Skip to main content
Top
Published in: Sports Medicine 1/2017

01-01-2017 | Leading Article

Current Approaches to Tactical Performance Analyses in Soccer Using Position Data

Authors: Daniel Memmert, Koen A. P. M. Lemmink, Jaime Sampaio

Published in: Sports Medicine | Issue 1/2017

Login to get access

Abstract

Tactical match performance depends on the quality of actions of individual players or teams in space and time during match-play in order to be successful. Technological innovations have led to new possibilities to capture accurate spatio-temporal information of all players and unravel the dynamics and complexity of soccer matches. The main aim of this article is to give an overview of the current state of development of the analysis of position data in soccer. Based on the same single set of position data of a high-level 11 versus 11 match (Bayern Munich against FC Barcelona) three different promising approaches from the perspective of dynamic systems and neural networks will be presented: Tactical performance analysis revealed inter-player coordination, inter-team and inter-line coordination before critical events, as well as team-team interaction and compactness coefficients. This could lead to a multi-disciplinary discussion on match analyses in sport science and new avenues for theoretical and practical implications in soccer.
Literature
1.
go back to reference Ali A. Measuring soccer skill performance: a review. Scand J Med Sci Sports. 2011;11:170–83.CrossRef Ali A. Measuring soccer skill performance: a review. Scand J Med Sci Sports. 2011;11:170–83.CrossRef
2.
go back to reference Walter F, Lames M, McGarry T. Analysis of sports performance as a dynamic system by means of relative phase. Int J Comput Sci Sport. 2007;6:35–41. Walter F, Lames M, McGarry T. Analysis of sports performance as a dynamic system by means of relative phase. Int J Comput Sci Sport. 2007;6:35–41.
4.
go back to reference Vilar L, Araújo D, Davids K, et al. The role of ecological dynamics in analysing performance in team sports. Sports Med. 2012;42:1–10.CrossRefPubMed Vilar L, Araújo D, Davids K, et al. The role of ecological dynamics in analysing performance in team sports. Sports Med. 2012;42:1–10.CrossRefPubMed
5.
go back to reference Williams AM, Ford PR. Expertise and expert performance in sport. Int Rev Sport Exerc Psychol. 2008;1:4–18.CrossRef Williams AM, Ford PR. Expertise and expert performance in sport. Int Rev Sport Exerc Psychol. 2008;1:4–18.CrossRef
9.
go back to reference Perl J, Memmert D. Special issue: Network approaches in complex environments. Hum Mov Sci. 2012;31:267–70.CrossRefPubMed Perl J, Memmert D. Special issue: Network approaches in complex environments. Hum Mov Sci. 2012;31:267–70.CrossRefPubMed
10.
go back to reference Lemmink KAPM, Frencken WGP. Tactical performance analysis in invasion games: Perspectives from a dynamical system approach with examples from soccer. In: McGarry T, O’Donoghue P, Sampaio J, editors. Routledge handbook of sports performance analysis. London: Routledge; 2013. p. 89–100. Lemmink KAPM, Frencken WGP. Tactical performance analysis in invasion games: Perspectives from a dynamical system approach with examples from soccer. In: McGarry T, O’Donoghue P, Sampaio J, editors. Routledge handbook of sports performance analysis. London: Routledge; 2013. p. 89–100.
11.
go back to reference Memmert D. Teaching tactical creativity in team and racket sports: research and practice. Routledge; Abingdon; 2015. Memmert D. Teaching tactical creativity in team and racket sports: research and practice. Routledge; Abingdon; 2015.
12.
go back to reference Franks I. Qualitative and quantitative analysis. Coach Rev. 1985;8:48–50. Franks I. Qualitative and quantitative analysis. Coach Rev. 1985;8:48–50.
13.
go back to reference Soccer Tenga A. In: McGarry T, O’Donoghue P, Sampaio J, editors. Routledge handbook of sports performance analysis. London: Routledge; 2013. p. 323–37. Soccer Tenga A. In: McGarry T, O’Donoghue P, Sampaio J, editors. Routledge handbook of sports performance analysis. London: Routledge; 2013. p. 323–37.
14.
go back to reference Olthof SBH, Frencken WGP, Lemmink KAPM. The older, the wider: on-field tactical behavior of elite-standard youth soccer players in small-sided games. Hum Mov Sci. 2015;41:92–102.CrossRefPubMed Olthof SBH, Frencken WGP, Lemmink KAPM. The older, the wider: on-field tactical behavior of elite-standard youth soccer players in small-sided games. Hum Mov Sci. 2015;41:92–102.CrossRefPubMed
15.
go back to reference Gréhaigne JF, Godbout P. Collective variables for analysing performance in team sports. In: McGarry T, O’Donoghue P, Sampaio J, editors. Routledge handbook of sports performance analysis. London: Routledge; 2013. p. 101–14. Gréhaigne JF, Godbout P. Collective variables for analysing performance in team sports. In: McGarry T, O’Donoghue P, Sampaio J, editors. Routledge handbook of sports performance analysis. London: Routledge; 2013. p. 101–14.
16.
go back to reference Baca A. Tracking motion in sport—trends and limitations. In: Hammond J, editor. Proc. of the 9th Australasian Conf. on Mathematics and Computers in Sport. MathSport (ANZIAM). 2008. p. 1–7. Baca A. Tracking motion in sport—trends and limitations. In: Hammond J, editor. Proc. of the 9th Australasian Conf. on Mathematics and Computers in Sport. MathSport (ANZIAM). 2008. p. 1–7.
17.
go back to reference Perl J, Memmert D, Baca A, et al. Sensors, monitoring, and model-based data analysis in sports, exercise and rehabilitation. In: Lai DTH, Begg RK, Palaniswami M, editors. Sensor networks – challenges towards practical application. Boca Raton: Taylor and Francis; 2012. pp. 375–405. Perl J, Memmert D, Baca A, et al. Sensors, monitoring, and model-based data analysis in sports, exercise and rehabilitation. In: Lai DTH, Begg RK, Palaniswami M, editors. Sensor networks – challenges towards practical application. Boca Raton: Taylor and Francis; 2012. pp. 375–405.
18.
go back to reference Baca A, Dabnichki P, Heller M, et al. Ubiquitous computing in sports: a review and analysis. J Sports Sci. 2009;27:1335–46.CrossRefPubMed Baca A, Dabnichki P, Heller M, et al. Ubiquitous computing in sports: a review and analysis. J Sports Sci. 2009;27:1335–46.CrossRefPubMed
19.
go back to reference Castellano J, Figueira B, Coutinho D, et al. Identifying the effects from the quality of opposition in a football team positioning strategy. Int J Perform Anal Sport. 2013;13(3):822–32. Castellano J, Figueira B, Coutinho D, et al. Identifying the effects from the quality of opposition in a football team positioning strategy. Int J Perform Anal Sport. 2013;13(3):822–32.
20.
go back to reference Moura FA, Martins LEB, Anido RO, et al. A spectral analysis of team dynamics and tactics in Brazilian football. J Sports Sci. 2013;31(14):1568–77.CrossRefPubMed Moura FA, Martins LEB, Anido RO, et al. A spectral analysis of team dynamics and tactics in Brazilian football. J Sports Sci. 2013;31(14):1568–77.CrossRefPubMed
21.
go back to reference Fujimura A, Sugihara K. Geometric analysis and quantitative evaluation of sport teamwork. Syst Comp Jpn. 2005;35(6):49–58.CrossRef Fujimura A, Sugihara K. Geometric analysis and quantitative evaluation of sport teamwork. Syst Comp Jpn. 2005;35(6):49–58.CrossRef
22.
go back to reference Fonseca S, Milho J, Travassos B, et al. Spatial dynamics of team sports exposed by Voronoi diagrams. Hum Mov Sci. 2012;31(6):1652–9.CrossRefPubMed Fonseca S, Milho J, Travassos B, et al. Spatial dynamics of team sports exposed by Voronoi diagrams. Hum Mov Sci. 2012;31(6):1652–9.CrossRefPubMed
23.
go back to reference Taki T, Hasegawa JI. Visualization of dominant region in team games and its application to teamwork analysis. In: Computer graphics international, 2000. Proceedings. IEEE. p. 227–235. Taki T, Hasegawa JI. Visualization of dominant region in team games and its application to teamwork analysis. In: Computer graphics international, 2000. Proceedings. IEEE. p. 227–235.
24.
go back to reference Kang CH, Hwang JR, Li KJ. Trajectory analysis for soccer players. In: Data mining workshops, 2006. ICDM Workshops 2006. Sixth IEEE International Conference on. IEEE. p. 377–381. Kang CH, Hwang JR, Li KJ. Trajectory analysis for soccer players. In: Data mining workshops, 2006. ICDM Workshops 2006. Sixth IEEE International Conference on. IEEE. p. 377–381.
25.
go back to reference Horton M, Gudmundsson J, Chawla S, et al. Classification of passes in football matches using spatiotemporal data. arXiv:1407.5093. Horton M, Gudmundsson J, Chawla S, et al. Classification of passes in football matches using spatiotemporal data. arXiv:1407.5093.
26.
go back to reference Gudmundsson J, Wolle T. Towards automated football analysis: algorithms and data structures. In: Proc. 10th Australasian Conf. on mathematics and computers in sport. Gudmundsson J, Wolle T. Towards automated football analysis: algorithms and data structures. In: Proc. 10th Australasian Conf. on mathematics and computers in sport.
27.
go back to reference Wei X, Sha L, Lucey P, et al. Large-scale analysis of formations in soccer. In: Digital image computing: techniques and applications (DICTA), 2013 International Conference on. IEEE. p. 1–8. Wei X, Sha L, Lucey P, et al. Large-scale analysis of formations in soccer. In: Digital image computing: techniques and applications (DICTA), 2013 International Conference on. IEEE. p. 1–8.
28.
go back to reference Hirano S, Tsumoto S. Grouping of soccer game records by multiscale comparison technique and rough clustering. In: Hybrid intelligent systems, 2005. HIS’05. Fifth International Conference on. IEEE. p. 6. Hirano S, Tsumoto S. Grouping of soccer game records by multiscale comparison technique and rough clustering. In: Hybrid intelligent systems, 2005. HIS’05. Fifth International Conference on. IEEE. p. 6.
29.
go back to reference Gudmundsson J, Wolle T. Football analysis using spatio-temporal tools. Comput Environ Urban Syst. 2014;47:16–27.CrossRef Gudmundsson J, Wolle T. Football analysis using spatio-temporal tools. Comput Environ Urban Syst. 2014;47:16–27.CrossRef
30.
go back to reference Sampaio J, Maçãs V. Measuring tactical behaviour in football. Int J Sports Med. 2012;33:395–401.CrossRefPubMed Sampaio J, Maçãs V. Measuring tactical behaviour in football. Int J Sports Med. 2012;33:395–401.CrossRefPubMed
31.
go back to reference Bialkowski A, Lucey P, Carr P, et al. Recognising team activities from noisy data. In: Computer vision and pattern recognition workshops (CVPRW), 2013 IEEE Conference on. IEEE. p. 984–990. Bialkowski A, Lucey P, Carr P, et al. Recognising team activities from noisy data. In: Computer vision and pattern recognition workshops (CVPRW), 2013 IEEE Conference on. IEEE. p. 984–990.
32.
go back to reference Bialkowski A, Lucey P, Carr P, et al. Large-scale analysis of soccer matches using spatiotemporal tracking data. In: Data mining (ICDM), 2014 IEEE international conference on. IEEE. p. 725–730. Bialkowski A, Lucey P, Carr P, et al. Large-scale analysis of soccer matches using spatiotemporal tracking data. In: Data mining (ICDM), 2014 IEEE international conference on. IEEE. p. 725–730.
33.
go back to reference Gonçalves B, Figueira B, Maçãs V, et al. Effect of player position on movement behaviour, physical and physiological performances during an 11-a-side football game. J Sports Sci. 2014;32:191–9.CrossRefPubMed Gonçalves B, Figueira B, Maçãs V, et al. Effect of player position on movement behaviour, physical and physiological performances during an 11-a-side football game. J Sports Sci. 2014;32:191–9.CrossRefPubMed
34.
go back to reference Frencken WGP, Lemmink KAPM, Delleman N, et al. Oscillations of centroid position and surface area of soccer teams in small-sided games. Eur J Sport Sci. 2011;11:215–23.CrossRef Frencken WGP, Lemmink KAPM, Delleman N, et al. Oscillations of centroid position and surface area of soccer teams in small-sided games. Eur J Sport Sci. 2011;11:215–23.CrossRef
35.
go back to reference Frencken WGP, Lemmink KAPM, van de Poel H, et al. Variability of inter team distance associated with match events in elite-standard soccer. J Sports Sci. 2012;30:1207–13.CrossRefPubMed Frencken WGP, Lemmink KAPM, van de Poel H, et al. Variability of inter team distance associated with match events in elite-standard soccer. J Sports Sci. 2012;30:1207–13.CrossRefPubMed
36.
go back to reference Memmert D, Perl J. Analysis and simulation of creativity learning by means of artificial neural networks. Hum Mov Sci. 2009;28:263–82.CrossRefPubMed Memmert D, Perl J. Analysis and simulation of creativity learning by means of artificial neural networks. Hum Mov Sci. 2009;28:263–82.CrossRefPubMed
37.
go back to reference Memmert D, Perl J. Game creativity analysis by means of neural networks. J Sport Sci. 2009;27:139–49.CrossRef Memmert D, Perl J. Game creativity analysis by means of neural networks. J Sport Sci. 2009;27:139–49.CrossRef
38.
go back to reference Richman J, Moorman J. Physiological time-series analysis using approximate entropy and sample entropy. Am J Physiol. 2000;278:H2039–49. Richman J, Moorman J. Physiological time-series analysis using approximate entropy and sample entropy. Am J Physiol. 2000;278:H2039–49.
40.
go back to reference Kurz M, Stergiou N. Applied dynamic systems theory for the analysis of movement. In: Stergiou N, editor. Innovative analyses of human movement. Champaign: Human Kinetics; 2004. p. 93–119. Kurz M, Stergiou N. Applied dynamic systems theory for the analysis of movement. In: Stergiou N, editor. Innovative analyses of human movement. Champaign: Human Kinetics; 2004. p. 93–119.
41.
go back to reference Palut Y, Zanone P. A dynamical analysis of tennis: concepts and data. J Sports Sci. 2005;23:1021–32.CrossRefPubMed Palut Y, Zanone P. A dynamical analysis of tennis: concepts and data. J Sports Sci. 2005;23:1021–32.CrossRefPubMed
43.
go back to reference Perl J, Tilp M, Baca A, et al. Neural networks for analysing sports games. In: McGarry T, O’Donoghue P, Sampaio J, editors. Routledge Handbook of Sports Performance Analysis. Routledge: Abingdon; 2013. pp. 237–47. Perl J, Tilp M, Baca A, et al. Neural networks for analysing sports games. In: McGarry T, O’Donoghue P, Sampaio J, editors. Routledge Handbook of Sports Performance Analysis. Routledge: Abingdon; 2013. pp. 237–47.
44.
go back to reference Perl J. A neural network approach to movement pattern analysis. Hum Mov Sci. 2014;23:605–20.CrossRef Perl J. A neural network approach to movement pattern analysis. Hum Mov Sci. 2014;23:605–20.CrossRef
45.
go back to reference Perl J, Grunz A, Memmert D. Tactics in soccer: an advanced approach. Int J Comput Sci Sport. 2013;12:33–44. Perl J, Grunz A, Memmert D. Tactics in soccer: an advanced approach. Int J Comput Sci Sport. 2013;12:33–44.
46.
go back to reference Grunz A, Memmert D, Perl J. Tactical pattern recognition in soccer games by means of special self-organizing maps. Hum Mov Sci. 2012;31:334–43.CrossRefPubMed Grunz A, Memmert D, Perl J. Tactical pattern recognition in soccer games by means of special self-organizing maps. Hum Mov Sci. 2012;31:334–43.CrossRefPubMed
47.
go back to reference Glazier PS. Towards a grand unified theory of sports performance. Hum Mov Sci. 2016 (in press). Glazier PS. Towards a grand unified theory of sports performance. Hum Mov Sci. 2016 (in press).
Metadata
Title
Current Approaches to Tactical Performance Analyses in Soccer Using Position Data
Authors
Daniel Memmert
Koen A. P. M. Lemmink
Jaime Sampaio
Publication date
01-01-2017
Publisher
Springer International Publishing
Published in
Sports Medicine / Issue 1/2017
Print ISSN: 0112-1642
Electronic ISSN: 1179-2035
DOI
https://doi.org/10.1007/s40279-016-0562-5

Other articles of this Issue 1/2017

Sports Medicine 1/2017 Go to the issue