计算机视觉
计算机科学
人工智能
单眼
灵活性(工程)
立体视觉
弹道
运动学
校准
单目视觉
适应性
噪音(视频)
双眼视觉
点(几何)
跟踪(教育)
软件部署
主动视觉
跟踪系统
机器视觉
跳跃
运动(物理)
立体摄像机
坐标系
眼动
光流
空间参考系
摄像机切除
稳健性(进化)
立体摄像机
可视化
作者
Jinfang Weng,Zhuming Zhang,Le Chen,Qizhao Lin
标识
DOI:10.1109/caibda65784.2025.11183422
摘要
To overcome the inherent limitations of monocular vision systems in standing long jump measurement—including vulnerability to environmental noise and strict site-specific calibration requirements—as well as the implementation barriers of multi-modal sensor solutions characterized by excessive hardware costs and operational complexity, this paper presents an automated performance assessment framework based on binocular stereo vision with spatiotemporal trajectory modeling. The proposed system achieves robust environmental adaptability through two mechanisms: 1) depth-driven region-of-interest (ROI) filtering to exclude extraneous background elements beyond standardized jump areas, and 2) temporally consistent 3D coordinate tracking that directly reconstructs athletes' movement trajectories in physical space coordinates (x, y, z), eliminating manual pixel-to-physical calibration. This architecture enables precise landing point localization (mean error: 1.6 cm) across dynamically changing testing environments with heterogeneous illumination and background patterns. Experimental validation demonstrates significant advancements over conventional approaches, exhibiting 66.7% higher accuracy than monocular baselines while maintaining deployment flexibility unattainable by sensor-fusion alternatives. The integration of disparity-optimized depth perception and kinematic sequence analysis establishes a new paradigm for vision-based sports motion metrology.
科研通智能强力驱动
Strongly Powered by AbleSci AI