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Published in: Wireless Networks 7/2023

09-01-2023

Remote video detection algorithm of sports wrong actions under wireless network

Authors: Hao Liu, Ting Yang

Published in: Wireless Networks | Issue 7/2023

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Abstract

Since there are differences between students' understanding level, it is easy to produce wrong actions during the process of sports teaching. In order to improve the video detection effect, the video fidelity and compression rate, a remote video detection algorithm for sports wrong actions under wireless network is proposed. By extracting key frames in video clips, a real-time video transmission model is established based on wireless network, which transmits key frame extraction results real time with the support of real-time transmission protocol and forward error correction mechanism. The deterministic constrained nonlinear optimization method is used to estimate joint and overall motion parameters. Based on each parameter, the aggregated channel feature method is used to identify the target in the video sequence, and the support vector machine is used as a classifier of sports actions to recognize wrong actions. Then, the multi-scale space of moving images is constructed, the multi-layer box filter is used to simulate Gaussian convolution, and the simulation results are corresponded to the target areas in the remote video of sports wrong actions, thereby realizing the remote video detection of sports wrong actions. The experimental results show that the fidelity rate of the proposed algorithm is always above 90.3%, the compression rate is more than 80%, and only one key point is omitted. This proves that the video fidelity rate and compression rate of this method are high, and the detected key points are the same as the actual key points, which verifies the effectiveness of the proposed algorithm.

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Literature
1.
go back to reference Gråstén, A., & Yli-Piipari, S. (2019). The patterns of moderate to vigorous physical activity and physical education enjoyment through a 2-year school-based program. Journal of School Health, 89(2), 88–98.CrossRef Gråstén, A., & Yli-Piipari, S. (2019). The patterns of moderate to vigorous physical activity and physical education enjoyment through a 2-year school-based program. Journal of School Health, 89(2), 88–98.CrossRef
2.
go back to reference Guzman-Pando, A., Chacon-Murguia, M. I., & Chacon-Diaz, L. B. (2020). Human-like evaluation method for object motion detection algorithms. IET Computer Vision, 14(8), 674–682.CrossRef Guzman-Pando, A., Chacon-Murguia, M. I., & Chacon-Diaz, L. B. (2020). Human-like evaluation method for object motion detection algorithms. IET Computer Vision, 14(8), 674–682.CrossRef
3.
go back to reference Park, J. S., Park, C., & Manocha, D. (2019). I-Planner: Intention-aware motion planning using learning-based human motion prediction. The International Journal of Robotics Research, 38(1), 23–39.CrossRef Park, J. S., Park, C., & Manocha, D. (2019). I-Planner: Intention-aware motion planning using learning-based human motion prediction. The International Journal of Robotics Research, 38(1), 23–39.CrossRef
4.
go back to reference Jiménez Bascones, J. L., Graña, M., & Lopez-Guede, J. M. (2019). Robust labeling of human motion markers in the presence of occlusions. Neurocomputing, 353(11), 96–105.CrossRef Jiménez Bascones, J. L., Graña, M., & Lopez-Guede, J. M. (2019). Robust labeling of human motion markers in the presence of occlusions. Neurocomputing, 353(11), 96–105.CrossRef
5.
go back to reference Yang, T., Zhu, X. A., & Zhang, F. (2021). Fake face video detection method based on improved triplet loss. Application Research of Computers, 38(12), 3771–3775. Yang, T., Zhu, X. A., & Zhang, F. (2021). Fake face video detection method based on improved triplet loss. Application Research of Computers, 38(12), 3771–3775.
6.
go back to reference Li, Y. D., & Xu, X. P. (2019). Video saliency detection method based on spatiotemporal features of superpixels. Acta Optica Sinica, 39(01), 315–322. Li, Y. D., & Xu, X. P. (2019). Video saliency detection method based on spatiotemporal features of superpixels. Acta Optica Sinica, 39(01), 315–322.
7.
go back to reference Yao, P. (2022). Key frame extraction method of music and dance video based on multicore learning feature fusion. Scientific Programming, 2022(7), 1–8. Yao, P. (2022). Key frame extraction method of music and dance video based on multicore learning feature fusion. Scientific Programming, 2022(7), 1–8.
8.
go back to reference Tran, T. H., & Chen, L. (2021). Wall shear-stress extraction by an optical flow algorithm with a sub-grid formulation. Acta Mechanica Sinica, 37(1), 65–79.MathSciNetCrossRef Tran, T. H., & Chen, L. (2021). Wall shear-stress extraction by an optical flow algorithm with a sub-grid formulation. Acta Mechanica Sinica, 37(1), 65–79.MathSciNetCrossRef
10.
go back to reference Panda, S., & Nanda, P. K. (2021). Kernel density estimation and correntropy based background modeling and camera model parameter estimation for underwater video object detection. Soft Computing, 25(15), 10477–10496.CrossRef Panda, S., & Nanda, P. K. (2021). Kernel density estimation and correntropy based background modeling and camera model parameter estimation for underwater video object detection. Soft Computing, 25(15), 10477–10496.CrossRef
11.
go back to reference González, B. J., & Negrína, E. R. (2019). On operators with complex Gaussian kernels over Lp spaces. Filomat, 33(9), 2861–2866.MathSciNetCrossRef González, B. J., & Negrína, E. R. (2019). On operators with complex Gaussian kernels over Lp spaces. Filomat, 33(9), 2861–2866.MathSciNetCrossRef
13.
go back to reference Raufmehr, F., Salehi, M. R., & Abiri, E. (2021). A frame-level MLP-based bit-rate controller for real-time video transmission using VVC standard. Journal of Real-Time Image Processing, 18(3), 751–763.CrossRef Raufmehr, F., Salehi, M. R., & Abiri, E. (2021). A frame-level MLP-based bit-rate controller for real-time video transmission using VVC standard. Journal of Real-Time Image Processing, 18(3), 751–763.CrossRef
14.
go back to reference Liu, Y., Tang, S., Wu, H. T., & Zhang, X. (2019). RTPT: A framework for real-time privacy-preserving truth discovery on crowdsensed data streams. Computer Networks, 148(15), 349–360.CrossRef Liu, Y., Tang, S., Wu, H. T., & Zhang, X. (2019). RTPT: A framework for real-time privacy-preserving truth discovery on crowdsensed data streams. Computer Networks, 148(15), 349–360.CrossRef
16.
go back to reference Abdellaoui, M., & Douik, A. (2020). Human action recognition in video sequences using deep belief networks. Traitement du Signal, 37(1), 37–44.CrossRef Abdellaoui, M., & Douik, A. (2020). Human action recognition in video sequences using deep belief networks. Traitement du Signal, 37(1), 37–44.CrossRef
17.
go back to reference Ananth, C., & Brabin, D. (2020). Enhancing segmentation approaches from Gaussian mixture model and expected maximization to super pixel division algorithm. Sylwan, 164(4), 15–32. Ananth, C., & Brabin, D. (2020). Enhancing segmentation approaches from Gaussian mixture model and expected maximization to super pixel division algorithm. Sylwan, 164(4), 15–32.
18.
go back to reference Rajasekar, V., Premalatha, J., & Sathya, K. (2021). Cancelable Iris template for secure authentication based on random projection and double random phase encoding. Peer-to-Peer Networking and Applications, 14(4), 1–16. Rajasekar, V., Premalatha, J., & Sathya, K. (2021). Cancelable Iris template for secure authentication based on random projection and double random phase encoding. Peer-to-Peer Networking and Applications, 14(4), 1–16.
19.
go back to reference Borges, F., Pinto, A., Ribeiro, D., Barbosa, T., & Ferreira, D. (2020). An unsupervised method based on support vector machines and higher-order statistics for mechanical faults detection. IEEE Latin America Transactions, 18(6), 1093–1101.CrossRef Borges, F., Pinto, A., Ribeiro, D., Barbosa, T., & Ferreira, D. (2020). An unsupervised method based on support vector machines and higher-order statistics for mechanical faults detection. IEEE Latin America Transactions, 18(6), 1093–1101.CrossRef
20.
go back to reference Liao, R., & Tao, B. H. (2021). Wireless video monitoring design based on HI3518EV200. Electronic Design Engineering, 29(15), 5. Liao, R., & Tao, B. H. (2021). Wireless video monitoring design based on HI3518EV200. Electronic Design Engineering, 29(15), 5.
21.
go back to reference Vatavu, A., Rahm, M., Govindachar, S., Krehl, G., & Maile, M. (2021). From particles to self-localizing tracklets: A multilayer particle filter-based estimation for dynamic grid maps. IEEE Intelligent Transportation Systems Magazine, 12(4), 149–168.CrossRef Vatavu, A., Rahm, M., Govindachar, S., Krehl, G., & Maile, M. (2021). From particles to self-localizing tracklets: A multilayer particle filter-based estimation for dynamic grid maps. IEEE Intelligent Transportation Systems Magazine, 12(4), 149–168.CrossRef
22.
go back to reference Tu, Y., Lin, Y., & Zha, H. (2022). Large-scale real-world radio signal recognition with deep learning. Chinese Journal of Aeronautics, 35(9), 35–48.CrossRef Tu, Y., Lin, Y., & Zha, H. (2022). Large-scale real-world radio signal recognition with deep learning. Chinese Journal of Aeronautics, 35(9), 35–48.CrossRef
23.
go back to reference Shuai, L., Peng, G., Yating, L., Weina, F., & Weiping, D. (2023). Multi-modal fusion network with complementarity and importance for emotion recognition. Information Sciences, 619, 679–694.CrossRef Shuai, L., Peng, G., Yating, L., Weina, F., & Weiping, D. (2023). Multi-modal fusion network with complementarity and importance for emotion recognition. Information Sciences, 619, 679–694.CrossRef
Metadata
Title
Remote video detection algorithm of sports wrong actions under wireless network
Authors
Hao Liu
Ting Yang
Publication date
09-01-2023
Publisher
Springer US
Published in
Wireless Networks / Issue 7/2023
Print ISSN: 1022-0038
Electronic ISSN: 1572-8196
DOI
https://doi.org/10.1007/s11276-022-03227-y

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