最佳传感器放置监视大空间

S. Indu, S. Chaudhury, Nikhil R. Mittal, A. Bhattacharyya
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引用次数: 50

摘要

视觉传感器网络的设计促进了智能房间、视频监控、自动多摄像头跟踪、活动识别等应用。这些应用需要一个有效的视觉传感器布局,提供最低水平的图像质量或图像分辨率。本文解决了优化放置多个PTZ摄像机的实际问题,以确保用户定义的优先区域的最大覆盖范围,并具有最佳的平移,倾斜,变焦和摄像机位置等参数值。该算法可以离线工作,不需要相机校准。我们通过将覆盖矩阵定义为一组传感器参数和空间模型参数(如优先区域、障碍物和传感器的可行位置),并通过使用概率框架工作对离散空间建模,将该问题映射为使用遗传算法的优化问题。我们通过使用多个摄像机覆盖每个优先区域来最小化由于随机移动物体而导致的遮挡概率。提议的方法将适用于具有离散优先区域的大型空间的监视,例如有多个入口的大厅或在大厅的不同位置发生的许多事件,例如赌场。由于我们对摄像机的平移、倾斜、变焦甚至位置等参数进行了优化,这种方法所提供的覆盖范围将保证良好的分辨率,从而提高了视觉传感器网络的QOS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal sensor placement for surveillance of large spaces
Visual sensor network design facilitates applications such as intelligent rooms, video surveillance, automatic multi-camera tracking, activity recognition etc. These applications require an efficient visual sensor layout which provides a minimum level of image quality or image resolution. This paper addresses the practical problem of optimally placing the multiple PTZ cameras to ensure maximum coverage of user defined priority areas with optimum values of parameters like pan, tilt, zoom and the locations of the cameras. The proposed algorithm works offline and does not require camera calibration. We mapped this problem as an optimization problem using Genetic Algorithm, by defining, coverage matrix as a set of sensor parameters and the space model parameters like priority areas, obstacles and feasible locations of the sensors, and by modelling discrete spaces using probabilistic frame work. We minimized the probability of occlusion due to randomly moving objects by covering each priority area using multiple cameras. The proposed method will be applicable for surveillance of large spaces with discrete priority areas like a hall with more than one entrance or many events happening at different locations in a hall eg.Casino. As we are optimizing the parameters like pan, tilt, zoom and even the locations of the cameras, the coverage provided by this approach will assure good resolution, which improves the QOS of the visual sensor network.
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