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A novel framework and concept-based semantic search Interface for abnormal crowd behaviour analysis in surveillance videos

机译:用于监控视频中的异常人群行为分析的新框架和基于概念的语义搜索界面

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摘要

Monitoring continuously captured surveillance videos is a challenging and time consuming task. To assist this issue, a new framework is introduced that applies anomaly detection, semantic annotation and provides a concept-based search interface. In particular, novel optical flow based features are used for abnormal crowd behaviour detection. Then, processed surveillance videos are annotated using a new semantic metadata model based on multimedia standards using Semantic Web technologies. In this way, globally inter-operable metadata about abnormal crowd behaviours are generated. Finally, for the first time, based on crowd behaviours, a novel concept-based semantic search interface is proposed. In the proposed interface, along with search results (video segments), statistical data about crowd behaviours are also presented. With extensive user studies, it is demonstrated that the proposed concept-based semantic search interface enables efficient search and analysis of abnormal crowd behaviours. Although there are existing works to achieve (a) crowd anomaly detection, (b) semantic annotation and (c) semantic search interface, none of the existing works combine these three system components in a novel framework like the one proposed in this paper. In each system component, we introduce contributions to the field as well as use the Semantic Web technologies to combine and standardize output of different system components; output of the anomaly detection is automatically annotated with metadata and stored to a semantic database. When continuous surveillance videos are processed, only the semantic database is updated. Finally, the user interface queries the updated database for searching/analyzing surveillance videos without changing any coding. Thus, the framework supports re-usability. This paper explains and evaluates different components of the framework.
机译:监控连续捕获的监控视频是一个具有挑战性和耗时的任务。为协助此问题,引入了一个新的框架,用于应用异常检测,语义注释,并提供基于概念的搜索界面。特别地,基于新的光流量的特征用于异常人群行为检测。然后,使用基于使用语义Web技术的多媒体标准,使用新的语义元数据模型来注释处理的监视视频。以这种方式,生成了关于异常人群行为的全局可互操作的元数据。最后,首次基于人群行为,提出了一种新的基于概念的语义搜索界面。在所提出的界面中,以及搜索结果(视频段),还呈现了关于人群行为的统计数据。通过广泛的用户研究,据证明了所提出的基于概念的语义搜索界面可以有效地搜索和分析异常人群行为。虽然有现有的工作来实现(a)人群异常检测,(b)语义注释和(c)语义搜索界面,但没有现有的作品在本文中提出的新颖框架中结合了这三个系统组件。在每个系统组件中,我们向该领域介绍贡献,并使用语义网络技术组合和标准化不同系统组件的输出;异常检测的输出与元数据自动注释并存储到语义数据库。处理连续监控视频时,只更新语义数据库。最后,用户界面查询更新的数据库以搜索/分析监控视频而不更改任何编码。因此,该框架支持重新使用。本文解释并评估了框架的不同组成部分。

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