Toward Personalized Darts Training: A Data-Driven Framework Based on Skeleton-Based Biomechanical Analysis and Motion Modeling
Zhantao Chen, Dongyi He, Jin Fang, Xi Chen, Yishuo Liu, Xiaozhen Zhong, Xuejun Hu

TL;DR
This paper introduces a data-driven, personalized dart training system using motion capture and biomechanical analysis to provide targeted feedback and improve individual performance.
Contribution
It develops a closed-loop framework combining motion modeling and deviation diagnosis, enabling personalized, interpretable dart training assistance.
Findings
System generates smooth, personalized reference trajectories.
Detects issues like poor trunk stability and abnormal elbow displacement.
Provides targeted recommendations based on biomechanical analysis.
Abstract
As sports training becomes more data-driven, traditional dart coaching based mainly on experience and visual observation is increasingly inadequate for high-precision, goal-oriented movements. Although prior studies have highlighted the importance of release parameters, joint motion, and coordination in dart throwing, most quantitative methods still focus on local variables, single-release metrics, or static template matching. These approaches offer limited support for personalized training and often overlook useful movement variability. This paper presents a data-driven dart training assistance system. The system creates a closed-loop framework spanning motion capture, feature modeling, and personalized feedback. Dart-throwing data were collected in markerless conditions using a Kinect 2.0 depth sensor and an optical camera. Eighteen kinematic features were extracted from four…
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