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Main Authors: Baek, Seungheon, Yun, Jinhyuk
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.13507
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author Baek, Seungheon
Yun, Jinhyuk
author_facet Baek, Seungheon
Yun, Jinhyuk
contents Badminton is known as one of the fastest racket sports in the world. Despite doubles matches being more prevalent in international tournaments than singles, previous research has mainly focused on singles due to the challenges in data availability and multi-person tracking. To address this gap, we designed an approach that transfers singles-trained models to doubles analysis. We extracted keypoints from the ShuttleSet single matches dataset using ViT-Pose and embedded them through a contrastive learning framework based on ST-GCN. To improve tracking stability, we incorporated a custom multi-object tracking algorithm that resolves ID switching issues from fast and overlapping player movements. A Transformer-based classifier then determines shot occurrences based on the learned embeddings. Our findings demonstrate the feasibility of extending pose-based shot recognition to doubles badminton, broadening analytics capabilities. This work establishes a foundation for doubles-specific datasets to enhance understanding of this predominant yet understudied format of the fast racket sport.
format Preprint
id arxiv_https___arxiv_org_abs_2508_13507
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Bridging the Gap: Doubles Badminton Analysis with Singles-Trained Models
Baek, Seungheon
Yun, Jinhyuk
Computer Vision and Pattern Recognition
Badminton is known as one of the fastest racket sports in the world. Despite doubles matches being more prevalent in international tournaments than singles, previous research has mainly focused on singles due to the challenges in data availability and multi-person tracking. To address this gap, we designed an approach that transfers singles-trained models to doubles analysis. We extracted keypoints from the ShuttleSet single matches dataset using ViT-Pose and embedded them through a contrastive learning framework based on ST-GCN. To improve tracking stability, we incorporated a custom multi-object tracking algorithm that resolves ID switching issues from fast and overlapping player movements. A Transformer-based classifier then determines shot occurrences based on the learned embeddings. Our findings demonstrate the feasibility of extending pose-based shot recognition to doubles badminton, broadening analytics capabilities. This work establishes a foundation for doubles-specific datasets to enhance understanding of this predominant yet understudied format of the fast racket sport.
title Bridging the Gap: Doubles Badminton Analysis with Singles-Trained Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.13507