We consider the classical Neymann-Pearson hypothesis testing problem of signal detection, where under the null hypothesis ($\calH_0$), the received signal is white Gaussian noise, and under the alternative hypothesis ($\calH_1$), the received signal includes also an additional non-Gaussian random signal, which in turn can be viewed as a deterministic waveform plus zero-mean, non-Gaussian noise. However, instead of the classical likelihood ratio test detector, which might be difficult to implement, in general, we impose a (mismatched) correlation detector, which is relatively easy to implement, and we characterize the optimal correlator weights in the sense of the best trade-off between the false-alarm error exponent and the missed-detection error exponent. Those optimal correlator weights depend (non-linearly, in general) on the underlying deterministic waveform under $\calH_1$. We then assume that the deterministic waveform may also be free to be optimized (subject to a power constraint), jointly with the correlator, and show that both the optimal waveform and the optimal correlator weights may take on values in a small finite set of typically no more than two to four levels, depending on the distribution of the non-Gaussian noise component. Finally, we outline an extension of the scope to a wider class of detectors that are based on linear combinations of the correlation and the energy of the received signal.
翻译:我们认为典型的Neymann-Pearson假设测试信号检测问题,在“无效假设”(CalH_0$)下,接收到的信号是白色高斯噪音,在替代假设(calH_1$)下,我们收到的信号还包括一个额外的非Gausian随机信号,这反过来又可被视为一种确定型波形加零度的非Gausian噪音。然而,与其说是典型的概率比测试探测器,一般而言,我们可能很难执行,我们设置了一个(匹配的)相关检测器,该检测器相对容易执行,而我们从最佳的关联器重量的角度确定出一个最佳的对应器重量,在虚假的单臂错误和误差误差误差误差误差误差误差误差误差之间的最佳折价。这些最佳的关联器重量(非线性)取决于美元/calH_1$的组合下的基本的确定型波形测试仪。我们然后假设,确定确定型波形的形状也可能可以自由优化(取决于强度的制约),而相对而言,我们比较容易执行,从最佳的关联度的比标度值的精确度值大小部分加,在最精确的四度范围上,在最优度值上,在最接近的基值上,在最低的基值值值上,在最值上,在最低的基值上,在最差值上,在最值上,在最值上,在最差值上,在最低的一级,在最值上,在最值上,最值在最值上,在最值上,最值为最值为最值在最值为最值在最值为最值一级,最值为最值为最值一级至最值一级至最值一级,最值为最值为最值的一级,最值的一级,最值为最值为最值为最值为最值为最值为最值为最低值为最值的一级值为最低值为最低值为最低值为最低值为最低值为最低值为最值为最值,在最值,在最值为最值为最值为最值为最值为最值,在最值为最低值,在最值为最值为最值,在最值为最值为最低值