Sporthesia: Augmenting Sports Videos Using Natural Language
Chen Zhu-Tian, Qisen Yang, Xiao Xie, Johanna Beyer, Haijun, Xia, Yingcai Wu, Hanspeter Pfister

TL;DR
Sporthesia is a system that automatically creates augmented sports videos by translating natural language commentary into visualizations, streamlining video editing and enhancing viewer engagement.
Contribution
This work introduces a novel three-step approach and a proof-of-concept system for generating augmented sports videos directly from natural language insights.
Findings
High accuracy (F1-score 0.9) in entity detection
Effective visualization of sports insights from text
Positive expert feedback on utility and satisfaction
Abstract
Augmented sports videos, which combine visualizations and video effects to present data in actual scenes, can communicate insights engagingly and thus have been increasingly popular for sports enthusiasts around the world. Yet, creating augmented sports videos remains a challenging task, requiring considerable time and video editing skills. On the other hand, sports insights are often communicated using natural language, such as in commentaries, oral presentations, and articles, but usually lack visual cues. Thus, this work aims to facilitate the creation of augmented sports videos by enabling analysts to directly create visualizations embedded in videos using insights expressed in natural language. To achieve this goal, we propose a three-step approach - 1) detecting visualizable entities in the text, 2) mapping these entities into visualizations, and 3) scheduling these visualizations…
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Taxonomy
TopicsVideo Analysis and Summarization · Data Visualization and Analytics · Multimedia Communication and Technology
