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首页> 外文期刊>IEEE Transactions on Automatic Control >A Payoff-Based Learning Approach to Cooperative Environmental Monitoring for PTZ Visual Sensor Networks
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A Payoff-Based Learning Approach to Cooperative Environmental Monitoring for PTZ Visual Sensor Networks

机译:PTZ视觉传感器网络基于支付的合作环境监控学习方法

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This paper addresses cooperative environmental monitoring for Pan-Tilt-Zoom (PTZ) visual sensor networks. In particular, we investigate the optimal monitoring problem whose objective function value is intertwined with the uncertain state of the physical world. In addition, due to the large volume of vision data, it is desired for each sensor to execute processing through local computation and communication. To address these issues, we present a distributed solution to the problem based on game theoretic cooperative control and payoff-based learning. At the first stage, a utility function is designed so that the resulting game constitutes a potential game with potential function equal to the group objective function, where the designed utility is shown to be computable through local image processing and communication. Then, we present a payoff-based learning algorithm so that the sensors are led to the global objective function maximizers without using any prior information on the environmental state. Finally, we run experiments to demonstrate the effectiveness of the present approach.
机译:本文介绍了针对Pan-Tilt-Zoom(PTZ)视觉传感器网络的合作环境监视。特别是,我们研究了其目标函数值与物理世界的不确定状态交织在一起的最优监控问题。另外,由于大量的视觉数据,期望每个传感器通过本地计算和通信来执行处理。为了解决这些问题,我们提出了基于博弈论的合作控制和基于收益的学习的分布式解决方案。在第一阶段,设计效用函数,以使最终的游戏构成具有等于组目标函数的潜在函数的潜在游戏,其中设计的效用显示为可通过本地图像处理和通信计算。然后,我们提出了一种基于支付的学习算法,从而使传感器无需使用任何有关环境状态的先验信息即可被引入全局目标函数最大化器。最后,我们进行实验以证明本方法的有效性。

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