Identification of Fencing Athletes Based on Anthropometric Measurements Using MediaPipe Pose

Bagas Alif Fimaskoro, S. Aulia, Dery Rimasa
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Abstract

Over time, numerous developments in digital technology have benefited people, including anthropometric measurements that provide information on an athlete’s ability in sports. The use of digital technology in sports must continue, particularly in the National Sports Committee of Indonesia (Komite Olahraga Nasional Indonesia, KONI) of Bandung City. This study proposed a technique for classifying and identifying fencing athletes’ talents. This work developed a methodology for evaluating sports talent based on anthropometric measurements of athletes’ bodies using the posture detection approach. Fencing and nonfencing athletes in KONI Bandung City were categorized using this talent identification. This study used 36 datasets of body posture images from various skills of the sport. These images were in JPEG or JPG format with a resolution of 3,024 × 4,032 and were acquired using a Canon EOS 1300D camera. This study utilized four points landmarks, which are usually used as measurement components in KONI, to categorize fencing athletes. The four points are shoulder (S), elbow (E), index (I), and hip (H) landmarks. The testing was done using three different dataset settings. According to the test results of all scenarios, scenario 2 had the highest accuracy. This scenario was able to categorize fencing and nonfencing athletes with an accuracy rate of 89% and an average processing time of less than 3 s per image.
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使用 MediaPipe Pose 根据人体测量结果识别击剑运动员
随着时间的推移,数字技术的众多发展造福了人们,其中包括提供运动员运动能力信息的人体测量技术。必须继续在体育运动中使用数字技术,特别是在万隆市的印度尼西亚国家体育委员会(Komite Olahraga Nasional Indonesia, KONI)。本研究提出了一种对击剑运动员的天赋进行分类和鉴定的技术。这项工作利用姿势检测方法,根据对运动员身体的人体测量结果,开发了一种评估运动天赋的方法。通过这种天赋识别方法,对万隆科尼市的击剑和非击剑运动员进行了分类。本研究使用了 36 个来自不同运动技能的身体姿势图像数据集。这些图像均为 JPEG 或 JPG 格式,分辨率为 3,024 × 4,032 ,使用佳能 EOS 1300D 相机获取。本研究利用 KONI 中通常用作测量组件的四个点地标对击剑运动员进行分类。这四个点分别是肩(S)、肘(E)、食指(I)和髋(H)地标。测试使用了三种不同的数据集设置。根据所有方案的测试结果,方案 2 的准确率最高。该方案能够对击剑和非击剑运动员进行分类,准确率为 89%,每张图像的平均处理时间少于 3 秒。
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