Automatic Curation of Golf Highlights Using Multimodal Excitement Features

Michele Merler, D. Joshi, Q. Nguyen, Stephen Hammer, John Kent, John R. Smith, R. Feris
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引用次数: 18

Abstract

The production of sports highlight packages summarizing a game’s most exciting moments is an essential task for broadcast media. Yet, it requires labor-intensive video editing. We propose a novel approach for auto-curating sports highlights, and use it to create a real-world system for the editorial aid of golf highlight reels. Our method fuses information from the players’ reactions (action recognition such as high-fives and fist pumps), spectators (crowd cheering), and commentator (tone of the voice and word analysis) to determine the most interesting moments of a game. We accurately identify the start and end frames of key shot highlights with additional metadata, such as the player’s name and the hole number, allowing personalized content summarization and retrieval. In addition, we introduce new techniques for learning our classifiers with reduced manual training data annotation by exploiting the correlation of different modalities. Our work has been demonstrated at a major golf tournament, successfully extracting highlights from live video streams over four consecutive days.
使用多模式兴奋功能的高尔夫亮点自动管理
制作总结一场比赛最激动人心时刻的体育集锦是广播媒体的一项重要任务。然而,它需要劳动密集型的视频编辑。我们提出了一种新的方法来自动管理体育集锦,并用它来创建一个真实世界的系统,用于高尔夫集锦录像的编辑辅助。我们的方法融合了来自玩家反应(如击掌和握拳等动作识别)、观众(人群欢呼)和解说员(声音和文字分析)的信息,以确定游戏中最有趣的时刻。我们用额外的元数据,如球员的名字和洞号,准确地识别关键击球高光的开始和结束帧,允许个性化的内容总结和检索。此外,我们引入了新的技术,通过利用不同模态的相关性,减少人工训练数据注释来学习我们的分类器。我们的工作已经在一场大型高尔夫锦标赛中得到了验证,成功地从连续四天的实时视频流中提取了精彩片段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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