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Journal : Journal of Electronics, Electromedical Engineering, and Medical Informatics

Time Series Classification of Badminton Pose using LSTM with Landmark Tracking Purnama, Bedy; Erfianto, Bayu; Wirawan, Ilo Raditio
Journal of Electronics, Electromedical Engineering, and Medical Informatics Vol 7 No 1 (2025): January
Publisher : Department of Electromedical Engineering, POLTEKKES KEMENKES SURABAYA

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.35882/jeeemi.v7i1.488

Abstract

Traditional methods of analyzing badminton matches, such as video movement analysis, are time-consuming, prone to errors, and rely heavily on manual annotation. This creates challenges in accurately and efficiently classifying badminton actions and player poses. This paper aims to develop an accurate time series classification method for badminton poses using landmark tracking. The proposed method integrates Long Short-Term Memory (LSTM) networks with landmark tracking to classify badminton poses in a time series, addressing the limitations of traditional video analysis techniques. The dataset consists of 30 respondents performing three distinct activities—lob, smash, and serve—under two conditions: good and bad execution. The approach combines LSTM networks with landmark tracking data, utilizing intra-class variation from a multi-view dataset to enhance pose classification accuracy. The LSTM model achieved high accuracy in classifying badminton poses, successfully detecting serves, lobs, and smashes in real-time with over 90% accuracy. Additionally, the system improved match analysis, achieving 85% accuracy in detection and classification, demonstrating the effectiveness of combining landmark tracking with machine learning for sports analysis. This study underscores the importance of pose estimation in badminton analysis, particularly through landmark tracking, which significantly improves the accuracy of classifying player poses and contributes to the advancement of automated sports analysis.
Co-Authors Abidin, Muhammad Ade Romadhony Adhan Mulya Rahmawan Adhyaksa, Resky Adi, Puput Dani Prasetyo Afandi, Rusdi Agung Toto Wibowo Ahmad Zatnika Purwalaksana, Ahmad Zatnika Al Farizy, Firnas Andi Farmadi Andre Sitompul Angga Rusdinar Aprianti Putri Sujana Bambang Pudjoatmodjo Bambang Pudjotatmodjo Bayu Erfianto Bramantya Purbaya Danu Hary Prakoso Darmawati, Irma Ditari Salsabila E. Dodi Wisaksono Sudiharto Dodon Turianto Nugrahadi Dwi Fitrizal Salim Edward Ferdian Ema Rachmawati Ema Rachmawati Ema Rachmawati Entik Insanudin Farid Hidayat Fat'hah Noor Prawira Fat’hah Noor Prawira Fat’hah Noor Prawira Fauzi, Roki Fazmah Arif Yulianto Febryanti Sthevanie Ferdian, Edward Furqoon, Naufal Sayyid Gamma Kosala Gibran, Hilal Gryaningrum Widi Pangestuti Hafidz Al Djohari Ifa, Rista Putri Nur Imamul Akhyar Irwan Budiman Ismail Ismail Koredianto Usman Labib, Fahdi Lindayani, Linlin Mahmud Dwi Sulistiyo Mahmud Imrona Marliani Harahap Muhammad Arzaki Muhammad Jendro Yuwono Muhammad Jendro Yuwono Muhammad Nurdin Muhammad Reza Faisal, Muhammad Reza Muhammad Shafhi Kasyfillah Mutiar, Astri Ngo, Luu Duc Pangestu, Arya Priyatama, Muhammad Abdhi Pudjoadmojo, Bambang Purbaya, Bramantya Putra, Bima Andika Putri, Pinkan Amanda Putu Harry Gunawan Rahmawan, Adhan Mulya Reza Dwi Ansari Rian Febrian Umbara Rikman Aherliwan Rudawan Rimba Whidiana Ciptasari Risnandar, Risnandar Rivan Ardyanto Sutoyo Selly Meliana Setyorini Setyorini Sonia Dian Maniswari Tito Prihambodo Tjokorda Agung Budi Wirayuda Umiatin, Umiatin Wirawan, Ilo Raditio Yuridikta Adha Muslim