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首页> 外文期刊>Proceedings of the IEEE >Multimedia Semantics: Interactions Between Content and Community
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Multimedia Semantics: Interactions Between Content and Community

机译:多媒体语义:内容与社区之间的互动

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摘要

This paper reviews the state of the art and some emerging issues in research areas related to pattern analysis and monitoring of web-based social communities. This research area is important for several reasons. First, the presence of near-ubiquitous low-cost computing and communication technologies has enabled people to access and share information at an unprecedented scale. The scale of the data necessitates new research for making sense of such content. Furthermore, popular websites with sophisticated media sharing and notification features allow users to stay in touch with friends and loved ones; these sites also help to form explicit and implicit social groups. These social groups are an important source of information to organize and to manage multimedia data. In this article, we study how media-rich social networks provide additional insight into familiar multimedia research problems, including tagging and video ranking. In particular, we advance the idea that the contextual and social aspects of media are as important for successful multimedia applications as is the media content. We examine the inter-relationship between content and social context through the prism of three key questions. First, how do we extract the context in which social interactions occur? Second, does social interaction provide value to the media object? Finally, how do social media facilitate the repurposing of shared content and engender cultural memes? We present three case studies to examine these questions in detail. In the first case study, we show how to discover structure latent in the social media data, and use the discovered structure to organize Flickr photo streams. In the second case study, we discuss how to determine the interestingness of conversations—and of participants—around videos uploaded to YouTube. Finally, we show how the analysis of visual content, in particular tracing of content remixes, can help us understand the relationship among YouTube p- rticipants. For each case, we present an overview of recent work and review the state of the art. We also discuss two emerging issues related to the analysis of social networks—robust data sampling and scalable data analysis.
机译:本文回顾了与基于Web的社会社区的模式分析和监视有关的研究领域中的最新技术和一些新兴问题。该研究领域之所以重要,有几个原因。首先,几乎无处不在的低成本计算和通信技术的出现使人们能够以前所未有的规模访问和共享信息。数据的规模需要对这种内容的意义进行新的研究。此外,具有完善的媒体共享和通知功能的流行网站使用户可以与亲朋好友保持联系;这些站点还有助于形成显性和隐性的社会群体。这些社会团体是组织和管理多媒体数据的重要信息来源。在本文中,我们研究富媒体的社交网络如何提供对熟悉的多媒体研究问题(包括标签和视频排名)的更多了解。尤其是,我们提出了这样的想法,即媒体的上下文和社会方面对于成功的多媒体应用而言,与媒体内容一样重要。我们通过三个关键问题来考察内容与社会背景之间的相互关系。首先,我们如何提取社交互动发生的环境?第二,社会互动是否为媒体对象提供了价值?最后,社交媒体如何促进共享内容的重新利用和产生文化模因?我们提出了三个案例研究来详细研究这些问题。在第一个案例研究中,我们展示了如何发现社交媒体数据中潜在的结构,并使用发现的结构来组织Flickr照片流。在第二个案例研究中,我们讨论如何确定关于上载到YouTube的视频的对话以及参与者的趣味性。最后,我们展示了对视觉内容的分析,尤其是对内容混音的追踪,可以如何帮助我们理解YouTube参与者之间的关系。对于每种情况,我们都会提供最新工作的概述并回顾最新技术。我们还将讨论与社交网络分析相关的两个新出现的问题-健壮的数据采样和可伸缩的数据分析。

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