Short-term memory neural network-based cognitive computing in sports training complexity pattern recognition

被引:5
作者
Wu, Guang [1 ]
Ji, Hang [2 ]
机构
[1] Chongqing Technol & Business Univ, Coll Phys Educ, Chongqing 400067, Nanan, Peoples R China
[2] Shijiazhuang Sch Arts, Shijiazhuang 050800, Hebei, Peoples R China
关键词
Basic principles of physical training; Sports complexity; Artificial intelligence network model; Sports data fitting algorithm;
D O I
10.1007/s00500-021-06568-6
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
With the development of Chinese sports, many sports training researchers try to use artificial intelligence technology to study the training methods and training elements of athletes. However, in reality, these methods are often based on different basic training principles, resulting in the reduction in the generalization ability of artificial intelligence networks. This paper studies the complexity of sports training principles by using an artificial intelligence network model. Based on the improved model of dropout optimization algorithm, this paper proposes an artificial intelligence sports training node prediction method based on the combination of dropout optimization algorithm and short-term memory neural network (LSTM), which avoids the establishment of complex sports training models. Based on artificial intelligence operation and maintenance records and sports training core capacity experimental data, the maximum node static estimation of artificial intelligence sports training is realized. The research shows that the node prediction model is established by using the method described in this paper. Through experimental comparison and analysis, the model has high prediction accuracy. Due to the state memory function of LSTM, it has advantages in the prediction of 2000 data on a long time scale. The mean absolute error percentage of the prediction results is less than 3.4%, and the maximum absolute error percentage is less than 5.2%. The artificial intelligence network model in this paper has good generalization ability. Compared with other models, the model proposed in this paper can get more accurate prediction results in sports training of different groups and effectively alleviate the problem of overfitting. Therefore, traditional stadiums and gymnasiums should actively introduce artificial intelligence technology with a more positive attitude, to realize the development and innovation in technology application, service innovation, management efficiency, and function integration.
引用
收藏
页码:439 / 439
页数:16
相关论文
共 25 条
[1]   Artificial intelligence and echocardiography [J].
Alsharqi M. ;
Woodward W.J. ;
Mumith J.A. ;
Markham D.C. ;
Upton R. ;
Leeson P. .
Echo Research & Practice, 2018, 5 (4) :R115-R126
[2]   Automated cardiovascular magnetic resonance image analysis with fully convolutional networks [J].
Bai, Wenjia ;
Sinclair, Matthew ;
Tarroni, Giacomo ;
Oktay, Ozan ;
Rajchl, Martin ;
Vaillant, Ghislain ;
Lee, Aaron M. ;
Aung, Nay ;
Lukaschuk, Elena ;
Sanghvi, Mihir M. ;
Zemrak, Filip ;
Fung, Kenneth ;
Paiva, Jose Miguel ;
Carapella, Valentina ;
Kim, Young Jin ;
Suzuki, Hideaki ;
Kainz, Bernhard ;
Matthews, Paul M. ;
Petersen, Steffen E. ;
Piechnik, Stefan K. ;
Neubauer, Stefan ;
Glocker, Ben ;
Rueckert, Daniel .
JOURNAL OF CARDIOVASCULAR MAGNETIC RESONANCE, 2018, 20
[3]   Deep Learning Techniques for Automatic MRI Cardiac Multi-Structures Segmentation and Diagnosis: Is the Problem Solved? [J].
Bernard, Olivier ;
Lalande, Alain ;
Zotti, Clement ;
Cervenansky, Frederick ;
Yang, Xin ;
Heng, Pheng-Ann ;
Cetin, Irem ;
Lekadir, Karim ;
Camara, Oscar ;
Gonzalez Ballester, Miguel Angel ;
Sanroma, Gerard ;
Napel, Sandy ;
Petersen, Steffen ;
Tziritas, Georgios ;
Grinias, Elias ;
Khened, Mahendra ;
Kollerathu, Varghese Alex ;
Krishnamurthi, Ganapathy ;
Rohe, Marc-Michel ;
Pennec, Xavier ;
Sermesant, Maxime ;
Isensee, Fabian ;
Jaeger, Paul ;
Maier-Hein, Klaus H. ;
Full, Peter M. ;
Wolf, Ivo ;
Engelhardt, Sandy ;
Baumgartner, Christian F. ;
Koch, Lisa M. ;
Wolterink, Jelmer M. ;
Isgum, Ivana ;
Jang, Yeonggul ;
Hong, Yoonmi ;
Patravali, Jay ;
Jain, Shubham ;
Humbert, Olivier ;
Jodoin, Pierre-Marc .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2018, 37 (11) :2514-2525
[4]   Deep Learning-based Prescription of Cardiac MRI Planes [J].
Blansit, Kevin ;
Retson, Tara ;
Masutani, Evan ;
Bahrami, Naeim ;
Hsiao, Albert .
RADIOLOGY-ARTIFICIAL INTELLIGENCE, 2019, 1 (06)
[5]   A novel two-dimensional echocardinarraphic image analysis system using artificial intelligence-learned pattern recognition for rapid automated ejection fraction [J].
Cannesson, Maxime ;
Tanabe, Masaki ;
Suffoletto, Matthew S. ;
McNamara, Dennis M. ;
Madan, Shobhit ;
Lacomis, Joan M. ;
Gorcsan, John, III .
JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2007, 49 (02) :217-226
[6]  
Carmel H., 2019, J CARDIOVASC MAGN R, V15, P55
[7]   General cardiovascular risk profile for use in primary care - The Framingham Heart Study [J].
D'Agostino, Ralph B. ;
Vasan, Ramachandran S. ;
Pencina, Michael J. ;
Wolf, Philip A. ;
Cobain, Mark ;
Massaro, Joseph M. ;
Kannel, William B. .
CIRCULATION, 2008, 117 (06) :743-753
[8]   Machine Learning-Based Three-Dimensional Echocardiographic Quantification of Right Ventricular Size and Function: Validation Against Cardiac Magnetic Resonance [J].
Genovese, Davide ;
Rashedi, Nina ;
Weinert, Lynn ;
Narang, Akhil ;
Addetia, Karima ;
Patel, Amit R. ;
Prater, David ;
Goncalves, Alexandra ;
Mor-Avi, Victor ;
Lang, Roberto M. .
JOURNAL OF THE AMERICAN SOCIETY OF ECHOCARDIOGRAPHY, 2019, 32 (08) :969-977
[9]  
Goff DC., 2013, CIRCULATION, V2014, P129, DOI [DOI 10.1161/01.CIR.0000437741.48606, DOI 10.1161/01.CIR.0000437741.48606.98]
[10]   Real-time cardiovascular MR with spatio-temporal artifact suppression using deep learning-proof of concept in congenital heart disease [J].
Hauptmann, Andreas ;
Arridge, Simon ;
Lucka, Felix ;
Muthurangu, Vivek ;
Steeden, Jennifer A. .
MAGNETIC RESONANCE IN MEDICINE, 2019, 81 (02) :1143-1156