Gender:Male
Date of Birth:1970-04-26
Alma Mater:The University of Hong Kong
Education Level:研究生毕业/硕士
[MORE]广东工业大学优秀班主任
2019年度广东省自然科学奖二等奖
广东工业大学先进工作者
广东工业大学优秀教学成果二等奖
广东工业大学优秀教学成果一等奖
DOI number:10.1016/j.sigpro.2019.03.017
Journal:Signal Processing
Key Words:Contaminated gaussian model (CGM) Kendall'S tau (KT) Locally optimal detector (LOD) Matched filter (MF) Sign correlator (SC) Spearman' Rho (SR)
Abstract:In this paper, we apply Spearman's rho (SR) and Kendall's tau (KT) to the long-lasting problem of detecting known signals in additive impulsive noise. Under a specified contaminated Gaussian model (CGM), which emulates a frequently encountered scenario in radar, sonar and/or communication, we derive the analytic forms of their expectations and variances. For a better understanding of their properties, we further compare SR and KT with three classical detectors, namely, the locally optimal detector (LOD), the matched filter based detector (MFD), and the sign correlator (SC), in terms of the receiver operating characteristic (ROC) curve, area under the ROC curve (AUC), as well as the detection probability. Monte Carlo simulations not only validate our theoretical discoveries, but also demonstrate the advantages of SR and KT in the aspects of 1) accurate false alarm probability control without knowledge of noise distribution, 2) relatively high performances for white Gaussian noise, and 3) gap-bridging properties between LOD and SC in both normal and impulsive noise. The the The theoretical findings in this work enable SR and KT to be useful alternatives to the MFD and SC whether or not the distribution of noise is Gaussian or Contaminated Gaussian.
Co-author:Changrun Chen,Jisheng Da,Yun Zhang
First Author:Weichao Xu
Indexed by:Journal paper
Volume:161
Page Number:165-179
Translation or Not:no
Date of Publication:2019-03-21
Included Journals:SCI
Click:
The Last Update Time:..