基于转播视频的棒球投球可扩展性损伤风险筛查 / Scalable Injury-Risk Screening in Baseball Pitching From Broadcast Video
1️⃣ 一句话总结
这篇论文提出了一种仅使用单目转播视频就能准确提取棒球投手生物力学指标并预测其受伤风险的新方法,为大规模、低成本的运动员健康筛查提供了可行方案。
Injury prediction in pitching depends on precise biomechanical signals, yet gold-standard measurements come from expensive, stadium-installed multi-camera systems that are unavailable outside professional venues. We present a monocular video pipeline that recovers 18 clinically relevant biomechanics metrics from broadcast footage, positioning pose-derived kinematics as a scalable source for injury-risk modeling. Built on DreamPose3D, our approach introduces a drift-controlled global lifting module that recovers pelvis trajectory via velocity-based parameterization and sliding-window inference, lifting pelvis-rooted poses into global space. To address motion blur, compression artifacts, and extreme pitching poses, we incorporate a kinematics refinement pipeline with bone-length constraints, joint-limited inverse kinematics, smoothing, and symmetry constraints to ensure temporally stable and physically plausible kinematics. On 13 professional pitchers (156 paired pitches), 16/18 metrics achieve sub-degree agreement (MAE $< 1^{\circ}$). Using these metrics for injury prediction, an automated screening model achieves AUC 0.811 for Tommy John surgery and 0.825 for significant arm injuries on 7,348 pitchers. The resulting pose-derived metrics support scalable injury-risk screening, establishing monocular broadcast video as a viable alternative to stadium-scale motion capture for biomechanics.
基于转播视频的棒球投球可扩展性损伤风险筛查 / Scalable Injury-Risk Screening in Baseball Pitching From Broadcast Video
这篇论文提出了一种仅使用单目转播视频就能准确提取棒球投手生物力学指标并预测其受伤风险的新方法,为大规模、低成本的运动员健康筛查提供了可行方案。
源自 arXiv: 2603.04864