Title :
A probabilistic model for score-based algorithm fusion
Author :
Dobeck, Gerald J.
Author_Institution :
Naval Surface Warfare Center, Panama, FL, USA
Abstract :
A probabilistic model is described that helps explain how score-based algorithm fusion achieves significant false alarm reduction. The two-class detection and classification (DC) problem is considered: the target and the nontarget. Multiple DC algorithms, based on fundamentally different DC methodologies, process the same sensor data looking for target-like objects. Each object detected and classified as target-like by a given algorithm is assigned a positive score, which indicates the degree to which the algorithm considers the object target-like. Score-based algorithm fusion is the fusion of multiple detection & classification algorithms where only the scores of the individual algorithms are used to make a final determination on whether an object is a target or not Despite the fact that only the scores are used in the fusion process, false alarm reduction has been remarkable while still preserving a high probability of target detection and classification. A probabilistic model is presented in this paper that supports this observation.
Keywords :
image classification; probability; sensor fusion; sonar imaging; sonar target recognition; detection-classification algorithms; false alarm reduction; probabilistic model; score-based algorithm fusion; sensor fusion; Cities and towns; Classification algorithms; Equations; Image sensors; Layout; Object detection; Sea surface; Sonar applications; Sonar detection;
Conference_Titel :
OCEANS, 2005. Proceedings of MTS/IEEE
Print_ISBN :
0-933957-34-3
DOI :
10.1109/OCEANS.2005.1640130