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首页> 外文期刊>IEEE Transactions on Signal Processing >Convexity Properties of Detection Probability Under Additive Gaussian Noise: Optimal Signaling and Jamming Strategies
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Convexity Properties of Detection Probability Under Additive Gaussian Noise: Optimal Signaling and Jamming Strategies

机译:高斯噪声下检测概率的凸性:最优信号和干扰策略

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In this correspondence, we study the convexity properties for the problem of detecting the presence of a signal emitted from a power constrained transmitter in the presence of additive Gaussian noise under the Neyman–Pearson (NP) framework. It is proved that the detection probability corresponding to the $alpha$-level likelihood ratio test (LRT) is either strictly concave or has two inflection points such that the function is strictly concave, strictly convex, and finally strictly concave with respect to increasing values of the signal power. In addition, the analysis is extended from scalar observations to multidimensional colored Gaussian noise corrupted signals. Based on the convexity results, optimal and near-optimal time sharing strategies are proposed for average/peak power constrained transmitters and jammers. Numerical methods with global convergence are also provided to obtain the parameters for the proposed strategies.
机译:在这种对应关系中,我们研究了在Neyman-Pearson(NP)框架下在存在加性高斯噪声的情况下检测功率受限发射机发出的信号是否存在的问题的凸性。事实证明,与 $ alpha $ 级似然比检验(LRT)相对应的检测概率是严格凹的或隐性的。具有两个拐点,因此就信号功率的增加值而言,函数为严格凹,严格凸,最后严格凹。此外,分析从标量观测扩展到多维彩色高斯噪声破坏信号。基于凸度结果,提出了平均/峰值功率受限的发射机和干扰器的最优和接近最优的时间共享策略。还提供了具有全局收敛性的数值方法来获得所提出策略的参数。

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