrid and robust compression framework named DeepComp that employs an attention-based autoencoder along with traditional Windows WinRAR archiver to compress both numerical and image data formats. Autoencoders- a well-known deep learning architecture widely used for data compression, outperform traditional archivers in terms of compression ratio but fall short in terms of reconstruction error. To minimize the reconstruction error, an attention layer is proposed in the autoencoder used in DeepComp. The attention layer accomplishes this by impeding the transition of spatial locality of the input data points during its processing in the compression and decompression phase. DeepComp is evaluated using numerical and image-type atmospheric and oceanic data obtained from the National Centers for Environmental Prediction (NCEP), which operates under National Oceanic and Atmospheric Administration (NOAA), USA. The performance analysis illustrates the robustness of DeepComp in compressing both numeric and image datatypes. In terms of compression ratio, it outperforms Windows archivers by an average of 69% and multilayer autoencoders by 48%. DeepComp also outperforms the reconstruction performance of the multilayer autoencoder.

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Literatur
2.
10.
Zurück zum Zitat Park, J.; Park, H.; Choi, Y.: Data compression and prediction using machine learning for industrial IoT. In: Proceedings of the 2018 international conference on information networking (ICOIN). pp. 818–820 (2018) Park, J.; Park, H.; Choi, Y.: Data compression and prediction using machine learning for industrial IoT. In: Proceedings of the 2018 international conference on information networking (ICOIN). pp. 818–820 (2018)
11.
Zurück zum Zitat Li, M.; Zuo, W.; Gu, S.; Zhao, D.; Zhang, D.: Learning convolutional networks for content-weighted image compression. CoRR. abs/1703.1 (2017) Li, M.; Zuo, W.; Gu, S.; Zhao, D.; Zhang, D.: Learning convolutional networks for content-weighted image compression. CoRR. abs/1703.1 (2017)
19.
Zurück zum Zitat Huang, X.; Hu, T.; Ye, C.; Xu, G.; Wang, X.; Chen, L.: Electric load data compression and classification based on deep stacked auto-encoders (2019) Huang, X.; Hu, T.; Ye, C.; Xu, G.; Wang, X.; Chen, L.: Electric load data compression and classification based on deep stacked auto-encoders (2019)
20.
Zurück zum Zitat Ilkhechi, A.; Crotty, A.; Galakatos, A.; Mao, Y.; Fan, G.; Shi, X.; Cetintemel, U.: DeepSqueeze: deep semantic compression for tabular data. In: Proceedings of the 2020 ACM SIGMOD international conference on management of data. pp. 1733–1746. Association for Computing Machinery, New York, NY, USA (2020) Ilkhechi, A.; Crotty, A.; Galakatos, A.; Mao, Y.; Fan, G.; Shi, X.; Cetintemel, U.: DeepSqueeze: deep semantic compression for tabular data. In: Proceedings of the 2020 ACM SIGMOD international conference on management of data. pp. 1733–1746. Association for Computing Machinery, New York, NY, USA (2020)
23.
Zurück zum Zitat Wang, K.; Zhang, M.; Zhang, S.; Xu, Z.: A PQ data compression algorithm based on wavelet domain principal component analysis. In: Proceedings of the 2020 Asia energy and electrical engineering symposium (AEEES). pp. 347–350 (2020) Wang, K.; Zhang, M.; Zhang, S.; Xu, Z.: A PQ data compression algorithm based on wavelet domain principal component analysis. In: Proceedings of the 2020 Asia energy and electrical engineering symposium (AEEES). pp. 347–350 (2020)
26.
Zurück zum Zitat Senigagliesi, L.; Baldi, M.; Gambi, E.: Physical layer authentication techniques based on machine learning with data compression (2020) Senigagliesi, L.; Baldi, M.; Gambi, E.: Physical layer authentication techniques based on machine learning with data compression (2020)
30.
Zurück zum Zitat Kim, J.; Choi, J.; Chang, J.; Lee, J.: Efficient deep learning-based lossy image compression via asymmetric autoencoder and pruning. In: ICASSP 2020–2020 IEEE international conference on acoustics, speech and signal processing (ICASSP). pp. 2063–2067 (2020) Kim, J.; Choi, J.; Chang, J.; Lee, J.: Efficient deep learning-based lossy image compression via asymmetric autoencoder and pruning. In: ICASSP 2020–2020 IEEE international conference on acoustics, speech and signal processing (ICASSP). pp. 2063–2067 (2020)
31.
Zurück zum Zitat Yang, Y.; Sautière, G.; Ryu, J.J.; Cohen, T.S.: Feedback recurrent autoencoder. CoRR. abs/1911.0 (2019) Yang, Y.; Sautière, G.; Ryu, J.J.; Cohen, T.S.: Feedback recurrent autoencoder. CoRR. abs/1911.0 (2019)
33.
Zurück zum Zitat Huang, F.; Zhang, X.; Li, C.; Li, Z.; He, Y.; Zhao, Z.: Multimodal network embedding via attention based multi-view variational autoencoder. In: Proceedings of the 2018 ACM on international conference on multimedia retrieval. pp. 108–116. Association for Computing Machinery, New York, NY, USA (2018) Huang, F.; Zhang, X.; Li, C.; Li, Z.; He, Y.; Zhao, Z.: Multimodal network embedding via attention based multi-view variational autoencoder. In: Proceedings of the 2018 ACM on international conference on multimedia retrieval. pp. 108–116. Association for Computing Machinery, New York, NY, USA (2018)
34.
Zurück zum Zitat Polyak, A.; Wolf, L.: Attention-based Wavenet Autoencoder for Universal Voice Conversion. In: ICASSP 2019–2019 IEEE international conference on acoustics, speech and signal processing (ICASSP). 6800–6804 (2019) Polyak, A.; Wolf, L.: Attention-based Wavenet Autoencoder for Universal Voice Conversion. In: ICASSP 2019–2019 IEEE international conference on acoustics, speech and signal processing (ICASSP). 6800–6804 (2019)
35.
Zurück zum Zitat Xue, Y.; Su, J.: Attention based image compression post-processing convolutional neural network (2019) Xue, Y.; Su, J.: Attention based image compression post-processing convolutional neural network (2019)
37.
Zurück zum Zitat Zhou, L.; Sun, Z.; Wu, X.; Wu, J.: End-to-end optimized image compression with attention mechanism. In: CVPR Workshops (2019) Zhou, L.; Sun, Z.; Wu, X.; Wu, J.: End-to-end optimized image compression with attention mechanism. In: CVPR Workshops (2019)
41.
Zurück zum Zitat Ioannou, K.; Karampatzakis, D.; Amanatidis, P.; Aggelopoulos, V.; Karmiris, I.: Low-cost automatic weather stations in the internet of things (2021) Ioannou, K.; Karampatzakis, D.; Amanatidis, P.; Aggelopoulos, V.; Karmiris, I.: Low-cost automatic weather stations in the internet of things (2021)
43.
Zurück zum Zitat Lu, Y.; Phillips, C.A.; Langston, M.A.: A robustness metric for biological data clustering algorithms. BMC Bioinform. (2019) Lu, Y.; Phillips, C.A.; Langston, M.A.: A robustness metric for biological data clustering algorithms. BMC Bioinform. (2019)
44.
Zurück zum Zitat Armstrong, O.; Gilad-Bachrach, R.: Robust model compression using deep hypotheses (2021) Armstrong, O.; Gilad-Bachrach, R.: Robust model compression using deep hypotheses (2021)
Metadaten
Titel
DeepComp: A Hybrid Framework for Data Compression Using Attention Coupled Autoencoder
verfasst von
S. Sriram
Arun K. Dwivedi
P. Chitra
V. Vijay Sankar
S. Abirami
S. J. Rethina Durai
Divya Pandey
Manoj K. Khare
Publikationsdatum
07.02.2022
Verlag
Springer Berlin Heidelberg
Erschienen in
Arabian Journal for Science and Engineering / Ausgabe 8/2022
Print ISSN: 2193-567X
Elektronische ISSN: 2191-4281
DOI
https://doi.org/10.1007/s13369-022-06587-x

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