Error Exponents for Target-Class Detection with Nuisance Parameters
Abstract
We study the target class detection performance of a sensor network having a structured topology. The target is in the far-field of the network, located at a distance 'gamma' and angle 'theta' and produces a random signal field that is sampled by sensors. It is assumed that samples have a correlation structure and power level that depend on 'gamma' 'theta' and the target's class. We study the Neyman-Pearson miss probability error exponent for this scenario using large deviations theory. When (gamma, theta) is known, we characterize the properties of the error exponent as a function of signal and design parameters. When (gamma, theta) has at least one unknown component, we use the theory of adaptive tests to prove that there exists a test that achieves the same error exponent as if (gamma, theta) were known in some scenarios, but that there exists no such test in others.
Document Details
- Document Type
- Technical Report
- Publication Date
- Apr 01, 2007
- Accession Number
- ADA489775
Entities
People
- Lang Tong
- Saswat Misra
Organizations
- United States Army Research Laboratory