There have been limited studies demonstrating the validation of batting techniques in cricket using machine learning. This study demonstrates how the batting backlift technique in cricket can be automatically recognised in video footage and compares the performance of popular deep learning architectures, namely, AlexNet, Inception V3, Inception Resnet V2, and Xception. A dataset is created containing the lateral and straight backlift classes and assessed according to standard machine learning metrics. The architectures had similar performance with one false positive in the lateral class and a precision score of 100%, along with a recall score of 95%, and an f1-score of 98% for each architecture, respectively. The AlexNet architecture performed the worst out of the four architectures as it incorrectly classified four images that were supposed to be in the straight class. The architecture that is best suited for the problem domain is the Xception architecture with a loss of 0.03 and 98.2.5% accuracy, thus demonstrating its capability in differentiating between lateral and straight backlifts. This study provides a way forward in the automatic recognition of player patterns and motion capture, making it less challenging for sports scientists, biomechanists and video analysts working in the field.
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http://dx.doi.org/10.1038/s41598-022-05966-6 | DOI Listing |
Sci Rep
February 2022
Biomedical Engineering and Healthcare Technology (BEAHT) Research Centre, Faculty of Health Sciences, University of Johannesburg, Cnr Siemert Beit Street, Doornfontein City Two, 2028, Gauteng, South Africa.
There have been limited studies demonstrating the validation of batting techniques in cricket using machine learning. This study demonstrates how the batting backlift technique in cricket can be automatically recognised in video footage and compares the performance of popular deep learning architectures, namely, AlexNet, Inception V3, Inception Resnet V2, and Xception. A dataset is created containing the lateral and straight backlift classes and assessed according to standard machine learning metrics.
View Article and Find Full Text PDFJ Hum Kinet
October 2020
Department of Sport & Movement Studies, Faculty of Health Sciences, University of Johannesburg Johannesburg South Africa.
There has been an extensive amount of research into the batting elements of cricket. However, there is limited research specifically on the batting backlift technique (BBT). Therefore, this review aims to provide an understanding and consensus of the BBT in cricket at varied skilled levels.
View Article and Find Full Text PDFBMJ Open Sport Exerc Med
February 2020
Sport and Movement Studies, University of Johannesburg, Johannesburg, Gauteng, South Africa.
There has been growing evidence on the batting backlift technique in cricket at varying levels of cricket ability and the way in which batsmen direct or manoeuvre their bat in various ways. Most recently, there has been elevated awareness and discussion around the technique of Steven Smith. To an extent, there has been some comparison and reference been made to Sir Donald Bradman.
View Article and Find Full Text PDFBMJ Open Sport Exerc Med
March 2019
Human Biology, University of Cape Town, Cape Town, South Africa.
Cricket coaching manuals published after 2009 accept as a norm for batsmen to lift the bat in the direction of the slips. A mixed-methods study conducted among 161 coaches around the world showed that most cricket coaches (83%) coach the straight batting backlift technique (SBBT) as opposed to the lateral batting backlift technique (LBBT) at various proficiency levels of the game. The LBBT (more beneficial for cricket batsmen) is one in which the bat is lifted laterally in the direction of second slip or gully.
View Article and Find Full Text PDFS Afr J Sports Med
January 2019
Division of Exercise Science and Sports Medicine, Department of Human Biology, Faculty of Health Sciences, University of Cape Town, Cape Town, South Africa.
Background: This study aimed primarily to investigate the lateral batting backlift technique (LBBT) among semi-professional, professional and current international cricket players. A key question was to investigate whether this technique is a factor that contributes to success for cricket players at the highest levels of the game.
Methods: The participants in this study's sample (n = 130) were South African semi-professional players (SP) (n = 69), professional players (PP) (n = 49) and South African international professional players (SAI) (n = 12).
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