Concetti Chiave
The optimal detector for distinguishing between a null hypothesis (no signal) and an alternative hypothesis (signal corrupted by noise) is derived by jointly optimizing the transmitted signal and the detector parameters. The detector is based on a linear combination of the correlation and energy of the received signal.
Sintesi
The paper explores a Neyman-Pearson hypothesis testing scenario where the received signal under the null hypothesis is a white noise process and under the alternative hypothesis is a deterministic transmitted signal corrupted by additive white noise. The authors focus on detectors based on the correlation and energy of the received signal, motivated by implementation simplicity.
The key insights are:
- For a given signal, the optimal correlator weights are derived as a non-linear function of the transmitted signal.
- When jointly optimizing the transmitted signal and the detector parameters, the optimal signal is shown to be a balanced ternary signal and the correlator has at most three different coefficients, enabling a computationally feasible solution.
- The authors extend the analysis to consider detectors that are a linear combination of correlation and energy, deriving the optimal detector parameters for a given signal and the jointly optimal signal and detector.
The analysis provides a comprehensive framework for designing optimal signal detectors under practical constraints, balancing detection performance and implementation complexity.
Statistiche
The received signal under the null hypothesis is a white noise process Nt.
The received signal under the alternative hypothesis is Xt = st + Zt, where st is a deterministic waveform and Zt is an i.i.d. zero-mean noise process.
The test statistic is T = Σ_t w_t Y_t + γ Σ_t Y_t^2, where w_t are the correlator weights and γ is the energy coefficient.
Citazioni
"The need to place detectors in small sensors and mobile platforms, with severe constraints on power, weight, budget and size, motivates one to examine some classes of simpler detectors and find the optimal ones within these classes."
"When joint signal-detector optimization was carried out, {w_t} and {s_t} did not sustain a linear relation in general. Interestingly, the favorable property that the set {w_t, s_t} has a simple structure was preserved, with just three parameters to be optimized, which makes a numeric solution feasible."