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Resource Allocation in Visual Sensor Networks U sing a Reinforcement Learning Framework

机译:Visual Sensor网络中的资源分配U唱一种强化学习框架

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In recent years, video delivery over wireless visual sensor networks (VSNs) has gained increasing attention. The lossy compression and channel errors that occur during wireless multimedia transmissions can degrade the quality of the transmitted video sequences. This paper addresses the problem of cross-layer resource allocation among the nodes of a wireless direct-sequence code division multiple access (DS-CDMA) VSN. The optimal group of pictures (GoP) length during the encoding process is also considered, based on the motion level of each video sequence. Three optimization criteria that optimize a different objective function of the video qualities of the nodes are used. The nodes' transmission parameters, i.e., the source coding rates, channel coding rates and power levels can only take discrete values. In order to tackle the resulting optimization problem, a reinforcement learning (RL) strategy that promises efficient exploration and exploitation of the parameters' space is employed. This makes the proposed methodology usable in large or continuous state spaces as well as in an online mode. Experimental results highlight the efficiency of the proposed method.
机译:近年来,通过无线视觉传感器网络(VSN)的视频交付越来越受到关注。无线多媒体传输期间发生的有损压缩和信道错误可以降低发送的视频序列的质量。本文解决了无线直接序列码分多次访问(DS-CDMA)VSN的节点之间的跨层资源分配问题。基于每个视频序列的运动水平,还考虑了编码过程期间的最佳图片(GOP)长度。使用三种优化节点视频质量的不同目标函数的优化标准。节点的传输参数,即源编码率,信道编码率和功率电平只能采用离散值。为了解决所产生的优化问题,采用了一种强化学习(RL)策略,其承诺对参数空间的有效探索和开发的策略。这使得在大型或连续状态空间以及在线模式中可以使用所提出的方法。实验结果突出了提出的方法的效率。

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