面向有效监控的自主PTZ摄像机动态调度

Pratibha Kumari, Nikhil Nandyala, Allu Krishna Sai Teja, Neeraj Goel, Mukesh Saini
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引用次数: 3

摘要

PTZ摄像机可以有效地替代多个摄像机网络,因为它们具有平移倾斜变焦功能。然而,目前最先进的PTZ相机调度方法主要集中在跟踪上,而不是覆盖上。在本文中,我们的目标是最大限度地覆盖和信息增益,从而导致有效的监控。为了实现这一目标,我们定义了一个表示区域敏感性的信息映射。我们提出了一种调度算法,其中摄像机访问那些可能比其他状态更重要的状态,从而最大化信息增益。使用概率框架来同时最大化信息增益和覆盖范围。目前,没有现成的数据集和方法来评估PTZ摄像机调度方法。我们建立了一个真正的多相机数据集,并为此目的开发了一个性能度量。实验结果表明,本文提出的基于自适应信息增益概率的随机调度算法在信息增益和覆盖范围方面都优于传统算法和本文提出的其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Scheduling of an Autonomous PTZ Camera for Effective Surveillance
PTZ cameras can be an effective replacement for multiple camera networks with their pan-tilt-zoom capability. However, the state of the art scheduling method for the PTZ cameras focuses mainly on tracking, not on coverage. In this paper, we aim to maximize coverage as well as information gain, thus, leading to effective surveillance. Towards this goal, we define an information map that represents the sensitivity of a region. We propose a scheduling algorithm in which the camera visits those states more often that are likely to be more important than others, thus, maximizing information gain. A probabilistic framework is used to maximize information gain and coverage simultaneously. Currently, there are no existing datasets and methods to evaluate PTZ camera scheduling methods. We build a real multi-camera dataset and develop a performance measure for this purpose. Experimental results show that the proposed stochastic scheduling algorithm based on adaptive information gain probability is better than traditional as well as other variants proposed in the paper in terms of information gain as well as coverage.
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