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Random distributed multiresolution representations with significance querying

机译:具有重要性查询的随机分布式多分辨率表示

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We propose random distributed multiresolution representations of sensor network data, so that the most significant encoding coefficients are easily accessible by querying a few sensors, anywhere in the network. Less significant encoding coefficients are available by querying a larger number of sensors, local to the region of interest. Significance can be defined in a multiresolution way, without any prior knowledge of the source data, as global summaries versus local details. Alternatively, significance can be defined in a data-adaptive way, as large differences between neighboring data values. We propose a distributed encoding algorithm that is robust to arbitrary wireless communication connectivity graphs, where links can fail or change with time. This randomized algorithm allows distributed computation that does not require strict global coordination or awareness of network connectivity at individual sensors. Because computations involve sensors in local neighborhoods of the communication graph, they are communication-efficient. Our framework uses local interaction among sensors to enable flexible information retrieval at the global level.
机译:我们提出了传感器网络数据的随机分布式多分辨率表示形式,这样,通过查询网络中任何位置的几个传感器,就可以轻松访问最重要的编码系数。通过查询位于感兴趣区域本地的大量传感器,可以使用不太重要的编码系数。可以以多种分辨率的方式定义重要性,而无需事先了解源数据,将其定义为全局摘要与局部详细信息。替代地,可以以数据自适应的方式定义重要性,因为相邻数据值之间的差异较大。我们提出了一种分布式编码算法,该算法对任意无线通信连接图都具有较强的鲁棒性,因为其中的链接可能会随着时间而失败或发生变化。这种随机算法允许进行分布式计算,而无需在各个传感器上进行严格的全局协调或了解网络连接性。由于计算涉及通信图本地邻域中的传感器,因此它们具有较高的通信效率。我们的框架利用传感器之间的局部交互作用来在全球范围内实现灵活的信息检索。

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