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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Video data mining: semantic indexing and event detection from the association perspective
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Video data mining: semantic indexing and event detection from the association perspective

机译:视频数据挖掘:从关联的角度进行语义索引和事件检测

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摘要

Advances in the media and entertainment industries, including streaming audio and digital TV, present new challenges for managing and accessing large audio-visual collections. Current content management systems support retrieval using low-level features, such as motion, color, and texture. However, low-level features often have little meaning for naive users, who much prefer to identify content using high-level semantics or concepts. This creates a gap between systems and their users that must be bridged for these systems to be used effectively. To this end, in this paper, we first present a knowledge-based video indexing and content management framework for domain specific videos (using basketball video as an example). We will provide a solution to explore video knowledge by mining associations from video data. The explicit definitions and evaluation measures (e.g., temporal support and confidence) for video associations are proposed by integrating the distinct feature of video data. Our approach uses video processing techniques to find visual and audio cues (e.g., court field, camera motion activities, and applause), introduces multilevel sequential association mining to explore associations among the audio and visual cues, classifies the associations by assigning each of them with a class label, and uses their appearances in the video to construct video indices. Our experimental results demonstrate the performance of the proposed approach.
机译:流媒体和数字电视等媒体和娱乐行业的进步为管理和访问大型视听收藏品提出了新的挑战。当前的内容管理系统支持使用低级功能(例如运动,颜色和纹理)进行检索。但是,低级功能通常对于天真的用户而言意义不大,他们更喜欢使用高级语义或概念来标识内容。这在系统及其用户之间造成了一定的差距,必须加以弥合才能有效使用这些系统。为此,在本文中,我们首先提出一个针对特定领域视频的基于知识的视频索引和内容管理框架(以篮球视频为例)。我们将提供一种通过从视频数据中挖掘关联来探索视频知识的解决方案。通过整合视频数据的独特特征,提出了视频关联的明确定义和评估措施(例如,时间支持和置信度)。我们的方法使用视频处理技术来查找视觉和音频提示(例如,球场,摄像机运动活动和掌声),引入多级顺序关联挖掘以探究音频和视觉提示之间的关联,并通过将每个关联分配给他们来对关联进行分类类标签,并使用它们在视频中的出现来构造视频索引。我们的实验结果证明了所提出方法的性能。

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