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Parameter-Efficient Multi-View Proficiency Estimation: From Discriminative Classification to Generative Feedback

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Estimating how well a person performs an action, rather than which action is performed, is central to coaching, rehabilitation, and talent identification. This task is challenging because proficiency is encoded in subtle differences in timing, balance, body mechanics, and execution, often distributed across multiple views and short temporal events. We discuss three recent contributions to multi-view proficiency estimation on Ego-Exo4D. SkillFormer introduces a parameter-efficient discriminative architecture for selective multi-view fusion; PATS improves temporal sampling by preserving locally dense excerpts of fundamental movements; and ProfVLM reformulates proficiency estimation as conditional language generation, producing both a proficiency label and expert-style feedback through a gated cross-view projector and a compact language backbone. Together, these methods achieve state-of-the-art accuracy on Ego-Exo4D with up to 20x fewer trainable parameters and up to 3x fewer training epochs than video-transformer baselines, while moving from closed-set classification toward interpretable feedback generation. These results highlight a shift toward efficient, multi-view systems that combine selective fusion, proficiency-aware sampling, and actionable generative feedback.

Edoardo Bianchi, Antonio Liotta• 2026

Related benchmarks

TaskDatasetResultRank
Proficiency estimationEgoExo4D Ego view
Top-1 Accuracy47.3
21
Proficiency estimationEgoExo4D Exos view
Top-1 Accuracy46.6
21
Proficiency estimationEgoExo4D Ego+Exos view
Top-1 Accuracy48.2
21
Natural Language Feedback GenerationEgo-Exo4D
BERTScore (F1)85.53
3
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