Skip to main content
Top
Published in: Soft Computing 19/2020

06-03-2020 | Methodologies and Application

Huffman quantization approach for optimized EEG signal compression with transformation technique

Authors: P. Rajasekar, M. Pushpalatha

Published in: Soft Computing | Issue 19/2020

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

The significance of the electroencephalography (EEG) signal is used to read the brain activity in the form of electrical patterns. EEG signals help to diagnose anomalies in the brain at the time of head injuries, epilepsy, seizures, brain tumor, dizziness and sleep deprivation. So such types of crucial signals should be transported in a secure method to avoid any data loss or to prevent noise interruptions which can lead to the misdetection of diseases. As the EEG signals are in higher-dimensional size, it should be compressed for effective transportation. In this research, a lossless compression method named as Huffman-based discrete cosine transform is implemented to transmit the EEG data efficiently. The discrete cosine transform and inverse discrete cosine transform are proposed here to increase the privacy of the data and reduce the complexity of the data. This paper mainly focuses on to get a high accuracy ratio in reconstructing the original data after compression and transportation without any losses in minimum computational time. The preprocessing and sampling are made at the initial stages to remove the noises and transmit the original data. The Huffman quantization method based on discrete cosine transform achieves high-performance metrics in terms of peak signal-to-noise ratio, quality score and compression ratio when compared with existing methods in various transformations of data.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Literature
go back to reference Abdallah R, Sakoda K (2019) Robust data routing in wireless networks with directional transmissions, Google Patents Abdallah R, Sakoda K (2019) Robust data routing in wireless networks with directional transmissions, Google Patents
go back to reference Abdellatif AA (2020) Novel processing and transmission techniques Abdellatif AA (2020) Novel processing and transmission techniques
go back to reference Abdellatif AA, Khafagy MG, Mohamed A, Chiasserini C-F (2018) EEG-based transceiver design with data decomposition for healthcare IoT applications. IEEE Internet of Things J 5:3569–3579CrossRef Abdellatif AA, Khafagy MG, Mohamed A, Chiasserini C-F (2018) EEG-based transceiver design with data decomposition for healthcare IoT applications. IEEE Internet of Things J 5:3569–3579CrossRef
go back to reference Abdellatif AA, Emam A, Chiasserini C-F, Mohamed A, Jaoua A, Ward R (2019) Edge-based compression and classification for smart healthcare systems: concept, implementation, and evaluation. Expert Syst Appl 117:1–14CrossRef Abdellatif AA, Emam A, Chiasserini C-F, Mohamed A, Jaoua A, Ward R (2019) Edge-based compression and classification for smart healthcare systems: concept, implementation, and evaluation. Expert Syst Appl 117:1–14CrossRef
go back to reference Adel M, El-Naggar M, Darweesh MS, Mostafa H (2018) Multiple hybrid compression techniques for electroencephalography data. In: 2018 30th international conference on microelectronics (ICM), pp 124–127 Adel M, El-Naggar M, Darweesh MS, Mostafa H (2018) Multiple hybrid compression techniques for electroencephalography data. In: 2018 30th international conference on microelectronics (ICM), pp 124–127
go back to reference Al-Marridi AZ, Mohamed A, Erbad A (2018) Convolutional Autoencoder Approach for EEG Compression and Reconstruction in m-Health Systems. In: 2018 14th international wireless communications & mobile computing conference (IWCMC), pp 370–375 Al-Marridi AZ, Mohamed A, Erbad A (2018) Convolutional Autoencoder Approach for EEG Compression and Reconstruction in m-Health Systems. In: 2018 14th international wireless communications & mobile computing conference (IWCMC), pp 370–375
go back to reference Al-Sa’D MF, Tlili M, Abdellatif AA, Mohamed A, Elfouly T, Harras K et al (2018) A deep learning approach for vital signs compression and energy efficient delivery in mHealth systems. IEEE Access 6:33727–33739CrossRef Al-Sa’D MF, Tlili M, Abdellatif AA, Mohamed A, Elfouly T, Harras K et al (2018) A deep learning approach for vital signs compression and energy efficient delivery in mHealth systems. IEEE Access 6:33727–33739CrossRef
go back to reference Ang L-M, Seng KP, Zungeru AM, Ijemaru GK (2017) Big sensor data systems for smart cities. IEEE Internet of Things J 4:1259–1271CrossRef Ang L-M, Seng KP, Zungeru AM, Ijemaru GK (2017) Big sensor data systems for smart cities. IEEE Internet of Things J 4:1259–1271CrossRef
go back to reference Biason A, Pielli C, Zanella A, Zorzi M (2018) Access control for IoT nodes with energy and fidelity constraints. IEEE Trans Wireless Commun 17:3242–3257CrossRef Biason A, Pielli C, Zanella A, Zorzi M (2018) Access control for IoT nodes with energy and fidelity constraints. IEEE Trans Wireless Commun 17:3242–3257CrossRef
go back to reference Birvinskas D, Judas V, Martisius I, Damasevicius R (2015) Fast DCT algorithms for EEG data compression in embedded systems. Comput Sci Inf Syst 12:49–62CrossRef Birvinskas D, Judas V, Martisius I, Damasevicius R (2015) Fast DCT algorithms for EEG data compression in embedded systems. Comput Sci Inf Syst 12:49–62CrossRef
go back to reference Dao PT, Griffin A, Li XJ (2018) Compressed sensing of eeg with gabor dictionary: effect of time and frequency resolution. In: 2018 40th annual international conference of the ieee engineering in medicine and biology society (EMBC), pp 3108–3111 Dao PT, Griffin A, Li XJ (2018) Compressed sensing of eeg with gabor dictionary: effect of time and frequency resolution. In: 2018 40th annual international conference of the ieee engineering in medicine and biology society (EMBC), pp 3108–3111
go back to reference Dufort G, Favaro F, Lecumberry F, Martín Á, Oliver JP, Oreggioni J et al (2016) Wearable EEG via lossless compression. In: 2016 38th annual international conference of the IEEE engineering in medicine and biology society (EMBC), pp 1995–1998 Dufort G, Favaro F, Lecumberry F, Martín Á, Oliver JP, Oreggioni J et al (2016) Wearable EEG via lossless compression. In: 2016 38th annual international conference of the IEEE engineering in medicine and biology society (EMBC), pp 1995–1998
go back to reference Elaskary RM, Saeed M, Ismail T (2017) Non-uniform quantized Huffman compression technique for EEG data. In: 2017 13th international computer engineering conference (ICENCO), pp 219–223 Elaskary RM, Saeed M, Ismail T (2017) Non-uniform quantized Huffman compression technique for EEG data. In: 2017 13th international computer engineering conference (ICENCO), pp 219–223
go back to reference Elzanaty A, Giorgetti A, Chiani M (2019) Lossy compression of noisy sparse sources based on syndrome encoding. IEEE Trans Commun 67:7073–7087CrossRef Elzanaty A, Giorgetti A, Chiani M (2019) Lossy compression of noisy sparse sources based on syndrome encoding. IEEE Trans Commun 67:7073–7087CrossRef
go back to reference Giorgetti A, Lucchi M, Tavelli E, Barla M, Gigli G, Casagli N et al (2016) A robust wireless sensor network for landslide risk analysis: system design, deployment, and field testing. IEEE Sens J 16:6374–6386CrossRef Giorgetti A, Lucchi M, Tavelli E, Barla M, Gigli G, Casagli N et al (2016) A robust wireless sensor network for landslide risk analysis: system design, deployment, and field testing. IEEE Sens J 16:6374–6386CrossRef
go back to reference Hadiyoso S, Rizal A, Aulia S (2019) ECG based person authentication using empirical mode decomposition and discriminant analysis. In: Journal of Physics: Conference Series, p 012014 Hadiyoso S, Rizal A, Aulia S (2019) ECG based person authentication using empirical mode decomposition and discriminant analysis. In: Journal of Physics: Conference Series, p 012014
go back to reference Han J, Zhao Y, Sun H, Chen J, Ke A, Xu G et al (2018) A fast, open EEG classification framework based on feature compression and channel ranking. Front Neurosci 12:217CrossRef Han J, Zhao Y, Sun H, Chen J, Ke A, Xu G et al (2018) A fast, open EEG classification framework based on feature compression and channel ranking. Front Neurosci 12:217CrossRef
go back to reference Hosny KM, Khalid AM, Mohamed ER (2018) Efficient compression of bio-signals by using Tchebichef moments and Artificial Bee Colony. Biocybern Biomed Eng 38:385–398CrossRef Hosny KM, Khalid AM, Mohamed ER (2018) Efficient compression of bio-signals by using Tchebichef moments and Artificial Bee Colony. Biocybern Biomed Eng 38:385–398CrossRef
go back to reference Jha CK, Kolekar MH (2018) Electrocardiogram data compression using DCT based discrete orthogonal Stockwell transform. Biomed Signal Process Control 46:174–181CrossRef Jha CK, Kolekar MH (2018) Electrocardiogram data compression using DCT based discrete orthogonal Stockwell transform. Biomed Signal Process Control 46:174–181CrossRef
go back to reference Kipnis A, Reeves G, Eldar YC, Goldsmith AJ (2017) Compressed sensing under optimal quantization. In: 2017 IEEE international symposium on information theory (ISIT), pp 2148–2152 Kipnis A, Reeves G, Eldar YC, Goldsmith AJ (2017) Compressed sensing under optimal quantization. In: 2017 IEEE international symposium on information theory (ISIT), pp 2148–2152
go back to reference Kipnis A, Reeves G, Eldar YC (2018) Single letter formulas for quantized compressed sensing with Gaussian codebooks. In: 2018 IEEE international symposium on information theory (ISIT), pp 71–75 Kipnis A, Reeves G, Eldar YC (2018) Single letter formulas for quantized compressed sensing with Gaussian codebooks. In: 2018 IEEE international symposium on information theory (ISIT), pp 71–75
go back to reference Lee N (2016) MAP support detection for greedy sparse signal recovery algorithms in compressive sensing. IEEE Trans Signal Process 64:4987–4999MathSciNetCrossRef Lee N (2016) MAP support detection for greedy sparse signal recovery algorithms in compressive sensing. IEEE Trans Signal Process 64:4987–4999MathSciNetCrossRef
go back to reference Leinonen M, Codreanu M, Juntti M, Kramer G (2018) Rate-distortion performance of lossy compressed sensing of sparse sources. IEEE Trans Commun 66:4498–4512CrossRef Leinonen M, Codreanu M, Juntti M, Kramer G (2018) Rate-distortion performance of lossy compressed sensing of sparse sources. IEEE Trans Commun 66:4498–4512CrossRef
go back to reference Li Z, Deng Y, Huang H, Misra S (2015) ECG signal compressed sensing using the wavelet tree model. In: 2015 8th international conference on biomedical engineering and informatics (BMEI), pp 194–199 Li Z, Deng Y, Huang H, Misra S (2015) ECG signal compressed sensing using the wavelet tree model. In: 2015 8th international conference on biomedical engineering and informatics (BMEI), pp 194–199
go back to reference Mämmelä A, Riekki J, Kotelba A, Anttonen A (2018) Multidisciplinary and historical perspectives for developing intelligent and resource-efficient systems. IEEE Access 6:17464–17499CrossRef Mämmelä A, Riekki J, Kotelba A, Anttonen A (2018) Multidisciplinary and historical perspectives for developing intelligent and resource-efficient systems. IEEE Access 6:17464–17499CrossRef
go back to reference Mohanty SP, Kougianos E, Guturu P (2018) SBPG: secure better portable graphics for trustworthy media communications in the IoT. IEEE Access 6:5939–5953CrossRef Mohanty SP, Kougianos E, Guturu P (2018) SBPG: secure better portable graphics for trustworthy media communications in the IoT. IEEE Access 6:5939–5953CrossRef
go back to reference Nguyen B, Nguyen D, Ma W, Tran D (2017) Wavelet transform and adaptive arithmetic coding techniques for EEG lossy compression. In: 2017 international joint conference on neural networks (IJCNN), pp 3153–3160 Nguyen B, Nguyen D, Ma W, Tran D (2017) Wavelet transform and adaptive arithmetic coding techniques for EEG lossy compression. In: 2017 international joint conference on neural networks (IJCNN), pp 3153–3160
go back to reference Nipanikar SI, Deepthi VH (2017) Wavelet transform-based steganographic method for secure data communication using OFDM system. Int J Intell Comput Cybern 10:362–386CrossRef Nipanikar SI, Deepthi VH (2017) Wavelet transform-based steganographic method for secure data communication using OFDM system. Int J Intell Comput Cybern 10:362–386CrossRef
go back to reference Palzer L, Timo R (2016) A lower bound for the rate-distortion function of spike sources that is asymptotically tight. In: 2016 IEEE Information Theory Workshop (ITW), pp 101–105 Palzer L, Timo R (2016) A lower bound for the rate-distortion function of spike sources that is asymptotically tight. In: 2016 IEEE Information Theory Workshop (ITW), pp 101–105
go back to reference Prieto J, Amira A, Bajo J, Mazuelas S, De la Prieta F (2018) IoT approaches for distributed computing. In: Wireless communications and mobile computing Prieto J, Amira A, Bajo J, Mazuelas S, De la Prieta F (2018) IoT approaches for distributed computing. In: Wireless communications and mobile computing
go back to reference Rahmani A-M, Thanigaivelan NK, Gia TN, Granados J, Negash B, Liljeberg P et al (2015) Smart e-health gateway: Bringing intelligence to internet-of-things based ubiquitous healthcare systems. In: 2015 12th annual IEEE consumer communications and networking conference (CCNC), pp 826–834 Rahmani A-M, Thanigaivelan NK, Gia TN, Granados J, Negash B, Liljeberg P et al (2015) Smart e-health gateway: Bringing intelligence to internet-of-things based ubiquitous healthcare systems. In: 2015 12th annual IEEE consumer communications and networking conference (CCNC), pp 826–834
go back to reference Rahmani AM, Gia TN, Negash B, Anzanpour A, Azimi I, Jiang M et al (2018) Exploiting smart e-Health gateways at the edge of healthcare Internet-of-Things: a fog computing approach. Future Gener Comput Syst 78:641–658CrossRef Rahmani AM, Gia TN, Negash B, Anzanpour A, Azimi I, Jiang M et al (2018) Exploiting smart e-Health gateways at the edge of healthcare Internet-of-Things: a fog computing approach. Future Gener Comput Syst 78:641–658CrossRef
go back to reference Raja G, Kottursamy K, Chaudhary SH, Hassan A, Alqarni M (2017) SDN assisted middlebox synchronization mechanism for next generation mobile data management system. In: 2017 IEEE SmartWorld, ubiquitous intelligence & computing, advanced & trusted computed, scalable computing & communications, cloud & big data computing, Internet of People and Smart City Innovation (SmartWorld/SCALCOM/UIC/ATC/CBDCom/IOP/SCI), IEEE, pp 1–7 Raja G, Kottursamy K, Chaudhary SH, Hassan A, Alqarni M (2017) SDN assisted middlebox synchronization mechanism for next generation mobile data management system. In: 2017 IEEE SmartWorld, ubiquitous intelligence & computing, advanced & trusted computed, scalable computing & communications, cloud & big data computing, Internet of People and Smart City Innovation (SmartWorld/SCALCOM/UIC/ATC/CBDCom/IOP/SCI), IEEE, pp 1–7
go back to reference Raju R, Moh M, Moh T-S (2019) Compression of wearable body sensor network data. In: Smart data: state-of-the-art perspectives in computing and applications, p 215 Raju R, Moh M, Moh T-S (2019) Compression of wearable body sensor network data. In: Smart data: state-of-the-art perspectives in computing and applications, p 215
go back to reference Sahu M, Sharma Y, Sharma D, Bajpai S (2018) Feature compression using PCA on motor imagery classifications. In: Proceedings of 3rd international conference on internet of things and connected technologies (ICIoTCT). pp 26–27 Sahu M, Sharma Y, Sharma D, Bajpai S (2018) Feature compression using PCA on motor imagery classifications. In: Proceedings of 3rd international conference on internet of things and connected technologies (ICIoTCT). pp 26–27
go back to reference Sarasa G, Granados A, Rodríguez FB (2019) Algorithmic clustering based on string compression to extract P300 structure in EEG signals. Comput Methods Progr Biomed 176:225–235CrossRef Sarasa G, Granados A, Rodríguez FB (2019) Algorithmic clustering based on string compression to extract P300 structure in EEG signals. Comput Methods Progr Biomed 176:225–235CrossRef
go back to reference Serhani MA, El Menshawy M, Benharref A, Haros S, Navaz AN (2017) New algorithms for processing time-series big EEG data within mobile health monitoring systems. Comput Methods Progr Biomed 149:79–94CrossRef Serhani MA, El Menshawy M, Benharref A, Haros S, Navaz AN (2017) New algorithms for processing time-series big EEG data within mobile health monitoring systems. Comput Methods Progr Biomed 149:79–94CrossRef
go back to reference Titus G, Sudhakar M (2017) A simple and efficient algorithm operating with linear time for MCEEG data compression. Aust Phys Eng Sci Med 40:759–768CrossRef Titus G, Sudhakar M (2017) A simple and efficient algorithm operating with linear time for MCEEG data compression. Aust Phys Eng Sci Med 40:759–768CrossRef
go back to reference Ukil A, Bandyopadhyay S, Pal A (2015) IoT data compression: sensor-agnostic approach. In: 2015 data compression conference, pp 303–312 Ukil A, Bandyopadhyay S, Pal A (2015) IoT data compression: sensor-agnostic approach. In: 2015 data compression conference, pp 303–312
go back to reference Zeng K, Yan J, Wang Y, Sik A, Ouyang G, Li X (2016) Automatic detection of absence seizures with compressive sensing EEG. Neurocomputing 171:497–502CrossRef Zeng K, Yan J, Wang Y, Sik A, Ouyang G, Li X (2016) Automatic detection of absence seizures with compressive sensing EEG. Neurocomputing 171:497–502CrossRef
Metadata
Title
Huffman quantization approach for optimized EEG signal compression with transformation technique
Authors
P. Rajasekar
M. Pushpalatha
Publication date
06-03-2020
Publisher
Springer Berlin Heidelberg
Published in
Soft Computing / Issue 19/2020
Print ISSN: 1432-7643
Electronic ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-020-04804-z

Other articles of this Issue 19/2020

Soft Computing 19/2020 Go to the issue

Premium Partner