Tech Papers 2025: In this paper, we introduce an AI-powered broadcast assistant successfully deployed during the Paris 2024 Olympic swimming and fencing competitions
Abstract
Recent advances in computer vision and real-time graphics have enabled
significant improvements in augmented live sports broadcasts. However,
achieving the millisecond-level latency required for Olympic events remains
challenging. In this paper, we introduce an AI-powered broadcast assistant
successfully deployed during the Paris 2024 Olympic swimming and fencing
competitions. Leveraging a custom-built dataset comprising 520k annotated
frames, we developed two specialized deep-learning pipelines: (i) fine grained recognition and enhancement of signal lights in fencing, and (ii) high-angle scene understanding and lane recognition for swimming events. In fencing broadcasts, our assistant effectively magnifies small indicator lamps signalling valid touches. For swimming competitions, the system automatically detects overhead camera angles, segments individual lanes, and overlays national flags in real time. We present comprehensive overview of the system architecture, dataset creation methods, model architectures, and on-site deployment strategies. Live operational trials demonstrated significant improvements in broadcast efficiency, supported by an integrated human-in-the-loop approach to maintain editorial control. Finally, we investigate the applicability of our real-time scene classification and automatic CG cut-out methods to a broader range of sports, paving the way for more advanced AI-assisted broadcast systems.
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