Live Semantic Sport Highlight Detection Based on Analyzing Tweets of Twitter

Liang-Chi Hsieh, Ching-Wei Lee, Tzu-Hsuan Chiu, Winston H. Hsu
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引用次数: 40

Abstract

Microblogging as a new form of communication on Internet, has attracted the attention from researchers recently. Relying the real-time and conversational properties of microblogging, its users update their statuses and share experience within their the social network. Those characteristics also make microblogging an important tool for users to share or discuss real world events such as earth quake or sport game. In this paper, we propose a novel and flexible solution to detect and recognize real-time events from sport games based on analyzing the messages posted on microblogging services. We take Twitter as the experiment platform and collect a large-scale dataset of Twitter messages that are called tweets for 18 prominent sport games covering four types of sports in 2011. We also collect corresponding sport videos for those games. The proposed solution applies moving-threshold burst detection on the volume of tweets to detect highlights in sport games. A tf-idf-based weighting method is applied on the tweets within detected highlights for semantic extraction. According to the experiments we perform on the tweet and video datasets, we find that the proposed methods can achieve competent performance in sport event detection and recognition. Besides, our method can find non pre-defined tidbits that are difficult to detect in previous works.
基于Twitter推文分析的实时语义体育高光检测
微博作为一种新型的网络传播方式,近年来引起了研究者的广泛关注。依靠微博的实时性和会话性,它的用户可以在他们的社交网络中更新他们的状态并分享经验。这些特点也使微博成为用户分享或讨论地震或体育比赛等现实世界事件的重要工具。在本文中,我们提出了一种新颖而灵活的解决方案,通过分析微博服务上发布的消息来检测和识别体育赛事中的实时事件。我们以Twitter为实验平台,收集了2011年18场突出的体育比赛的推特消息(tweets)的大规模数据集,涵盖了四种运动类型。我们还为这些比赛收集相应的体育视频。提出的解决方案对推文的音量应用移动阈值突发检测来检测体育比赛中的亮点。将基于tf-idf的加权方法应用于检测到的高亮内的tweet进行语义提取。通过对推文和视频数据集的实验,我们发现所提出的方法在体育赛事检测和识别中取得了较好的效果。此外,我们的方法可以发现在以前的工作中难以发现的非预定义花絮。
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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