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On source-channel coding over Gaussian sensor networks for path planning

机译:基于高斯传感器网络的源通道编码,用于路径规划

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Path planning is an important component of mobile sensor and autonomous mobile systems. This paper studies inner and outer bounds for joint source-channel coding over Gaussian sensor networks, to drive power-distortion metrics for path planning problems for sensor data gathering. The Gaussian multiple access channel is considered for two source models. In the first setting, the underlying source is estimated with minimum mean squared error (MSE), while in the second, reconstruction of a random field is considered. The second problem simplifies to weighted MSE minimization over the sensor measurements. For both cases, we identify conditions for optimality of uncoded communication, beyond the known optimality results. For both problem settings, we derive inner and outer bounds of sensor power-distortion curve. Next, we consider optimal power allocation among sensors under a total weighted sum power constraint and obtain closed form characterizations of optimal total power versus distortion tradeoff. We numerically analyze the gap between outer and inner bounds for both total power and individual power constrained settings.
机译:路径规划是移动传感器和自主移动系统的重要组成部分。本文研究了高斯传感器网络上联合源通道编码的内边界和外边界,以驱动功率失真度量,解决传感器数据收集的路径规划问题。对于两个源模型,考虑了高斯多址通道。在第一种设置中,使用最小均方误差(MSE)估算基础源,而在第二种设置中,考虑重建随机字段。第二个问题简化为传感器测量结果中的加权MSE最小化。对于这两种情况,除了已知的最优结果之外,我们还确定了未编码通信最优的条件。对于这两个问题设置,我们导出传感器功率失真曲线的内边界和外边界。接下来,我们考虑在总加权和功率约束下传感器之间的最佳功率分配,并获得最佳总功率与失真权衡之间的闭合形式特征。我们从数值上分析了总功率和单个功率约束设置的外部边界和内部边界之间的差距。

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