Multi-mode Summarization of Surveillance Videos using Supervised Learning techniques

R. M, Aruna Devi, Divya Mo
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引用次数: 0

Abstract

Video summarization has been a prevailing area due to the wide use of surveillance systems. Extracting the contents from these video frames for domain-specific usage has become a tedious task. There are many approaches for the augmentation and detection of video content. A single platform for generating a summary of the surveillance videos will be revolutionary as security surveillance is becoming challenging day by day. This work is based on the various literature available for managing the video content especially for extracting the face, activity, and detecting the Object of Interest (OoI). The agents are identified based on an extensive literature survey on various approaches for object detection, activity recognition, and identity verification. The survey has helped to find out the best-performing algorithm in each of the above-mentioned domain. The work has proposed a unique architecture, Multi-mode Summarization of Survellance video System(MSSVS) where the observer can select agents, and based on this the metatag of the activity can be generated.
使用监督学习技术的多模式监控视频摘要
由于监控系统的广泛使用,视频摘要已经成为一个流行的领域。从这些视频帧中提取用于特定领域的内容已经成为一项乏味的任务。增强和检测视频内容的方法有很多。随着安全监控日益具有挑战性,一个生成监控视频摘要的单一平台将是革命性的。这项工作是基于各种可用于管理视频内容的文献,特别是用于提取人脸,活动和检测感兴趣对象(OoI)。这些代理是基于对各种对象检测、活动识别和身份验证方法的广泛文献调查来确定的。该调查有助于找出在上述每个领域中表现最好的算法。该工作提出了一种独特的体系结构,即监控视频系统的多模式摘要(MSSVS),其中观察者可以选择代理,并在此基础上生成活动的元标记。
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