Smartboard: Visual Exploration of Team Tactics with LLM Agent.

Ziao Liu, Xiao Xie, Moqi He, Wenshuo Zhao, Yihong Wu, Liqi Cheng, Hui Zhang, Yingcai Wu
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Abstract

Tactics play an important role in team sports by guiding how players interact on the field. Both sports fans and experts have a demand for analyzing sports tactics. Existing approaches allow users to visually perceive the multivariate tactical effects. However, these approaches require users to experience a complex reasoning process to connect the multiple interactions within each tactic to the final tactical effect. In this work, we collaborate with basketball experts and propose a progressive approach to help users gain a deeper understanding of how each tactic works and customize tactics on demand. Users can progressively sketch on a tactic board, and a coach agent will simulate the possible actions in each step and present the simulation to users with facet visualizations. We develop an extensible framework that integrates large language models (LLMs) and visualizations to help users communicate with the coach agent with multimodal inputs. Based on the framework, we design and develop Smartboard, an agent-based interactive visualization system for fine-grained tactical analysis, especially for play design. Smartboard provides users with a structured process of setup, simulation, and evolution, allowing for iterative exploration of tactics based on specific personalized scenarios. We conduct case studies based on real-world basketball datasets to demonstrate the effectiveness and usefulness of our system.

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智能板:利用 LLM Agent 对团队战术进行可视化探索。
战术在团队运动中发挥着重要作用,它指导着球员在场上的互动方式。体育迷和专家都需要对体育战术进行分析。现有的方法允许用户直观地感知多元战术效果。然而,这些方法需要用户经历复杂的推理过程,才能将每个战术中的多重互动与最终战术效果联系起来。在这项工作中,我们与篮球专家合作,提出了一种循序渐进的方法,帮助用户深入了解每种战术的作用,并按需定制战术。用户可以在战术板上逐步绘制草图,教练代理将模拟每个步骤中可能出现的动作,并通过切面可视化将模拟结果呈现给用户。我们开发了一个可扩展的框架,将大型语言模型(LLM)和可视化整合在一起,帮助用户通过多模态输入与教练代理交流。基于该框架,我们设计并开发了基于代理的交互式可视化系统 Smartboard,用于精细战术分析,尤其是战术设计。Smartboard 为用户提供了一个结构化的设置、模拟和演化过程,允许用户根据特定的个性化场景对战术进行迭代探索。我们基于真实世界的篮球数据集进行了案例研究,以证明我们系统的有效性和实用性。
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