English

Pixels or Positions? Benchmarking Modalities in Group Activity Recognition

Computer Vision and Pattern Recognition 2026-04-22 v3

Abstract

Group Activity Recognition (GAR) is well studied on the video modality for surveillance and indoor team sports (e.g., volleyball, basketball). Yet, other modalities such as agent positions and trajectories over time, i.e. tracking, remain comparatively under-explored despite being compact, agent-centric signals that explicitly encode spatial interactions. Understanding whether pixel (video) or position (tracking) modalities leads to better group activity recognition is therefore important to drive further research on the topic. However, no standardized benchmark currently exists that aligns broadcast video and tracking data for the same group activities, leading to a lack of apples-to-apples comparison between these modalities for GAR. In this work, we introduce SoccerNet-GAR, a multimodal dataset built from the 6464 matches of the football World Cup 2022. Specifically, the broadcast videos and player tracking modalities for 87,93987{,}939 group activities are synchronized and annotated with 1010 categories. Furthermore, we define a unified evaluation protocol to benchmark two strong unimodal approaches: (i) competitive video-based classifiers and (ii) tracking-based classifiers leveraging graph neural networks. In particular, our novel role-aware graph architecture for tracking-based GAR directly encodes tactical structure through positional edges connecting players by their on-pitch roles. Our tracking model achieves 77.8%77.8\% balanced accuracy compared to 60.9%60.9\% for the best video baseline, while training with 7×7 \times less GPU hours and 479×479 \times fewer parameters (180K180K vs. 86.3M86.3M). This study provides new insights into the relative strengths of pixels and positions for group activity recognition in sports.

Keywords

Cite

@article{arxiv.2511.12606,
  title  = {Pixels or Positions? Benchmarking Modalities in Group Activity Recognition},
  author = {Drishya Karki and Merey Ramazanova and Anthony Cioppa and Silvio Giancola and Bernard Ghanem},
  journal= {arXiv preprint arXiv:2511.12606},
  year   = {2026}
}
R2 v1 2026-07-01T07:39:46.608Z