Learning to be Different: Heterogeneity and Efficiency in Distributed Smart Camera Networks

Peter R. Lewis, Lukas Esterle, A. Chandra, B. Rinner, X. Yao
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引用次数: 27

Abstract

In this paper we study the self-organising behaviour of smart camera networks which use market-based handover of object tracking responsibilities to achieve an efficient allocation of objects to cameras. Specifically, we compare previously known homogeneous configurations, when all cameras use the same marketing strategy, with heterogeneous configurations, when each camera makes use of its own, possibly different marketing strategy. Our first contribution is to establish that such heterogeneity of marketing strategies can lead to system wide outcomes which are Pareto superior when compared to those possible in homogeneous configurations. However, since the particular configuration required to lead to Pareto efficiency in a given scenario will not be known in advance, our second contribution is to show how online learning of marketing strategies at the individual camera level can lead to high performing heterogeneous configurations from the system point of view, extending the Pareto front when compared to the homogeneous case. Our third contribution is to show that in many cases, the dynamic behaviour resulting from online learning leads to global outcomes which extend the Pareto front even when compared to static heterogeneous configurations. Our evaluation considers results obtained from an open source simulation package as well as data from a network of real cameras.
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学习与众不同:分布式智能摄像机网络的异质性和效率
本文研究了智能摄像机网络的自组织行为,该网络利用基于市场的目标跟踪责任移交来实现目标到摄像机的有效分配。具体来说,我们比较了之前已知的同质配置,即所有摄像机都使用相同的营销策略,以及异质配置,即每个摄像机都使用自己的,可能不同的营销策略。我们的第一个贡献是建立这种营销策略的异质性可以导致系统范围内的结果,这是帕累托优于那些可能在同质配置。然而,由于在给定情况下导致帕累托效率所需的特定配置是无法提前知道的,我们的第二个贡献是展示了从系统的角度来看,个人相机级别的营销策略的在线学习如何导致高性能的异构配置,与同质情况相比,扩展了帕累托前沿。我们的第三个贡献是表明,在许多情况下,在线学习产生的动态行为导致了扩展帕累托前沿的全局结果,即使与静态异构配置相比也是如此。我们的评估考虑了从开源模拟包获得的结果以及来自真实摄像机网络的数据。
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