Sensor Fusion Basketball Shooting Posture Recognition System Based on CNN

In recent years, with the development of wearable sensor devices, research on sports monitoring using inertial measurement units has received increasing attention; however, a specific system for identifying various basketball shooting postures does not exist thus far. In this study, we designed a se...

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Main Authors: Jingjin Fan, Shuoben Bi, Guojie Wang, Li Zhang, Shilei Sun
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Journal of Sensors
Online Access:http://dx.doi.org/10.1155/2021/6664776
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spelling doaj-60f3115b20ac4a2d81d81dfaef1e33dc2021-04-12T01:23:14ZengHindawi LimitedJournal of Sensors1687-72682021-01-01202110.1155/2021/6664776Sensor Fusion Basketball Shooting Posture Recognition System Based on CNNJingjin Fan0Shuoben Bi1Guojie Wang2Li Zhang3Shilei Sun4Research Institute of History for Science and TechnologyResearch Institute of History for Science and TechnologySchool of Geographical SciencesResearch Institute of History for Science and TechnologySchool of Geographical SciencesIn recent years, with the development of wearable sensor devices, research on sports monitoring using inertial measurement units has received increasing attention; however, a specific system for identifying various basketball shooting postures does not exist thus far. In this study, we designed a sensor fusion basketball shooting posture recognition system based on convolutional neural networks. The system, using the sensor fusion framework, collected the basketball shooting posture data of the players’ main force hand and main force foot for sensor fusion and used a deep learning model based on convolutional neural networks for recognition. We collected 12,177 sensor fusion basketball shooting posture data entries of 13 Chinese adult male subjects aged 18–40 years and with at least 2 years of basketball experience without professional training. We then trained and tested the shooting posture data using the classic visual geometry group network 16 deep learning model. The intratest achieved a 98.6% average recall rate, 98.6% average precision rate, and 98.6% accuracy rate. The intertest achieved an average recall rate of 89.8%, an average precision rate of 91.1%, and an accuracy rate of 89.9%.http://dx.doi.org/10.1155/2021/6664776
collection DOAJ
language English
format Article
sources DOAJ
author Jingjin Fan
Shuoben Bi
Guojie Wang
Li Zhang
Shilei Sun
spellingShingle Jingjin Fan
Shuoben Bi
Guojie Wang
Li Zhang
Shilei Sun
Sensor Fusion Basketball Shooting Posture Recognition System Based on CNN
Journal of Sensors
author_facet Jingjin Fan
Shuoben Bi
Guojie Wang
Li Zhang
Shilei Sun
author_sort Jingjin Fan
title Sensor Fusion Basketball Shooting Posture Recognition System Based on CNN
title_short Sensor Fusion Basketball Shooting Posture Recognition System Based on CNN
title_full Sensor Fusion Basketball Shooting Posture Recognition System Based on CNN
title_fullStr Sensor Fusion Basketball Shooting Posture Recognition System Based on CNN
title_full_unstemmed Sensor Fusion Basketball Shooting Posture Recognition System Based on CNN
title_sort sensor fusion basketball shooting posture recognition system based on cnn
publisher Hindawi Limited
series Journal of Sensors
issn 1687-7268
publishDate 2021-01-01
description In recent years, with the development of wearable sensor devices, research on sports monitoring using inertial measurement units has received increasing attention; however, a specific system for identifying various basketball shooting postures does not exist thus far. In this study, we designed a sensor fusion basketball shooting posture recognition system based on convolutional neural networks. The system, using the sensor fusion framework, collected the basketball shooting posture data of the players’ main force hand and main force foot for sensor fusion and used a deep learning model based on convolutional neural networks for recognition. We collected 12,177 sensor fusion basketball shooting posture data entries of 13 Chinese adult male subjects aged 18–40 years and with at least 2 years of basketball experience without professional training. We then trained and tested the shooting posture data using the classic visual geometry group network 16 deep learning model. The intratest achieved a 98.6% average recall rate, 98.6% average precision rate, and 98.6% accuracy rate. The intertest achieved an average recall rate of 89.8%, an average precision rate of 91.1%, and an accuracy rate of 89.9%.
url http://dx.doi.org/10.1155/2021/6664776
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AT shuobenbi sensorfusionbasketballshootingposturerecognitionsystembasedoncnn
AT guojiewang sensorfusionbasketballshootingposturerecognitionsystembasedoncnn
AT lizhang sensorfusionbasketballshootingposturerecognitionsystembasedoncnn
AT shileisun sensorfusionbasketballshootingposturerecognitionsystembasedoncnn
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