Accession Number : ADA318439

Title :   Comparison of Sensor Management Strategies for Detection and Classification.

Descriptive Note : Final rept.,

Corporate Author : WRIGHT LAB WRIGHT-PATTERSON AFB OH

Personal Author(s) : Musick, Stan ; Kastella, Keith

PDF Url : ADA318439

Report Date : 13 MAR 1996

Pagination or Media Count : 23

Abstract : Several sensor management schemes based on information theoretic metrics such as discrimination gain have been proposed, motivated by the generality of such schemes and their ability to accommodate mixed types of information such as kinematic and classification data. On the other hand, there are many methods for managing a single sensor to optimize detection. This paper compares the performance against low signal noise ratio targets of a discrimination gain scheme with three such single sensor detection schemes: the Wald test, an index policy that is optimal under certain circumstances and an 'alert/confirm' scheme modeled on methods used in some radars. For the situation where the index policy is optimal, it outperforms discrimination gain by a slight margin. However, the index policy assumes that there is only one target present. It performs poorly when there are multiple targets while discrimination gain and the Wald test continue to perform well. In addition, we show how discrimination gain can be extended to multisensor / multitarget detection and classification problems that are difficult for these other methods. One issue that arises with the use of discrimination gain as a metric is that it depends on both the current density and an a priori distribution. We examine the dependence of discrimination gain on this prior and find that while the discrimination depends on the prior, the gain is prior independent.

Descriptors :   *DETECTORS, *TARGET CLASSIFICATION, SIGNAL TO NOISE RATIO, MULTIPLE TARGETS, DATA FUSION, MULTISENSORS, SYSTEMS MANAGEMENT.

Subject Categories : Target Direction, Range and Position Finding

Distribution Statement : APPROVED FOR PUBLIC RELEASE