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Automatically assessing properties of dynamic cameras for camera selection and rapid deployment of video-content-analysis tasks in large-scale ad-hoc networks

机译:自动评估动态摄像机的属性,以选择摄像机并在大规模自组织网络中快速部署视频内容分析任务

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Video analytics is essential for managing large quantities of raw data that are produced by video surveillance systems (VSS) for the prevention, repression and investigation of crime and terrorism. Analytics is highly sensitive to changes in the scene, and for changes in the optical chain so a VSS with analytics needs careful configuration and prompt maintenance to avoid false alarms. However, there is a trend from static VSS consisting of fixed CCTV cameras towards more dynamic VSS deployments over public/private multi-organization networks, consisting of a wider variety of visual sensors, including pan-tilt-zoom (PTZ) cameras, body-worn cameras and cameras on moving platforms. This trend will lead to more dynamic scenes and more frequent changes in the optical chain, creating structural problems for analytics. If these problems are not adequately addressed, analytics will not be able to continue to meet end users' developing needs. In this paper, we present a three-part solution for managing the performance of complex analytics deployments. The first part is a register containing meta data describing relevant properties of the optical chain, such as intrinsic and extrinsic calibration, and parameters of the scene such as lighting conditions or measures for scene complexity (e.g. number of people). A second part frequently assesses these parameters in the deployed VSS, stores changes in the register, and signals relevant changes in the setup to the VSS administrator. A third part uses the information in the register to dynamically configure analytics tasks based on VSS operator input. In order to support the feasibility of this solution, we give an overview of related state-of-the-art technologies for autocalibration (self-calibration), scene recognition and lighting estimation in relation to person detection. The presented solution allows for rapid and robust deployment of Video Content Analysis (VCA) tasks in large scale ad-hoc networks.
机译:视频分析对于管理由视频监控系统(VSS)生成的大量原始数据至关重要,以预防,压制和调查犯罪和恐怖主义。分析对场景的变化和光链的变化非常敏感,因此具有分析功能的VSS需要仔细配置和及时维护,以避免误报。但是,趋势是从固定的CCTV摄像机组成的静态VSS到公共/私有多组织网络上的动态VSS部署,该网络由更广泛的视觉传感器组成,包括全景云台(PTZ)摄像机,磨损的相机和移动平台上的相机。这种趋势将导致更动态的场景和光学链中更频繁的更改,从而为分析带来结构性问题。如果这些问题未能得到充分解决,则分析将无法继续满足最终用户的发展需求。在本文中,我们提供了一个由三部分组成的解决方案,用于管理复杂分析部署的性能。第一部分是一个寄存器,其中包含描述光链相关属性(例如内部和外部校准)以及场景参数(例如照明条件或场景复杂度(例如人数)的度量)的元数据。第二部分经常在已部署的VSS中评估这些参数,将更改存储在寄存器中,并将设置中的相关更改发送给VSS管理员。第三部分使用寄存器中的信息基于VSS操作员输入动态配置分析任务。为了支持该解决方案的可行性,我们概述了与人检测有关的自动校准(自我校准),场景识别和照明估计的相关最新技术。提出的解决方案允许在大规模自组织网络中快速而强大地部署视频内容分析(VCA)任务。

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