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Journal of Intelligent Systems and Internet of Things
Volume 9 , Issue 2, PP: 93-107 , 2023 | Cite this article as | XML | Html |PDF

Title

Modeling Sports Event Tasks in Augmentative and Alternative Communication Using Deep Learning

  Noora Hani Sherif 1 * ,   Eay Fahidhil 2 ,   Najlaa Nsrulaah Faris 3 ,   Hussein Alaa Diame 4 ,   Raaid Alubady 5 ,   Seifedine Kadry 6

1  Computer Technologies Engineering, Al-Turath University College, Baghdad, Iraq
    (noura.hani@turath.edu.iq)

2  Medical instruments engineering techniques, Al-farahidi University, Baghdad, Iraq
    (EayFahidhil@uoalfarahidi.edu.iq)

3  Department of Medical Devices Engineering Technologies, National University of Science and Technology, Dhi Qar, Nasiriyah, Iraq
    (najlaa.faris@nust.edu.iq)

4  Technical Computer Engineering Department, Al-Kunooze University College, Basrah, Iraq 5Technical Engineering College, Al-Ayen University, Thi-Qar, Iraq
    (Hussein.Alaa@kunoozu.edu.Iq)

5  Technical Engineering College, Al-Ayen University, Thi-Qar, Iraq
    (alubadyraaid@alayen.edu.iq)

6  Department of Applied Data Science, Noroff University College, Kristiansand, Norway ; Artificial Intelligence Research Center (AIRC), Ajman University, Ajman, 346, United Arab Emirates; Department of Electrical and Computer Engineering, Lebanese American University, Byblos, Lebanon
    (skadry@gmail.com)


Doi   :   https://doi.org/10.54216/JISIoT.090207

Received: February 21, 2023 Revised: May 13, 2023 Accepted: September 04, 2023

Abstract :

Rapid changes in modern technology and sports have impacted society and lifestyle. Augmentative and Alternative Communication (AAC) technology helps to speak and play videos in various sports applications. In the current sports event, AAC's utilization to validate the players' complex moves exclusively has been considered a significant challenge that includes athlete moves in athletics and penalty shots in Soccer. Deep Learning-based Video Segmentation and Video mining (DL-VSVM) with eyeball tracking assistance are proposed to validate the task modeling of sports event video streaming in AAC. The user could select the specific event in the sport and sub-event using eyeball tracking assistance. The AAC is installed with unique icons to identify circumstances. A deep learning-based Sports Task model is created to recognize the required data to be streamed, and the model will help them view the specific sports event they need to watch. The numerical outcomes demonstrate that the suggested DL-VSVM model enhances the segmentation accuracy ratio of 95.3%, tracking ratio of 97.6%, prediction ratio of 98.7%, and reduces the cost function of 5.6% and the error rate of 20.1% compared to other existing models.

Keywords :

Segmentation; deep learning; video streaming Task model and eyeball tracking.

References :

[1]    Fakhar, B., Kanan, H. R., & Behrad, A. (2019). Event detection in soccer videos using unsupervised learning of Spatio-temporal features based on pooled spatial pyramid model. Multimedia Tools and Applications, 78(12), 16995-17025.

[2]    Yassine, S., Kadry, S., & Sicilia, M. A. (2020). Statistical Profiles of Users' Interactions with Videos in Large Repositories: Mining of Khan Academy Repository. KSII Transactions on Internet and Information Systems (TIIS), 14(5), 2101-2121.

[3]    Gao, Y., Wei, X., & Zhou, L. (2020). Personalized QoE improvement for networking video service. IEEE Journal on Selected Areas in Communications, 38(10), 2311-2323.

[4]    Kumar, N., Lee, J. H., & Rodrigues, J. J. (2014). Intelligent mobile video surveillance system as a Bayesian coalition game in vehicular sensor networks: Learning automata approach. IEEE Transactions on Intelligent Transportation Systems, 16(3), 1148-1161.

[5]    Cuevas, C., Quilon, D., & Garcia, N. (2020). Techniques and applications for soccer video analysis: A survey. Multimedia Tools and Applications, 79(39), 29685-29721.

[6]    D. M. Ramírez Guerra, Y. M. Gordo Gómez,L. J. Cevallos Torres, F. G. Palacios Ortiz, Social sports Competition Scoring System Design Using Single Value Neutrosophic Environment, International Journal of Neutrosophic Science, Vol. 19 , No. 1 , (2022) : 389-402 (Doi   :  https://doi.org/10.54216/IJNS.190135)

[7]    Wang, A., Gao, X., & Tang, M. (2020). Computer Supported Data-driven Decisions for Service Personalization: A Variable-Scale Clustering Method. Studies in Informatics and Control, 29(1), 55-65.

[8]    Su, H., Chang, Y. K., Lin, Y. J., & Chu, I. H. (2015). Effects of training using an active video game on agility and balance. The Journal of sports medicine and physical fitness, 55(9), 914-921.

[9]    Huifeng, W., Kadry, S. N., & Raj, E. D. (2020). Continuous health monitoring of sportsperson using IoT devices based wearable technology. Computer Communications, 160, 588-595.

[10] Huifeng, W., Shankar, A., & Vivekananda, G. N. (2020). Modelling and simulation of sprinters’ health promotion strategy based on sports biomechanics. Connection Science, 1-19.

[11] Anjum, M. A., Amin, J., Sharif, M., Khan, H. U., Malik, M. S. A., & Kadry, S. (2020). Deep Semantic Segmentation and Multi-Class Skin Lesion Classification Based on Convolutional Neural Network. IEEE Access, 8, 129668-129678.

[12] Zhao, J., Li, K., Xi, X., Wang, S., Saravanan, V., & Samuel, R. D. J. (2020). Analysis of complex cognitive task and pattern recognition using distributed patterns of EEG signals with cognitive functions. Neural Computing and Applications, 1-10.

[13] Sharma, D., & Kumar, N. (2017). A review on machine learning algorithms, tasks and applications. International Journal of Advanced Research in Computer Engineering & Technology (IJARCET), 6(10), 2278-1323.

[14] Ji, F., Hsu, C. H., & Montenegro-Marin, C. E. (2020). Evaluating and recognizing stressful periods and events of urban migrant children from microblog. Current Psychology, 1-9

[15] Xu, X., Chen, Y., Zhang, J., Chen, Y., Anandhan, P., & Manickam, A. (2020). A novel approach for scene classification from remote sensing images using deep learning methods. European Journal of Remote Sensing, 1-13.

[16] Ali, M.H., Al-Azzawi, W.K., Jaber, M., Abd, S.K., Alkhayyat, A., and Rasool, Z.I., 2022. Improving coal mine safety with internet of things (IoT) based Dynamic Sensor Information Control System. Physics and Chemistry of the Earth, 128.

[17]  Saeed Kolahi-Randji, S., Nejad Attari, M.Y. & Ala. A. (2023). Enhancement the Performance of Multi-Level and Multi-Commodity in Supply Chain: A Simulation Approach. Journal of Soft Computing and Decision Analytics, 1(1), 18-38. https://doi.org/10.31181/jscda1120232

[18] Islam, M., Mahmood, A. N., Watters, P., & Alazab, M. (2019). Forensic Detection of Child Exploitation Material Using Deep Learning. In Deep Learning Applications for Cyber Security (pp. 211-219). Springer, Cham.

[19] Shi, J., Yuan, X., Elhoseny, M., & Yuan, X. (2020). Weakly supervised deep learning for objects detection from images. In Urban Intelligence and Applications (pp. 231-242). Springer, Cham.

[20] Cust, E. E., Sweeting, A. J., Ball, K., & Robertson, S. (2019). Machine and deep learning for sport-specific movement recognition: a systematic review of model development and performance. Journal of sports sciences, 37(5), 568-600.

[21] Javed, A., Irtaza, A., Khaliq, Y., Malik, H., & Mahmood, M. T. (2019). Replay and key-events detection for sports video summarization using confined elliptical local ternary patterns and extreme learning machine. Applied Intelligence, 49(8), 2899-2917.

[22] Rafiq, M., Rafiq, G., Agyeman, R., Choi, G. S., & Jin, S. I. (2020). Scene classification for sports video summarization using transfer learning. Sensors, 20(6), 1702.

[23] Mostafa, S. A., Gunasekaran, S. S., Mustapha, A., Mohammed, M. A., & Abduallah, W. M. (2020). Modelling an adjustable autonomous multi-agent internet of things system for elderly smart home. In Advances in Neuroergonomics and Cognitive Engineering: Proceedings of the AHFE 2019 International Conference on Neuroergonomics and Cognitive Engineering, and the AHFE International Conference on Industrial Cognitive Ergonomics and Engineering Psychology, July 24-28, 2019, Washington DC, USA 10 (pp. 301-311). Springer International Publishing.


Cite this Article as :
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MLA Noora Hani Sherif, Eay Fahidhil, Najlaa Nsrulaah Faris, Hussein Alaa Diame, Raaid Alubady, Seifedine Kadry. "Modeling Sports Event Tasks in Augmentative and Alternative Communication Using Deep Learning." Journal of Intelligent Systems and Internet of Things, Vol. 9, No. 2, 2023 ,PP. 93-107 (Doi   :  https://doi.org/10.54216/JISIoT.090207)
APA Noora Hani Sherif, Eay Fahidhil, Najlaa Nsrulaah Faris, Hussein Alaa Diame, Raaid Alubady, Seifedine Kadry. (2023). Modeling Sports Event Tasks in Augmentative and Alternative Communication Using Deep Learning. Journal of Journal of Intelligent Systems and Internet of Things, 9 ( 2 ), 93-107 (Doi   :  https://doi.org/10.54216/JISIoT.090207)
Chicago Noora Hani Sherif, Eay Fahidhil, Najlaa Nsrulaah Faris, Hussein Alaa Diame, Raaid Alubady, Seifedine Kadry. "Modeling Sports Event Tasks in Augmentative and Alternative Communication Using Deep Learning." Journal of Journal of Intelligent Systems and Internet of Things, 9 no. 2 (2023): 93-107 (Doi   :  https://doi.org/10.54216/JISIoT.090207)
Harvard Noora Hani Sherif, Eay Fahidhil, Najlaa Nsrulaah Faris, Hussein Alaa Diame, Raaid Alubady, Seifedine Kadry. (2023). Modeling Sports Event Tasks in Augmentative and Alternative Communication Using Deep Learning. Journal of Journal of Intelligent Systems and Internet of Things, 9 ( 2 ), 93-107 (Doi   :  https://doi.org/10.54216/JISIoT.090207)
Vancouver Noora Hani Sherif, Eay Fahidhil, Najlaa Nsrulaah Faris, Hussein Alaa Diame, Raaid Alubady, Seifedine Kadry. Modeling Sports Event Tasks in Augmentative and Alternative Communication Using Deep Learning. Journal of Journal of Intelligent Systems and Internet of Things, (2023); 9 ( 2 ): 93-107 (Doi   :  https://doi.org/10.54216/JISIoT.090207)
IEEE Noora Hani Sherif, Eay Fahidhil, Najlaa Nsrulaah Faris, Hussein Alaa Diame, Raaid Alubady, Seifedine Kadry, Modeling Sports Event Tasks in Augmentative and Alternative Communication Using Deep Learning, Journal of Journal of Intelligent Systems and Internet of Things, Vol. 9 , No. 2 , (2023) : 93-107 (Doi   :  https://doi.org/10.54216/JISIoT.090207)