Deep learning in sport video analysis: a review

Keerthana Rangasamy, Muhammad Amir As’ari, Nur Azmina Rahmad, Nurul Fathiah Ghazali, Saharudin Ismail

Abstract


Sport is a competitive field, where it is an element of measurement for a countries development.  Due to this reason, sport analysis has become one of the major contribution in analysing and improving the performance level of an athlete.  Video-based modality has become a crucial tool used in sport analysis by coaches and performance analysis.  There were wide variety of techniques used in sport video analysis.  The main purpose of this review paper is to compare and update review between traditional handcrafted approach and deep learning approach in sport video analysis based on human activity recognition, overview of recent study in video based human activity recognition in sport analysis and finally concluded with future potential direction in sport video analysis.

Keywords


deep learning; human activity recognition; sport video analysis;

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DOI: http://dx.doi.org/10.12928/telkomnika.v18i4.14730

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TELKOMNIKA Telecommunication, Computing, Electronics and Control
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