Video analysis and data-driven tactical optimization of sports football matches: Visual recognition and strategy analysis algorithm
Abstract
For the purpose of this research, an original technique to assess football matches is described. The strategy makes use of a set of innovative algorithms for Strategic Analysis (SA) and Visual Recognition (VR). The approach, as mentioned above, has been designed around a virtual reality (VR) platform that is centered on YOLOv5 and successfully monitors the actions of both players and the ball in real-time. With the guidance of Markov Chain Models (MCM), the resulting information is processed and evaluated in order to find correlations in player location and actions. This enables an in-depth comprehension of the tactics and plans the team’s management executes. One of the most significant components of the research project is the exploration of multiple approximation techniques with the aim of enhancing frame analysis performance. Furthermore, threshold scaling was executed in order to attain maximum accuracy in detection, and an approach for Steady-State Analysis (SSA) is being created in order to analyze the long-term strategic positions of teammates. This complete method can run on sophisticated knowledge of in-game tactics, and it also serves as a tool for trainers and players who want to increase the effectiveness of the teams they coach and counteract strategies used by the opposing team.
Keywords
Full Text:
PDFReferences
1. Fernández de la Rosa J. A framework for the analytical and visual interpretation of complex spatiotemporal dynamics in soccer.
2. Mumford S. Football: the philosophy behind the game. John Wiley & Sons; 2019.
3. Li Y. When Moneyball Meets the Beautiful Game: A Predictive Analytics Approach to Exploring Key Drivers for Soccer Player Valuation.
4. Bauer MSP, Ingbert S. Automated Detection of Complex Tactical Patterns in Football.
5. Rønningen MH. The genesis of data-driven decision-making in the world of soccer tactics: deciphering the potential of big data [Master’s thesis]. University of Agder; 2021.
6. Jocher G, Stoken A, Borovec J, et al. ultralytics/yolov5: v3. 0. Zenodo; 2020.
7. Suhr JK. Kanade-lucas-tomasi (KLT) feature tracker. Computer Vision (EEE6503); 2009.
8. Cioppa A, Giancola S, Deliege A, et al. SoccerNet-Tracking: Multiple Object Tracking Dataset and Benchmark in Soccer Videos. 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW). Published online June 2022. doi: 10.1109/cvprw56347.2022.00393
9. Shaik AA, Mareedu VDP, Polurie VVK. Learning multiview deep features from skeletal sign language videos for recognition. Turkish Journal of Electrical Engineering & Computer Sciences. 2021; 29(2): 1061-1076. doi: 10.3906/elk-2005-57
10. Ghuge A, Prakash VC, Ruikar SD. Systematic analysis and review of video object retrieval techniques. Control and Cybernetics. 2020; 49(4): 471–498.
11. Ghuge CA, Chandra Prakash V, Ruikar SD. Weighed query-specific distance and hybrid NARX neural network for video object retrieval. The Computer Journal. 2019; 63(11): 1738-1755. doi: 10.1093/comjnl/bxz113
12. Victoria DrAH, Manikanthan SV, H R DrV, et al. Radar Based Activity Recognition using CNN-LSTM Network Architecture. International Journal of Communication Networks and Information Security (IJCNIS). 2023; 14(3): 303-312. doi: 10.17762/ijcnis.v14i3.5630
13. Shaik AA, Mareedu VDP, Polurie VVK. Learning multiview deep features from skeletal sign language videos for recognition. Turkish Journal of Electrical Engineering & Computer Sciences. 2021; 29(2): 1061-1076. doi: 10.3906/elk-2005-57
14. Appathurai A, Sundarasekar R, Raja C, et al. An Efficient Optimal Neural Network-Based Moving Vehicle Detection in Traffic Video Surveillance System. Circuits, Systems, and Signal Processing. 2019; 39(2): 734-756. doi: 10.1007/s00034-019-01224-9
15. Balamurugan D, Aravinth SS, Reddy PCS, et al. Multiview Objects Recognition Using Deep Learning-Based Wrap-CNN with Voting Scheme. Neural Processing Letters. 2022; 54(3): 1495-1521. doi: 10.1007/s11063-021-10679-4
16. Bhavana D, Kishore Kumar K, Bipin Chandra M, et al. Hand Sign Recognition using CNN. International Journal of Performability Engineering. 2021; 17(3): 314. doi: 10.23940/ijpe.21.03.p7.314321
17. Kumar EK, Kishore PVV, Kiran Kumar MT, et al. 3D sign language recognition with joint distance and angular coded color topographical descriptor on a 2 – stream CNN. Neurocomputing. 2020; 372: 40-54. doi: 10.1016/j.neucom.2019.09.059
18. Ghuge C, Prakash V, Ruikar S. An Integrated Approach Using Optimized Naive Bayes Classifier and Optical Flow Orientation for Video Object Retrieval. International Journal of Intelligent Engineering and Systems. 2021; 14(3): 210-221. doi: 10.22266/ijies2021.0630.19
19. Gullapelly A, Banik BG. Exploring the techniques for object detection, classification, and tracking in video surveillance for crowd analysis. Indian Journal of Computer Science and Engineering. 2020; 11(4): 321–326.
20. Saha J, Chowdhury C, Ghosh D, et al. A detailed human activity transition recognition framework for grossly labeled data from smartphone accelerometer. Multimedia Tools and Applications. 2020; 80(7): 9895-9916. doi: 10.1007/s11042-020-10046-w
21. Yadav J, Misra M, Rana NP, et al. Exploring the synergy between nano-influencers and sports community: behavior mapping through machine learning. Information Technology & People. 2021; 35(7): 1829-1854. doi: 10.1108/itp-03-2021-0219
22. Yadav J, Misra M, Rana NP, et al. Netizens’ behavior towards a blockchain-based esports framework: a TPB and machine learning integrated approach. International Journal of Sports Marketing and Sponsorship. 2021; 23(4): 665-683. doi: 10.1108/ijsms-06-2021-0130
23. Mohan KK, Prasad CR, Kishore PVV. Yolo V2 with bifold skip: A deep learning model for video-based real-time train bogie part identification and defect detection. Journal of Engineering Science and Technology. 2021; 16(3): 2166–2190.
24. Krishnamohan K, Prasad ChR, Kishore PVV. Train rolling stock video segmentation and classification for bogie part inspection automation: a deep learning approach. Journal of Engineering and Applied Science. 2022; 69(1). doi: 10.1186/s44147-022-00128-x
25. Raju K, et al. A robust and accurate video watermarking system based on SVD hybridation for performance assessment. International Journal of Engineering Trends and Technology. 2020; 68(7): 19–24.
26. Suneetha M, Prasad MVD, Kishore PVV. Sharable and unshareable within class multi view deep metric latent feature learning for video-based sign language recognition. Multimedia Tools and Applications. 2022; 81(19): 27247-27273. doi: 10.1007/s11042-022-12646-0
27. Suneetha M, Prasad MVD, Kishore PVV. Multi-view motion modelled deep attention networks (M2DA-Net) for video-based sign language recognition. Journal of Visual Communication and Image Representation. 2021; 78.
28. Wagdarikar AMU, Senapati RK. A secure communication approach in OFDM using optimized interesting region-based video watermarking. International Journal of Pervasive Computing and Communications. 2020; 18(2): 171-194. doi: 10.1108/ijpcc-05-2019-0044
29. Janarthanan P, Murugesh V, Sivakumar N, et al. An Efficient Face Detection and Recognition System Using RVJA and SCNN. Hemanth J, ed. Mathematical Problems in Engineering. 2022; 2022: 1-9. doi: 10.1155/2022/7117090
30. Priyadharshini, Gomathi T. Naive Bayes classifier for wireless capsule endoscopy video to detect bleeding frames. International Journal of Scientific and Technology Research. 2020; 9(1): 3286–3291.
31. Ali SA, Prasad MVD, Kishore PVV. Ranked Multi-View Skeletal Video-Based Sign Language Recognition With Triplet Loss Embeddings. Journal of Engineering Science and Technology. 2022; 17(6): 4367–4397.
32. Pande SD, Chetty MSR. Linear Bezier Curve Geometrical Feature Descriptor for Image Recognition. Recent Advances in Computer Science and Communications. 2020; 13(5): 930-941. doi: 10.2174/2213275912666190617155154
33. Depuru S, Nandam A, Ramesh PA, et al. Human Emotion Recognition System Using Deep Learning Technique. Journal of Pharmaceutical Negative Results. 2022; 13(4): 1031–1035.
34. Ali SKA, Prasad MVD, Kumar PP, et al. Deep Multi View Spatio Temporal Spectral Feature Embedding on Skeletal Sign Language Videos for Recognition. International Journal of Advanced Computer Science and Applications. 2022; 13(4). doi: 10.14569/ijacsa.2022.0130494
35. Rani S, Ghai D, Kumar S. Reconstruction of Simple and Complex Three Dimensional Images Using Pattern Recognition Algorithm. Journal of Information Technology Management. 2022; 14: 235–247.
36. Rani S, Ghai D, Kumar S, et al. Efficient 3D AlexNet Architecture for Object Recognition Using Syntactic Patterns from Medical Images. Computational Intelligence and Neuroscience. 2022.
37. Kotkar VA. Scalable Anomaly Detection Framework in Video Surveillance Using Keyframe Extraction and Machine Learning Algorithms. Journal of Advanced Research in Dynamical and Control Systems. 2020; 12(7): 395-408. doi: 10.5373/jardcs/v12i7/20202020
38. Li X, Manivannan P, Anand M. Task Modelling of Sports Event for Personalized Video Streaming Data in Augmentative and Alternative Communication. Journal of Interconnection Networks. 2022; 22(Supp01). doi: 10.1142/s0219265921410279
DOI: https://doi.org/10.32629/jai.v7i5.1581
Refbacks
- There are currently no refbacks.
Copyright (c) 2024 Biao Jin
License URL: https://creativecommons.org/licenses/by-nc/4.0/