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2024 | OriginalPaper | Chapter

Automated Taekwondo Kick Classification Using SVM and IMU Sensor on Arduino Nano 33 BLE

Authors : Qoriina Dwi Amalia, Azhar Agustian Gunawan, Grachia Salsabila Yulian, Achmad Rizal, Istiqomah

Published in: Proceedings of the 4th International Conference on Electronics, Biomedical Engineering, and Health Informatics

Publisher: Springer Nature Singapore

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Abstract

Since practically all activities were impeded by the COVID-19 epidemic, they were conducted as autonomously as possible at home, or what is known as Work from Home (WFH). Taekwondo activities are among those that cannot be performed as WFH. The COVID-19 epidemic disrupted regular Taekwondo training, necessitating autonomous practice at home. However, without a trainer's presence, technical errors in Taekwondo kicks could occur. The research presents an automated system utilizing an IMU sensor and SVM for Taekwondo kick classification, empowering athletes to improve their movements independently. Type of kicks that can be classified are Eolgol Ap Chagi, Momtong Ap Chagi, Eolgol Dollyo Chagi, Momtong Dollyo Chagi, and Dwi Chagi. Because it is a basic kick that must be mastered by Taekwondo Athletes. When using tools, taekwondo athletes can move more quickly, thanks to direct implementation on compact devices. Consequently, a simple machine-learning model with the fewest input characteristics is required. On the Arduino Nano 33 BLE, the LSM9DS IMU sensor was used to collect the data. The dataset goes through a cleansing procedure before being labelled and trained, which comes before pre-processing. Three options that may have been employed are SVM, RBF, and DT. In this study, the micromlgen library will be used. Consequently, this work employs a Support Vector Machine (SVM) methodology. Mean, median, max, min, and variance are the five features used in the pre-processing technique. The median and variance properties are used to get an accuracy of 99.35%. The experimental findings demonstrate that the SVM algorithm successfully categorizes the different kinds of taekwondo kicks. The developed technology serves as a valuable tool for Taekwondo athletes, providing a means to enhance their skills through self-guided practice during situations like the COVID-19 pandemic.

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Literature
1.
go back to reference Hailong L (2021) Role of artificial intelligence algorithm for taekwondo teaching effect evaluation model. Journal of Intelligent & Fuzzy Systems. 40(2):3239–3250CrossRef Hailong L (2021) Role of artificial intelligence algorithm for taekwondo teaching effect evaluation model. Journal of Intelligent & Fuzzy Systems. 40(2):3239–3250CrossRef
2.
go back to reference Ferreira da Silva Santos J, Herrera-Valenzuela T, Franchini E (2019) Establishing frequency speed of kick test classificatory tables in male and female taekwondo athletes. Kinesiology 51(2):213–218 Ferreira da Silva Santos J, Herrera-Valenzuela T, Franchini E (2019) Establishing frequency speed of kick test classificatory tables in male and female taekwondo athletes. Kinesiology 51(2):213–218
3.
go back to reference Hoang HTT, Ha CN, Nguyen DT, Nguyen TN, Huynh TN, Phan TT et al (2022) Poses classification in a Taekwondo lesson using skeleton data extracted from videos with shallow and deep learning architectures, pp 447–461 Hoang HTT, Ha CN, Nguyen DT, Nguyen TN, Huynh TN, Phan TT et al (2022) Poses classification in a Taekwondo lesson using skeleton data extracted from videos with shallow and deep learning architectures, pp 447–461
4.
go back to reference Asenov A (2020) Analysis of an online taekwondo competition, vol 92 Asenov A (2020) Analysis of an online taekwondo competition, vol 92
5.
go back to reference Attal F, Mohammed S, Dedabrishvili M, Chamroukhi F, Oukhellou L, Amirat Y (2015) Physical human activity recognition using wearable sensors. Sensors (Switzerland). MDPI AG 15:31314–31338 Attal F, Mohammed S, Dedabrishvili M, Chamroukhi F, Oukhellou L, Amirat Y (2015) Physical human activity recognition using wearable sensors. Sensors (Switzerland). MDPI AG 15:31314–31338
6.
go back to reference Worsey MTO, Espinosa HG, Shepherd JB, Thiel DV (2019) Inertial sensors for performance analysis in combat sports: a systematic review. Sports. MDPI, vol 7 Worsey MTO, Espinosa HG, Shepherd JB, Thiel DV (2019) Inertial sensors for performance analysis in combat sports: a systematic review. Sports. MDPI, vol 7
7.
go back to reference Dharmmesta RA, Jaya IGP, Rizal A, Istiqomah I (2022) Classification of foot kicks in Taekwondo Using SVM (support vector machine) and KNN (K-nearest neighbors) algorithms. In: 2022 IEEE international conference on industry 40, artificial intelligence, and communications technology (IAICT) [Internet]. IEEE, pp 36–41. https://ieeexplore.ieee.org/document/9887475/ Dharmmesta RA, Jaya IGP, Rizal A, Istiqomah I (2022) Classification of foot kicks in Taekwondo Using SVM (support vector machine) and KNN (K-nearest neighbors) algorithms. In: 2022 IEEE international conference on industry 40, artificial intelligence, and communications technology (IAICT) [Internet]. IEEE, pp 36–41. https://​ieeexplore.​ieee.​org/​document/​9887475/​
8.
go back to reference Gede Pustika JI, Rainta Athallah D, Achmad R, Istiqomah I (2022) Application foot kick classification in Taekwondo with inertia sensor and machine learning. IEEE Gede Pustika JI, Rainta Athallah D, Achmad R, Istiqomah I (2022) Application foot kick classification in Taekwondo with inertia sensor and machine learning. IEEE
11.
go back to reference Demrozi F, Pravadelli G, Bihorac A, Rashidi P (2020) Human activity recognition using inertial, physiological and environmental sensors: a comprehensive survey. IEEE Access. Institute of Electrical and Electronics Engineers Inc. 8:210816–210836 Demrozi F, Pravadelli G, Bihorac A, Rashidi P (2020) Human activity recognition using inertial, physiological and environmental sensors: a comprehensive survey. IEEE Access. Institute of Electrical and Electronics Engineers Inc. 8:210816–210836
12.
go back to reference Ahmad GN, Fatima H, Ullah S, Salah Saidi A, Imdadullah (2022) Efficient medical diagnosis of human heart diseases using machine learning techniques with and without GridSearchCV. IEEE Access 10:80151–80173 Ahmad GN, Fatima H, Ullah S, Salah Saidi A, Imdadullah (2022) Efficient medical diagnosis of human heart diseases using machine learning techniques with and without GridSearchCV. IEEE Access 10:80151–80173
13.
go back to reference Puspitasari A, Rizal A, Mukhtar H (2020) Prosthetic finger movement controller based on EMG signals using statistical feature and K-nearest neighbors. Int J Sci Technol Res 9(03):1472–1475 Puspitasari A, Rizal A, Mukhtar H (2020) Prosthetic finger movement controller based on EMG signals using statistical feature and K-nearest neighbors. Int J Sci Technol Res 9(03):1472–1475
15.
go back to reference Ismail I, Mukhtar H (2023) Development human activity recognition for the elderly using inertial sensor and statistical feature. In: Lecture notes in electrical engineering. Springer Science and Business Media Deutschland GmbH, pp 293–305 Ismail I, Mukhtar H (2023) Development human activity recognition for the elderly using inertial sensor and statistical feature. In: Lecture notes in electrical engineering. Springer Science and Business Media Deutschland GmbH, pp 293–305
16.
go back to reference Pirjatullah KD, Nugrahadi DT, Muliadi FA (2021) Hyperparameter tuning using GridsearchCV on the comparison of the activation function of the ELM method to the classification of pneumonia in toddlers. In: 2021 4th international conference of computer and informatics engineering (IC2IE). IEEE pp 390–395 Pirjatullah KD, Nugrahadi DT, Muliadi FA (2021) Hyperparameter tuning using GridsearchCV on the comparison of the activation function of the ELM method to the classification of pneumonia in toddlers. In: 2021 4th international conference of computer and informatics engineering (IC2IE). IEEE pp 390–395
17.
go back to reference Anguita D, Ghelardoni L, Ghio A, Oneto L, Ridella S (2012) The ‘K’ in K-fold cross validation. In: ESANN 2012 proceedings, 20th European symposium on artificial neural networks, computational intelligence and machine learning Anguita D, Ghelardoni L, Ghio A, Oneto L, Ridella S (2012) The ‘K’ in K-fold cross validation. In: ESANN 2012 proceedings, 20th European symposium on artificial neural networks, computational intelligence and machine learning
23.
go back to reference Yadav S, Shukla S. Analysis of k-fold cross-validation over hold-out validation on colossal datasets for quality classification. In: 2016 IEEE 6th international conference on advanced computing (IACC). IEEE, pp 78–83 Yadav S, Shukla S. Analysis of k-fold cross-validation over hold-out validation on colossal datasets for quality classification. In: 2016 IEEE 6th international conference on advanced computing (IACC). IEEE, pp 78–83
25.
go back to reference Tong L, Song Q, Ge Y, Liu M (2013) HMM-based human fall detection and prediction method using tri-axial accelerometer. IEEE Sens J 13(5):1849–1856CrossRef Tong L, Song Q, Ge Y, Liu M (2013) HMM-based human fall detection and prediction method using tri-axial accelerometer. IEEE Sens J 13(5):1849–1856CrossRef
26.
go back to reference Styawati S, Mustofa K (2019) A support vector machine-firefly algorithm for movie opinion data classification. IJCCS (Indones J Comput Cybern Syst) 13(3):219CrossRef Styawati S, Mustofa K (2019) A support vector machine-firefly algorithm for movie opinion data classification. IJCCS (Indones J Comput Cybern Syst) 13(3):219CrossRef
27.
go back to reference Ayumi V, Fanany MI, Fanany MI. A comparison of SVM and RVM for human action recognition multiple regularizations deep learning for paddy growth stages classification from LANDSAT-8 view project argumentation mining view project a comparison of SVM and RVM for human action recognition. https://www.researchgate.net/publication/281765294 Ayumi V, Fanany MI, Fanany MI. A comparison of SVM and RVM for human action recognition multiple regularizations deep learning for paddy growth stages classification from LANDSAT-8 view project argumentation mining view project a comparison of SVM and RVM for human action recognition. https://​www.​researchgate.​net/​publication/​281765294
28.
go back to reference Ranjan GSK, Kumar Verma A, Radhika S (2019) K-nearest neighbors and grid search CV based real time fault monitoring system for industries. In: 2019 IEEE 5th international conference for convergence in technology, I2CT 2019. Institute of Electrical and Electronics Engineers Inc. Ranjan GSK, Kumar Verma A, Radhika S (2019) K-nearest neighbors and grid search CV based real time fault monitoring system for industries. In: 2019 IEEE 5th international conference for convergence in technology, I2CT 2019. Institute of Electrical and Electronics Engineers Inc.
30.
go back to reference Ishac K, Eager D (2021) Evaluating martial arts punching kinematics using a vision and inertial sensing system. Sensors 21(6):1–25CrossRef Ishac K, Eager D (2021) Evaluating martial arts punching kinematics using a vision and inertial sensing system. Sensors 21(6):1–25CrossRef
31.
go back to reference Lawi A, Aziz F, Wungo SL (2019) Increasing accuracy of classification physical activity based on smartphone using ensemble logistic regression with boosting method. J Phys Conf Ser. Institute of Physics Publishing Lawi A, Aziz F, Wungo SL (2019) Increasing accuracy of classification physical activity based on smartphone using ensemble logistic regression with boosting method. J Phys Conf Ser. Institute of Physics Publishing
Metadata
Title
Automated Taekwondo Kick Classification Using SVM and IMU Sensor on Arduino Nano 33 BLE
Authors
Qoriina Dwi Amalia
Azhar Agustian Gunawan
Grachia Salsabila Yulian
Achmad Rizal
Istiqomah
Copyright Year
2024
Publisher
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-97-1463-6_3