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arxiv:2506.04996

PATS: Proficiency-Aware Temporal Sampling for Multi-View Sports Skill Assessment

Published on Jun 5
· Submitted by EdBianchi on Jun 6
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Abstract

PATS is a novel temporal sampling method that enhances video analysis of athletic skills by ensuring complete movement patterns are captured, outperforming existing methods across various domains.

AI-generated summary

Automated sports skill assessment requires capturing fundamental movement patterns that distinguish expert from novice performance, yet current video sampling methods disrupt the temporal continuity essential for proficiency evaluation. To this end, we introduce Proficiency-Aware Temporal Sampling (PATS), a novel sampling strategy that preserves complete fundamental movements within continuous temporal segments for multi-view skill assessment. PATS adaptively segments videos to ensure each analyzed portion contains full execution of critical performance components, repeating this process across multiple segments to maximize information coverage while maintaining temporal coherence. Evaluated on the EgoExo4D benchmark with SkillFormer, PATS surpasses the state-of-the-art accuracy across all viewing configurations (+0.65% to +3.05%) and delivers substantial gains in challenging domains (+26.22% bouldering, +2.39% music, +1.13% basketball). Systematic analysis reveals that PATS successfully adapts to diverse activity characteristics-from high-frequency sampling for dynamic sports to fine-grained segmentation for sequential skills-demonstrating its effectiveness as an adaptive approach to temporal sampling that advances automated skill assessment for real-world applications.

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Proficiency-Aware Temporal Sampling for Multi-View Sports Skill Assessment: a sampling strategy specifically designed for sports activities

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