233 171
Full Length Article
Fusion: Practice and Applications
Volume 14 , Issue 2, PP: 132-145 , 2024 | Cite this article as | XML | Html |PDF

Title

Evolutionary Algorithm with Deep Learning based Fall Detection on Internet of Things Environment

  Elvir Akhmetshin 1 * ,   Alexander Nemtsev 2 ,   Rustem Shichiyakh 3 ,   Denis Shakhov 4 ,   Inna Dedkova 5

1  Candidate of Economic Sciences, Associate Professor of Department of Economics and Management, Kazan Federal University, Elabuga Institute of KFU, Elabuga, Russia.
    (elvir@mail.ru)

2  Candidate of Historical Sciences, Associate Professor of the Department of History and Socio-Cultural Service, Southwest State University, Kursk, Russia.
    (nemtsev.a.d@mail.ru)

3  Candidate of Economic Sciences, Associate Professor of Department of Management, Kuban State Agrarian University named after I.T. Trubilin, Krasnodar, Russia.
    ( shichiyakh.r.a@mail.ru)

4  Candidate of Sociological Sciences, Associate Professor of Department of Economics and Management, Khorezm University, Urgench, Uzbekistan
    (d.a.shkhv@gmail.com)

5  Candidate of Economic Sciences, Associate Professor of Department of Enterprise Economics, Regional and Personnel Management, Kuban State University, Krasnodar, Russia.
    (dedkova-inna@list.ru)


Doi   :   https://doi.org/10.54216/FPA.140211

Received: July 22, 2023 Revised: November 14, 2023 Accepted: January 13, 2024

Abstract :

Falling is among the most threatening event proficient by the ageing population. There is a necessity for the development of the fall detection (FD) system with the increasing ageing population. FD in an Internet of Things (IoT) platform has developed as a vital application with the rapidly increasing population of aging population and the essential for continuous health monitoring. Falls among the ageing can performance in serious injuries, decreased independence, and longer recovery periods. The FD approach can constructed on deep learning (DL) approaches, especially, Recurrent Neural Network (RNN) and Convolutional Neural Network (CNN) are capable in learning difficult patterns from the sensor data. The CNNs investigate the spatial features, but the RNNs approach the temporal dependencies, allowing accurate recognition of fall events. This study presents an Evolutionary Algorithm with Deep Learning based Fall Detection and Classification (EADL-FDC) methodology in the IoT platform. The projected EADL-FDC algorithm allows the DL approaches for the effective recognition and classification of falls for disabled and ageing people. In the presented EADL-FDC technique, the span-partial structure, and attention (SPA-Net) model is utilized for feature extraction purposes. In addition, the symbiotic organism search (SOS) approach was used for the parameter selection of the SPA-Net system. The deep belief network (DBN) model is applied to classify the fall events. Lastly, the moth flame optimization (MFO) algorithm can be utilized to finetune the hyperparameters related to the DBN algorithm. The stimulation analysis of the EADL-FDC method takes place on the fall detection dataset. The experimental outcome depicts the remarkable solution of the EADL-FDC technique over other existing DL methods.

Keywords :

Internet of Things; Fall detection; Elderly/disabled persons; Deep learning; Evolutionary algorithm

References :

 

[1]     Sundaram, B.M., Rajalakshmi, B., Mandal, R.K., Nair, S. and Choudhary, S.S., 2023, January. Fall Detection Among Elderly Using Deep Learning. In 2023 International Conference on Intelligent and Innovative Technologies in Computing, Electrical and Electronics (IITCEE) (pp. 554-558). IEEE.

[2]     Rezaee, K., Khosravi, M.R., Neshat, N. and Moghimi, M.K., 2022. Deep transfer learning-based fall detection approach using IoMT-enabled thermal imaging-assisted pervasive surveillance and big health data. Journal of Circuits, Systems and Computers, 31(12), p.2240005.

[3]     El Zein, H., Mourad-Chehade, F. and Amoud, H., 2023, June. Leveraging Wi-Fi CSI Data for Fall Detection: A Deep Learning Approach. In 2023 5th International Conference on Bio-engineering for Smart Technologies (BioSMART) (pp. 1-4). IEEE.

[4]     Makina, H. and Ben Letaifa, A., 2023. Bringing intelligence to Edge/Fog in Internet of Things‐based healthcare applications: Machine learning/deep learning‐based use cases. International Journal of Communication Systems, 36(9), p.e5484.

[5]     Rivadeneira, J.E., Jiménez, M.B., Marculescu, R., Rodrigues, A., Boavida, F. and Sá Silva, J., 2023, May. A Blockchain-Based Privacy-Preserving Model for Consent and Transparency in Human-Centered Internet of Things. In Proceedings of the 8th ACM/IEEE Conference on Internet of Things Design and Implementation (pp. 301-314).

[6]     Kakarash, Z.A., Karim, S.H.T. and Mohammadi, M., 2020. Fall detection using neural network based on internet of things streaming data. UHD Journal of Science and Technology, 4(2), pp.91-98.

[7]     Jarrah, M., Al Hamadi, H., Abu-Khadrah, A. and Ghazal, T.M., 2023. IoMT-Based Smart Healthcare of Elderly People Using Deep Extreme Learning Machine. Computers, Materials & Continua, 76(1).

[8]     Wang, X., Magno, M., Cavigelli, L. and Benini, L., 2020. FANN-on-MCU: An open-source toolkit for energy-efficient neural network inference at the edge of the Internet of Things. IEEE Internet of Things Journal, 7(5), pp.4403-4417.

[9]     Lian, Z., Wang, W., Han, Z. and Su, C., 2023. Blockchain-Based Personalized Federated Learning for Internet of Medical Things. IEEE Transactions on Sustainable Computing.

[10]   Ahamed, F., Shahrestani, S. and Cheung, H., 2023, June. Privacy-Aware IoT Based Fall Detection with Infrared Sensors and Deep Learning. In International Conference on Interactive Collaborative Robotics (pp. 392-401). Cham: Springer Nature Switzerland.

[11]   Alarifi, A. and Alwadain, A., 2021. Killer heuristic optimized convolution neural network-based fall detection with wearable IoT sensor devices. Measurement, 167, p.108258.

[12]   Othmen, F., Baklouti, M., Lazzaretti, A.E. and Hamdi, M., 2023. Energy-aware IoT-based method for a hybrid on-wrist fall detection system using a supervised dictionary learning technique. Sensors, 23(7), p.3567.

[13]   Vaiyapuri, T., Lydia, E.L., Sikkandar, M.Y., Díaz, V.G., Pustokhina, I.V. and Pustokhin, D.A., 2021. Internet of things and deep learning enabled elderly fall detection model for smart homecare. IEEE Access, 9, pp.113879-113888.

[14]   Zhang, Y., Zheng, X., Liang, W., Zhang, S. and Yuan, X., 2022. Visual surveillance for human fall detection in healthcare IoT. IEEE MultiMedia, 29(1), pp.36-46.

[15]   Chan, H.L., Ouyang, Y., Chen, R.S., Lai, Y.H., Kuo, C.C., Liao, G.S., Hsu, W.Y. and Chang, Y.J., 2023. Deep neural network for the detections of fall and physical activities using foot pressures and inertial sensing. Sensors, 23(1), p.495.

[16]   Chuma, E.L., Roger, L.L.B., De Oliveira, G.G., Iano, Y. and Pajuelo, D., 2020, September. Internet of things (IoT) privacy–protected, fall-detection system for the elderly using the radar sensors and deep learning. In 2020 IEEE International Smart Cities Conference (ISC2) (pp. 1-4). IEEE.

[17]   Kulurkar, P., kumar Dixit, C., Bharathi, V.C., Monikavishnuvarthini, A., Dhakne, A. and Preethi, P., 2023. AI based elderly fall prediction system using wearable sensors: A smart home-care technology with IOT. Measurement: Sensors, 25, p.100614.

[18]   Zhao, K., Yuan, X., Xie, Z., Xiang, Y., Huang, G. and Feng, L., 2023. SPA-Net: A Deep Learning Approach Enhanced Using a Span-Partial Structure and Attention Mechanism for Image Copy-Move Forgery Detection. Sensors, 23(14), p.6430.

[19]   Mohammadzadeh, A., Javaheri, D. and Artin, J., 2023. Chaotic hybrid multi-objective optimization algorithm for scientific workflow scheduling in multisite clouds. Journal of the Operational Research Society, pp.1-22.

[20]   Al-juboori, A.M., Alsaeedi, A.H., Nuiaa, R.R., Alyasseri, Z.A.A., Sani, N.S., Hadi, S.M., Mohammed, H.J., Musawi, B.A. and Amin, M.M., 2023. A hybrid cracked tiers detection system based on adaptive correlation features selection and deep belief neural networks. Symmetry, 15(2), p.358.

[21]   Abuhamdah, A., 2023. Modified Hybrid Moth Optimization Algorithm for PFSS Problem. SN Computer Science, 4(3), p.298.

[22]   E. Auvinet, C. Rougier, J. Meunier, A. S. Arnaud and J. Rousseau, “Multiple cameras fall dataset,” DIROuniversité de montréal, Montreal, QC, Canada, tech. Rep. 1350,” 2010.

[23]   UR Fall Detection (URFD) dataset with an overhead sequence (available at http://fenix.univ.rzeszow.pl/~mkepski/ds/uf.html).

[24]   Eltahir, M.M., Yousif, A., Alrowais, F., Nour, M.K., Marzouk, R., Dafaalla, H., Hassan Elnour, A.A., Aziz, A.S.A. and Hamza, M.A., 2023. Deep Transfer Learning-Enabled Activity Identification and Fall Detection for Disabled People. Computers, Materials & Continua, 75(2).


Cite this Article as :
Style #
MLA Elvir Akhmetshin, Alexander Nemtsev, Rustem Shichiyakh, Denis Shakhov, Inna Dedkova. "Evolutionary Algorithm with Deep Learning based Fall Detection on Internet of Things Environment." Fusion: Practice and Applications, Vol. 14, No. 2, 2024 ,PP. 132-145 (Doi   :  https://doi.org/10.54216/FPA.140211)
APA Elvir Akhmetshin, Alexander Nemtsev, Rustem Shichiyakh, Denis Shakhov, Inna Dedkova. (2024). Evolutionary Algorithm with Deep Learning based Fall Detection on Internet of Things Environment. Journal of Fusion: Practice and Applications, 14 ( 2 ), 132-145 (Doi   :  https://doi.org/10.54216/FPA.140211)
Chicago Elvir Akhmetshin, Alexander Nemtsev, Rustem Shichiyakh, Denis Shakhov, Inna Dedkova. "Evolutionary Algorithm with Deep Learning based Fall Detection on Internet of Things Environment." Journal of Fusion: Practice and Applications, 14 no. 2 (2024): 132-145 (Doi   :  https://doi.org/10.54216/FPA.140211)
Harvard Elvir Akhmetshin, Alexander Nemtsev, Rustem Shichiyakh, Denis Shakhov, Inna Dedkova. (2024). Evolutionary Algorithm with Deep Learning based Fall Detection on Internet of Things Environment. Journal of Fusion: Practice and Applications, 14 ( 2 ), 132-145 (Doi   :  https://doi.org/10.54216/FPA.140211)
Vancouver Elvir Akhmetshin, Alexander Nemtsev, Rustem Shichiyakh, Denis Shakhov, Inna Dedkova. Evolutionary Algorithm with Deep Learning based Fall Detection on Internet of Things Environment. Journal of Fusion: Practice and Applications, (2024); 14 ( 2 ): 132-145 (Doi   :  https://doi.org/10.54216/FPA.140211)
IEEE Elvir Akhmetshin, Alexander Nemtsev, Rustem Shichiyakh, Denis Shakhov, Inna Dedkova, Evolutionary Algorithm with Deep Learning based Fall Detection on Internet of Things Environment, Journal of Fusion: Practice and Applications, Vol. 14 , No. 2 , (2024) : 132-145 (Doi   :  https://doi.org/10.54216/FPA.140211)