Statistical analysis of split spectrum processing

Qi Tian, N. Bilgutay
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引用次数: 6

Abstract

This work provides a statistical analysis of Split Spectrum Processing (SSP) performance in detecting multiple targets. The investigation is performed under two conditions: (i) known a priori target spectra (i.e., center frequency and bandwidth) which, in turn, identifies the optimal spectral range for processing, and (ii) adaptively obtaining the processing frequencies using group delay moving entropy. The group delay moving entropy (GDME) method was introduced to select the optimal frequency regions for SSP when detecting multiple targets. The effectiveness of this technique is statistically demonstrated in this paper. The performance is measured in terms of Normalized Signal-to-Noise Ratio and probability of target detection. SSP with known target information yields a slightly higher probability of detection compared to SSP using GDME, while both cases achieve comparable SNR enhancement. SSP results were compared to the optimal bandpass filter performance and shown to be superior.
分谱处理的统计分析
本文对分离频谱处理(SSP)在检测多目标时的性能进行了统计分析。研究在两个条件下进行:(i)已知的先验目标光谱(即中心频率和带宽),进而确定用于处理的最佳光谱范围;(ii)使用群延迟移动熵自适应地获得处理频率。引入群延迟移动熵(GDME)方法,在检测多目标时选择最优的SSP频率区域。本文对该方法的有效性进行了统计论证。性能是根据归一化信噪比和目标检测概率来衡量的。与使用GDME的SSP相比,具有已知目标信息的SSP产生的检测概率略高,而两种情况都实现了相当的信噪比增强。将SSP结果与最佳带通滤波器性能进行了比较,结果表明SSP更优。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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