Title :
Single-Threshold Detection of a Random Signal in Noise with Multiple Independent Observations,Part 2:Continuous Case
Author :
Prucnal, PAul R. ; Teich, Malvin Carl
fDate :
3/1/1979 12:00:00 AM
Abstract :
A single-threshold detector is derived for a wide class of classical binary decision problems involving the likelihood-ratio detection of a signal embedded in noise. The class of problems considered encompasses the case of multiple independent (but not necessarily identically distributed) observations of a nonnegative (or nonpositive) signal embedded in additive and independent noise, where the range of the signal and noise is continuous. It is shown that a comparison of the sum of the observations with a unique threshold comprises an optimum detector if a weak condition on the noise is satisfied independent of the signal. Examples of noise densities that satisfy and that violate this condition are presented. A sufficient condition on the likelihood ratio which implies that the sum of the observations is also a sufficient statistic is considered.
Keywords :
Signal detection; Stochastic signals; Abstracts; Bismuth; Gas detectors; Information theory; Memory management; Random variables; Sufficient conditions; Testing;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.1979.1056020