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Compressed and Quantized Correlation Estimators

机译:压缩和量化的相关估计器

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In passive monitoring using sensor networks, low energy supplies drastically constrain sensors in terms of calculation and communication abilities. Designing processing algorithms at the sensor level that take into account these constraints is an important problem in this context. Here we study the estimation of correlation functions between sensors using compressed acquisition and one-bit-quantization. The estimation is achieved directly using compressed samples, without considering any reconstruction of the signals. We show that if the signals of interest are far from white noise, estimation of the correlation using M compressed samples out of N ≥ M can be more advantageous than estimation of the correlation using M consecutive samples. The analysis consists of studying the asymptotic performance of the estimators at a fixed compression rate. We provide the analysis when the compression is realized by a random projection matrix composed of independent and identically distributed entries. The framework includes widely used random projection matrices, such as Gaussian and Bernoulli matrices, and it also includes very sparse matrices. However, it does not include subsampling without replacement, for which a separate analysis is provided. When considering one-bit-quantization as well, the theoretical analysis is not tractable. However, empirical evidence allows the conclusion that in practical situations, compressed and quantized estimators behave sufficiently correctly to be useful in, for example, time-delay estimation and model estimation.
机译:在使用传感器网络的被动监视中,低能量供应会严重限制传感器的计算和通信能力。在这种情况下,在传感器级别设计考虑这些约束的处理算法是一个重要的问题。在这里,我们研究使用压缩采集和一位量化的传感器之间的相关函数的估计。直接使用压缩样本即可实现估算,而无需考虑信号的任何重构。我们表明,如果感兴趣的信号距离白噪声较远,则使用N≥M的M个压缩样本进行相关估计比使用M个连续样本进行相关估计更为有利。该分析包括研究在固定压缩率下估计量的渐近性能。当通过由独立且均匀分布的条目组成的随机投影矩阵实现压缩时,我们提供了分析。该框架包括广泛使用的随机投影矩阵,例如高斯和伯努利矩阵,还包括非常稀疏的矩阵。但是,它不包括未经替换的子采样,为此提供了单独的分析。当考虑一比特量化时,理论分析也不容易。但是,经验证据可以得出这样的结论,即在实际情况下,压缩和量化的估算器的行为足够正确,可用于例如时延估算和模型估算。

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