传感器网络中基于事件监测的相关源编码优化

J. Singh, A. Saxena, K. Rose, Upamanyu Madhow
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引用次数: 1

摘要

基于事件的监测范式可以潜在地缓解与无线传感器网络相关的固有带宽和能量限制,我们考虑了在适当以事件发生为条件的成本标准下相关源的联合编码问题。其基本前提是单个传感器只能访问部分信息,并且通常不能可靠地检测事件。因此,传感器以最佳方式压缩数据并将其传输到融合中心,以最小化{\emph{包含事件的片段中的预期失真}}。在这项工作中,我们推导并演示了熵约束分布式矢量量化器设计的方法,使用修改的失真准则,适当地解释了事件和观测数据的联合统计。仿真结果表明,与传统设计和现有的启发式方法相比,该方法取得了显著的进步,并为支持我们的方法提供了实验证据。
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Optimization of Correlated Source Coding for Event-Based Monitoring in Sensor Networks
Motivated by the paradigm of event-based monitoring,which can potentially alleviate the inherent bandwidth and energy constraints associated with wireless sensor networks, we consider the problem of joint coding of correlated sources under a cost criterion that is appropriately conditioned on event occurrences. The underlying premise is that individual sensors only have access to partial information and, in general, cannot reliably detect events. Hence, sensors optimally compress and transmit the data to a fusion center, so as to minimize the {\emph{expected distortion in segments containing events}}. In this work, we derive and demonstrate the approach in the setting of entropy constrained distributed vector quantizer design,using a modified distortion criterion that appropriately accounts for the joint statistics of the events and the observation data. Simulation results show significant gains over conventional design as well as existing heuristic based methods, and provide experimental evidence to support the promise of our approach.
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