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Distributed Estimation, Coding, and Scheduling in Wireless Visual Sensor Networks.

机译:无线视觉传感器网络中的分布式估计,编码和调度。

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摘要

In this thesis, we consider estimation, coding, and sensor scheduling for energy efficient operation of wireless visual sensor networks (VSN), which consist of battery-powered wireless sensors with sensing (imaging), computation, and communication capabilities. The competing requirements for applications of these wireless sensor networks (WSN) (e.g., smart environmental surveillance) include long duration of unattended operation and limited energy supply, which motivate our investigation into energy-efficient estimation, coding, and sensor scheduling to prolong the lifetime of these wireless networked systems. Motivated by a telepresence setting in visual sensor networks, we first consider an abstract setting for investigating efficient distributed estimation and coding in wireless sensor networks where the captured data is jointly Gaussian. The sensors are geographically dispersed, and acquire indirect, noisy observations pertaining to a desired signal. A central processor (CP) communicates with these sensors via a rate-constrained channel and estimates the desired signal. In a simplified scenario where information from one sensor is to be sent to the CP that already has information regarding the desired signal, we establish a decomposed structure for the optimal encoding of the local observation: a first pre-processing step to extract elevant information from the indirect observation with consideration of the side information, followed by a second step of side-informed encoding of the pre-processed output. In the general scenario consisting of multiple sensors, we present a sequential framework to recursively utilize the separation. Simulation results demonstrate that constructions obtained using the proposed decomposition offer very good performance, closely matching nonconstructive information theoretic bounds for the problem. We next propose a novel code construction and design method for low-density parity-check accumulate (LDPCA) codes used for rate-adaptive distributed source coding. We propose a code construction using non-uniform splitting, in contrast to the uniform splitting used in prior literature. We also develop methods to analyze the proposed LDPCA codes using density evolution, based on which code search strategies are developed to find good LDPCA codes. Simulation results show the proposed code design outperforms the conventional LDPCA code design, and provides state-of-the-art performance. The final part of the thesis addresses the networking aspect of VSNs, considering sensor scheduling and energy allocation in a telepresence wireless VSN application, where visual coverage over a monitored region is obtained by deploying image sensors (cameras). Each camera provides coverage over a part of the monitored region, and a CP coordinates these cameras in order to gather required visual data. We model the network lifetime as a stochastic random variable that depends upon the coverage geometry for the cameras and the distribution of data requests over the monitored region, two key characteristics that distinguish our problem from other WSN applications. By suitably abstracting this model of network lifetime and utilizing asymptotic analysis, we propose lifetime-maximizing camera scheduling and energy allocation strategies. The effectiveness of the proposed strategies is validated through simulations.
机译:在本文中,我们考虑了无线视觉传感器网络(VSN)的节能运行的估计,编码和传感器调度,该网络由具有感应(成像),计算和通信功能的电池供电无线传感器组成。这些无线传感器网络(WSN)应用的竞争要求(例如,智能环境监控)包括无人值守的长时间运行和有限的能源供应,这促使我们对节能评估,编码和传感器调度进行研究,以延长使用寿命这些无线联网系统。受视觉传感器网络中的智真设置的启发,我们首先考虑一种抽象设置,用于研究无线传感器网络中有效的分布式估计和编码,其中捕获的数据共同为高斯。传感器在地理位置上分散,并获得与所需信号有关的间接,嘈杂的观测结果。中央处理器(CP)通过速率受限的通道与这些传感器通信,并估计所需的信号。在将来自一个传感器的信息发送到已经具有与所需信号有关的信息的CP的简化方案中,我们建立了用于局部观测的最佳编码的分解结构:第一个预处理步骤,用于从中提取电子信息在考虑辅助信息的情况下进行间接观察,然后进行预处理输出的辅助信息的第二步编码。在由多个传感器组成的一般情况下,我们提出了一个顺序框架以递归地利用分离。仿真结果表明,使用所提出的分解方法获得的构造具有很好的性能,与该问题的非构造信息理论范围非常匹配。接下来,我们提出一种用于速率自适应分布式源编码的低密度奇偶校验累积(LDPCA)码的新型码构造和设计方法。与现有文献中使用的统一拆分相比,我们提出了使用非统一拆分的代码构造。我们还开发了使用密度演化分析提议的LDPCA码的方法,在此基础上开发了代码搜索策略以找到良好的LDPCA码。仿真结果表明,提出的代码设计优于传统的LDPCA代码设计,并提供了最新的性能。本文的最后一部分解决了VSN的网络方面,考虑了远程呈现无线VSN应用程序中的传感器调度和能量分配,其中通过部署图像传感器(摄像机)来获得受监视区域的可视范围。每个摄像机提供覆盖部分监视区域,并且CP协调这些摄像机以收集所需的视觉数据。我们将网络生命周期建模为随机随机变量,该随机变量取决于摄像机的覆盖范围以及受监控区域内数据请求的分布,这是使我们的问题与其他WSN应用区别开来的两个关键特征。通过适当抽象网络寿命模型并利用渐近分析,我们提出了寿命最大化的摄像机调度和能量分配策略。通过仿真验证了所提出策略的有效性。

著录项

  • 作者

    Yu, Chao.;

  • 作者单位

    University of Rochester.;

  • 授予单位 University of Rochester.;
  • 学科 Engineering Electronics and Electrical.;Information Science.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 159 p.
  • 总页数 159
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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