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Universal distributed sensing via random projections

机译:通过随机投影进行通用分布式传感

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This paper develops a new framework for distributed coding and compression in sensor networks based on distributed compressed sensing (DCS). DCS exploits both intra-signal and inter-signal correlations through the concept of joint sparsity; just a few measurements of a jointly sparse signal ensemble contain enough information for reconstruction. DCS is well-suited for sensor network applications, thanks to its simplicity, universality, computational asymmetry, tolerance to quantization and noise, robustness to measurement loss, and scalability. It also requires absolutely no inter-sensor collaboration. We apply our framework to several real world datasets to validate the framework.
机译:本文为基于分布式压缩感知(DCS)的传感器网络中的分布式编码和压缩开发了一个新框架。 DCS通过联合稀疏性概念来利用信号内和信号间的相关性。联合稀疏信号集合的仅有几次测量包含足够的信息以进行重建。 DCS的简单性,通用性,计算不对称性,对量化和噪声的耐受性,对测量损失的鲁棒性以及可扩展性,使其非常适合传感器网络应用。它还绝对不需要传感器之间的协作。我们将我们的框架应用于几个现实世界的数据集以验证该框架。

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