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Distributed classification of Gaussian space-time sources in wireless sensor networks

机译:无线传感器网络中高斯时空源的分布式分类

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Distributed signal processing techniques for classification of objects are studied assuming knowledge of sensor measurement statistics. The spatio-temporal signal field generated by an object is modeled as a bandlimited stationary ergodic Gaussian field. The model suggests a simple abstraction of correlation between node measurements: it partitions the network into disjoint spatial coherence regions over which the signal remains strongly correlated, whereas the signal in distinct coherence regions is approximately uncorrelated. The size of coherence regions is determined by spatial signal bandwidths. It is shown that this partitioning imposes a structure on optimal distributed classification algorithms that is naturally suited to the communication constraints of the network: local high-bandwidth exchange of feature vectors within each coherence region to improve the measurement signal-to-noise ratio (SNR), and global low-bandwidth exchange of local decisions across coherence regions to stabilize the inherent variability in the signal. Classifier performance is analyzed for both soft and hard decision fusion across coherence regions assuming noise-free, as well as noisy communication links between nodes. Under mild conditions, the probability of error of all classification schemes (soft, hard, noisy) decays exponentially to zero with the number of independent node measurements-the error exponent depends on both the measurement and communication SNRs and decreases from soft to hard to noisy fusion. Numerical results based on real data illustrate the remarkable advantage of multiple sensor measurements in distributed decision making.
机译:在了解传感器测量统计信息的前提下,研究了用于对象分类的分布式信号处理技术。将对象生成的时空信号场建模为带限平稳遍历高斯场。该模型建议对节点测量之间的相关性进行简单的抽象:将网络划分为不相交的空间相干区域,在该区域中信号保持强相关性,而不同相干区域中的信号则大致不相关。相干区域的大小由空间信号带宽确定。结果表明,该划分在最佳分布式分类算法上强加了一种结构,该结构自然适合于网络的通信约束:每个相干区域内特征向量的局部高带宽交换,以提高测量信噪比(SNR) ),以及在相干区域之间进行全局低带宽本地决策交换,以稳定信号的固有可变性。假设无噪声以及节点之间有噪声的通信链接,将对跨一致性区域的软决策和硬决策融合进行分类器性能分析。在温和条件下,所有分类方案(软,硬,噪声)的错误概率随独立节点测量的次数呈指数下降至零-误差指数取决于测量和通信SNR,并从软噪声降至硬噪声融合。基于实际数据的数值结果说明了在分布式决策中多个传感器测量的显着优势。

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