DocumentCode
1348308
Title
Nonlinear test statistic to improve signal detection in non-Gaussian noise
Author
Chapeau-Blondeau, Francois
Author_Institution
Lab. d´´Ingenierie des Syst. Autom., Univ. d´´Anges, France
Volume
7
Issue
7
fYear
2000
fDate
7/1/2000 12:00:00 AM
Firstpage
205
Lastpage
207
Abstract
We compare two simple test statistics that a detector can compute from multiple noisy data in a binary decision problem based on a maximum a posteriori probability (MAP) criterion. One of these statistics is the standard sample mean of the data (linear detector), which allows one to minimize the probability of detection error when the noise is Gaussian. The other statistic is even simpler and consists of a sample mean of a two-state quantized version of the data (nonlinear detector). Although simpler to compute, we show that this nonlinear detector can achieve smaller probability of error compared to the linear detector. This especially occurs for non-Gaussian noises with heavy tails or a leptokurtic character.
Keywords
error statistics; probability; random noise; signal detection; statistical analysis; MAP criterion; binary decision problem; detection error probability minimization; heavy tails; leptokurtic character; linear detector; maximum a posteriori probability criterion; multiple noisy data; non-Gaussian noise; nonlinear detector; nonlinear test statistic; signal detection; standard sample mean; Detectors; Error analysis; Gaussian noise; Probability; Signal detection; Signal processing; Statistical analysis; Statistics; Tail; Testing;
fLanguage
English
Journal_Title
Signal Processing Letters, IEEE
Publisher
ieee
ISSN
1070-9908
Type
jour
DOI
10.1109/97.847369
Filename
847369
Link To Document