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Cloud Processing versus Independent Processing of Independent Data Sets for Distributed Detection

机译:云处理与分布式检测的独立数据集的独立处理

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A distributed detection problem where sensors are deployed to observe a common source of interest is studied. For centralized processing, decision is made by utilizing all the data collected at the sensors, which takes more resources of transmission and computation. For independent processing, it takes less resource at the cost of some performance loss. Motivated by the recently proposed cloud radio access network (C-RAN) and cloud radar, this paper proposes the cloud processing, where each sensor directly compresses (quantizes) its data and the central processor makes decision through all the compressed data. To model the quantization effects, the additive quantization noise model (AQNM) is adopted. Then, the performances of the generalized likelihood ratio test (GLRT), independent GLRT (IGLRT) and cloud GLRT (CGLRT) through deflection coefficients are analyzed. We especially focus on the performance comparison of cloud processing and independent processing, which depends on the number of sensors M, the variances of the additive quantization noise σq2 and the additive noise σ2. Numerical results are conducted to verify the analysis.
机译:研究了传感器的分布式检测问题,以观察常见的兴趣来源。为了集中处理,通过利用在传感器处收集的所有数据进行决定,这需要传输和计算的更多资源。对于独立处理,它需要减少一些性能损失的资源。由最近提出的云无线电接入网络(C-RAN)和云雷达的动机提出了云处理,其中每个传感器直接压缩(量化)其数据,中央处理器通过所有压缩数据做出决定。为了模拟量化效果,采用添加量化噪声模型(AQNM)。然后,分析了通过偏转系数的广义似然比测试(GLRT),独立GLRT(IGLT)和云GLRT(CGLRT)的性能。我们特别关注云处理和独立处理的性能比较,这取决于传感器M的数量,添加剂量化噪声的差异σ q 2 和添加剂噪声σ 2 。进行数值结果以验证分析。

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