Multi-Agent System for Comprehensive Soccer Understanding
By: Jiayuan Rao , Zifeng Li , Haoning Wu and more
Potential Business Impact:
Teaches computers to understand all about soccer.
Recent advances in soccer understanding have demonstrated rapid progress, yet existing research predominantly focuses on isolated or narrow tasks. To bridge this gap, we propose a comprehensive framework for holistic soccer understanding. Concretely, we make the following contributions in this paper: (i) we construct SoccerWiki, the first large-scale multimodal soccer knowledge base, integrating rich domain knowledge about players, teams, referees, and venues to enable knowledge-driven reasoning; (ii) we present SoccerBench, the largest and most comprehensive soccer-specific benchmark, featuring around 10K multimodal (text, image, video) multi-choice QA pairs across 13 distinct tasks; (iii) we introduce SoccerAgent, a novel multi-agent system that decomposes complex soccer questions via collaborative reasoning, leveraging domain expertise from SoccerWiki and achieving robust performance; (iv) extensive evaluations and comparisons with representative MLLMs on SoccerBench highlight the superiority of our agentic system.
Similar Papers
SoccerMaster: A Vision Foundation Model for Soccer Understanding
CV and Pattern Recognition
Helps computers understand soccer games better.
COACH: Collaborative Agents for Contextual Highlighting -- A Multi-Agent Framework for Sports Video Analysis
CV and Pattern Recognition
Lets computers understand sports games by watching.
COACH: Collaborative Agents for Contextual Highlighting - A Multi-Agent Framework for Sports Video Analysis
CV and Pattern Recognition
Lets computers understand sports games like a coach.