超要約: スポーツ動画をAIが超理解! 新しいデータとモデルで、スポーツ界がもっと楽しくなるって話💖
ギャル的キラキラポイント✨ ● プロスポーツ動画に特化! 専門知識までAIが理解できるって、マジ卍じゃん? ● 質問に合わせて動画のどこを見るかAIが判断! 頭良すぎ🤣 ● スポーツテックとかエンタメ(Entertainment)業界が、もっと楽しくなりそう🎵
詳細解説
リアルでの使いみちアイデア💡 ● スポーツ選手の練習をAIがサポート! 自分のプレーを客観的(きゃっかんてき)に分析(ぶんせき)して、レベルアップできるかも✨ ● 試合の見どころをAIが教えてくれる! 今まで気づかなかった面白さに気づけちゃうかもね👀
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Reasoning over sports videos for question answering is an important task with numerous applications, such as player training and information retrieval. However, this task has not been explored due to the lack of relevant datasets and the challenging nature it presents. Most datasets for video question answering (VideoQA) focus mainly on general and coarse-grained understanding of daily-life videos, which is not applicable to sports scenarios requiring professional action understanding and fine-grained motion analysis. In this paper, we introduce the first dataset, named Sports-QA, specifically designed for the sports VideoQA task. The Sports-QA dataset includes various types of questions, such as descriptions, chronologies, causalities, and counterfactual conditions, covering multiple sports. Furthermore, to address the characteristics of the sports VideoQA task, we propose a new Auto-Focus Transformer (AFT) capable of automatically focusing on particular scales of temporal information for question answering. We conduct extensive experiments on Sports-QA, including baseline studies and the evaluation of different methods. The results demonstrate that our AFT achieves state-of-the-art performance.