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DC Proposal: Enriching Unstructured Media Content about Events to Enable Semi-automated Summaries, Compilations, and Improved Search by Leveraging Social Networks

机译:DC提议:丰富非结构化媒体内容,有关事件,以实现半自动摘要,编译和通过利用社交网络进行改进的搜索

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Mobile devices like smartphones together with social networks enable people to generate, share, and consume enormous amounts of media content. Common search operations, for example searching for a music clip based on artist name and song title on video platforms such as YouTube, can be achieved both based on potentially shallow human-generated metadata, or based on more profound content analysis, driven by Optical Character Recognition (OCR) or Automatic Speech Recognition (ASR). However, more advanced use cases, such as summaries or compilations of several pieces of media content covering a certain event, are hard, if not impossible to fulfill at large scale. One example of such event can be a keynote speech held at a conference, where, given a stable network connection, media content is published on social networks while the event is still going on. In our thesis, we develop a framework for media content processing, leveraging social networks, utilizing the Web of Data and fine-grained media content addressing schemes like Media Fragments URIs to provide a scalable and sophisticated solution to realize the above use cases: media content summaries and compilations. We evaluate our approach on the entity level against social media platform APIs in conjunction with Linked (Open) Data sources, comparing the current manual approaches against our semi-automated approach. Our proposed framework can be used as an extension for existing video platforms.
机译:像智能手机一样的移动设备与社交网络使人们能够生成,共享和消耗大量媒体内容。常见的搜索操作,例如根据艺术家姓名和歌曲标题在诸如YouTube的视频平台上搜索音乐剪辑,可以基于潜在的浅层人生成的元数据来实现,或者基于由光学字符驱动的更广泛的内容分析识别(OCR)或自动语音识别(ASR)。然而,更高级的用例,例如覆盖某事件的几件媒体内容的摘要或汇编,很难,如果不是不可能以大规模履行。此类事件的一个示例可以是在会议上举行的主题演讲,给定稳定的网络连接,媒体内容在事件仍在继续时在社交网络上发布。在我们的论文中,我们开发了一个媒体内容处理的框架,利用社交网络,利用数据的Web和细粒度媒体内容寻址方案,如媒体片段URI,以提供可扩展和复杂的解决方案,以实现上述用例:媒体内容摘要和汇编。我们将我们的方法与社交媒体平台API相结合,与链接(公开)数据源相结合,比较目前对半自动方法的目前的手动方法。我们所提出的框架可用作现有视频平台的扩展。

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