2021
DOI: 10.1177/17543371211050312
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Invisible experience to real-time assessment in elite tennis athlete training: Sport-specific movement classification based on wearable MEMS sensor data

Abstract: This study examined the reliability of a tennis stroke classification and assessment platform consisting of a single low-cost MEMS sensor in a wrist-worn wearable device, smartphone, and computer. The data that was collected was transmitted via Bluetooth and analyzed by machine learning algorithms. Twelve right-handed male elite tennis athletes participated in the study, and each athlete performed 150 strokes. The results from three machine learning algorithms regarding their recognition and classification of … Show more

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Cited by 7 publications
(2 citation statements)
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“…Compared with the traditional algorithm, the proposed algorithm shows better real-time performance in human skeleton joint point extraction and real-time motion evaluation. Moreover, the proposed algorithm can handle different motion parameters of tennis players [22]. The similarity scores of the algorithm in preparation, turning, batting, and follow-up motions evaluation are significantly higher than those of GMM, VIBE, and OF algorithms (P < 0.05).…”
Section: E Characteristics Of Follow-up Motion Of the Subjectmentioning
confidence: 92%
“…Compared with the traditional algorithm, the proposed algorithm shows better real-time performance in human skeleton joint point extraction and real-time motion evaluation. Moreover, the proposed algorithm can handle different motion parameters of tennis players [22]. The similarity scores of the algorithm in preparation, turning, batting, and follow-up motions evaluation are significantly higher than those of GMM, VIBE, and OF algorithms (P < 0.05).…”
Section: E Characteristics Of Follow-up Motion Of the Subjectmentioning
confidence: 92%
“…По совокупности всех факторов микроэлектромеханические системы получили широкое распространение в потребительском сегменте, поскольку для данного сегмента цена конечного продукта является главным параметром. На сегодняшний день МЭМС представлены во всех сферах жизнедеятельности человека: робототехнике [1], медицине [2], транспорте [3], геологии [4], игровой индустрии [5], спорте [6].…”
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