Tennis Assistance Technology Based on Dynamic Time Warping Algorithm

With the improvement of economic level, people’s demand for sports activities is increasing, especially for on-net opposability sports such as tennis. However, learning tennis techniques is often difficult for beginners and requires a lot of repeated practice to master. Traditional teachi...

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Main Authors: Penggang Wang, Pengpeng Zhang, Guanxi Fan
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10838526/
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author Penggang Wang
Pengpeng Zhang
Guanxi Fan
author_facet Penggang Wang
Pengpeng Zhang
Guanxi Fan
author_sort Penggang Wang
collection DOAJ
description With the improvement of economic level, people’s demand for sports activities is increasing, especially for on-net opposability sports such as tennis. However, learning tennis techniques is often difficult for beginners and requires a lot of repeated practice to master. Traditional teaching methods are inefficient and difficult to quantify the correctness of actions. In view of this research, a tennis sports assistance technology based on dynamic time warping algorithm is developed. By collecting athletes’ motion data and using dynamic time warping algorithm for motion similarity analysis, personalized technical improvement suggestions are provided for athletes. This technology combines components such as normalization, support vector machine, joint detection, sparse matrix, and second-order stepping mode to improve algorithm performance and reduce computational complexity. The experiment outcomes indicate that this method can validly raise the training effect of tennis players, with an accuracy rate of 95.66%, a calculation time of 0.32 seconds, a variance of 0.88, and an average absolute error of 4.22. Compared with the experimental group that does not use normalization, support vector mechanism node detection, sparse matrix, and second-order stepping mode, there is a significant improvement in performance. Therefore, technology significantly improves the scientific and targeted nature of tennis training through advanced algorithms and data processing techniques. This technology not only provides real-time and accurate feedback to help athletes improve their technical movements, but also enhances training productivity and precision, which is important for promoting the popularization and development of tennis.
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spelling doaj-art-f398b373e69c4c9b9086701f561080b92025-01-24T00:01:57ZengIEEEIEEE Access2169-35362025-01-0113111701118410.1109/ACCESS.2025.352888010838526Tennis Assistance Technology Based on Dynamic Time Warping AlgorithmPenggang Wang0Pengpeng Zhang1https://orcid.org/0009-0008-7512-4602Guanxi Fan2Department of Basic Courses, Shanxi College of Applied Science and Technology, Taiyuan, ChinaDepartment of Physical Education, Shanxi Agricultural University, Taigu, Jinzhong, ChinaDepartment of Basic Courses, Guangzhou Institute of Science and Technology, Guangzhou, ChinaWith the improvement of economic level, people’s demand for sports activities is increasing, especially for on-net opposability sports such as tennis. However, learning tennis techniques is often difficult for beginners and requires a lot of repeated practice to master. Traditional teaching methods are inefficient and difficult to quantify the correctness of actions. In view of this research, a tennis sports assistance technology based on dynamic time warping algorithm is developed. By collecting athletes’ motion data and using dynamic time warping algorithm for motion similarity analysis, personalized technical improvement suggestions are provided for athletes. This technology combines components such as normalization, support vector machine, joint detection, sparse matrix, and second-order stepping mode to improve algorithm performance and reduce computational complexity. The experiment outcomes indicate that this method can validly raise the training effect of tennis players, with an accuracy rate of 95.66%, a calculation time of 0.32 seconds, a variance of 0.88, and an average absolute error of 4.22. Compared with the experimental group that does not use normalization, support vector mechanism node detection, sparse matrix, and second-order stepping mode, there is a significant improvement in performance. Therefore, technology significantly improves the scientific and targeted nature of tennis training through advanced algorithms and data processing techniques. This technology not only provides real-time and accurate feedback to help athletes improve their technical movements, but also enhances training productivity and precision, which is important for promoting the popularization and development of tennis.https://ieeexplore.ieee.org/document/10838526/DTWtennis sportssports assistancesupport vector machinemotion detection
spellingShingle Penggang Wang
Pengpeng Zhang
Guanxi Fan
Tennis Assistance Technology Based on Dynamic Time Warping Algorithm
IEEE Access
DTW
tennis sports
sports assistance
support vector machine
motion detection
title Tennis Assistance Technology Based on Dynamic Time Warping Algorithm
title_full Tennis Assistance Technology Based on Dynamic Time Warping Algorithm
title_fullStr Tennis Assistance Technology Based on Dynamic Time Warping Algorithm
title_full_unstemmed Tennis Assistance Technology Based on Dynamic Time Warping Algorithm
title_short Tennis Assistance Technology Based on Dynamic Time Warping Algorithm
title_sort tennis assistance technology based on dynamic time warping algorithm
topic DTW
tennis sports
sports assistance
support vector machine
motion detection
url https://ieeexplore.ieee.org/document/10838526/
work_keys_str_mv AT penggangwang tennisassistancetechnologybasedondynamictimewarpingalgorithm
AT pengpengzhang tennisassistancetechnologybasedondynamictimewarpingalgorithm
AT guanxifan tennisassistancetechnologybasedondynamictimewarpingalgorithm