An Autonomous System for Efficient Control of PTZ Cameras

S. Davani, Musab S. Al-Hadrusi, Nabil J. Sarhan
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引用次数: 3

Abstract

This article addresses the research problem of how to autonomously control Pan/Tilt/Zoom (PTZ) cameras in a manner that seeks to optimize the face recognition accuracy or the overall threat detection and proposes an overall system. The article presents two alternative schemes for camera scheduling: Grid-Based Grouping (GBG) and Elevator-Based Planning (EBP). The camera control works with realistic 3D environments and considers many factors, including the direction of the subject’s movement and its location, distances from the cameras, occlusion, overall recognition probability so far, and the expected time to leave the site, as well as the movements of cameras and their capabilities and limitations. In addition, the article utilizes clustering to group subjects, thereby enabling the system to focus on the areas that are more densely populated. Moreover, it proposes a dynamic mechanism for controlling the pre-recording time spent on running the solution. Furthermore, it develops a parallel algorithm, allowing the most time-consuming phases to be parallelized, and thus run efficiently by the centralized parallel processing subsystem. We analyze through simulation the effectiveness of the overall solution, including the clustering approach, scheduling alternatives, dynamic mechanism, and parallel implementation in terms of overall recognition probability and the running time of the solution, considering the impacts of numerous parameters.
一种高效控制PTZ相机的自主系统
本文针对如何以优化人脸识别精度或整体威胁检测的方式自主控制平移/倾斜/变焦(PTZ)摄像机的研究问题,提出了一个整体系统。本文提出了两种摄像机调度方案:基于网格的分组(GBG)和基于电梯的规划(EBP)。相机控制工作与现实的3D环境,并考虑许多因素,包括主体的运动方向和它的位置,距离相机,遮挡,整体识别概率到目前为止,预计时间离开现场,以及相机的运动和他们的能力和局限性。此外,本文利用集群对主题进行分组,从而使系统能够关注人口更密集的区域。此外,它还提出了一种动态机制来控制运行解决方案所花费的预记录时间。此外,它还开发了一种并行算法,允许将最耗时的阶段并行化,从而通过集中式并行处理子系统高效运行。在考虑众多参数影响的情况下,通过仿真分析了整体方案的有效性,包括聚类方法、调度方案、动态机制、并行实现等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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