自动重新配置视频传感器网络,以获得最佳的3D覆盖

C. Piciarelli, C. Micheloni, G. Foresti
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引用次数: 25

摘要

近年来,视频分析领域的研究越来越集中在视频传感器网络上。虽然单传感器处理仍然是一个开放的研究领域,但目前的实际应用要求视频分析系统明确地同时考虑多个传感器,因为使用多个传感器可以带来更好的跟踪,物体识别等算法。然而,给定一个视频传感器网络,为了优化系统性能,网络应该如何配置(就传感器方向而言)并不总是很清楚。在这项工作中,我们提出了一种计算(局部)最优网络配置的方法,使3D环境的覆盖范围最大化,假设存在环境的相关图,表示每个区域的覆盖优先级。所提出的方法依赖于将观察到的环境投影到一个新的空间中的转换,在这个空间中,问题可以通过应用于高斯混合模型的期望最大化算法等标准技术来解决。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic reconfiguration of video sensor networks for optimal 3D coverage
During the last years, the research in the field of video analytics has focused more and more on video sensor networks. Although single-sensor processing is still an open research field, practical applications nowadays require video analysis systems to explicitly consider multiple sensors at once, since the use of multiple sensors can lead to better algorithms for tracking, object recognition, etc. However, given a network of video sensors, it is not always clear how the network should be configured (in terms of sensor orientations) in order to optimize the system performance. In this work we propose a method to compute a (locally) optimal network configuration maximizing the coverage of a 3D environment, given that a relevance map of the environment exists, expressing the coverage priorities for each zone. The proposed method relies on a transformation projecting the observed environment into a new space where the problem can be solved by means of standard techniques such as the Expectation-Maximization algorithm applied to Gaussian Mixture Models.
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