Abstract

Given a set of training data and a feature extraction tool, fuzzy membership functions are created using regression analysis on the extracted features. These membership functions are then used to classify a signal into one of two basic classes (namely, threat or non-threat). Alternatively, the dat can be classified into M groups, as desired. For this paper, the training data form a set of modeled infrared intensities for subpixel objects, of the types expected for a prototypical ballistic missile defense engagement scenario. The feature extraction took used is a form of local discriminant bases, as described by Coifman and Saito4. The top N features (typically two to four) are then piped pairwise through a regression tool to determine if any statistically significant trends occur. If a trend is discovered, then a membership function is created for the relationship; otherwise, membership functions are created for each feature independently. An example of each is given. Results indicate great flexibility in managing misclassification of targets (Leakage) versus classifying a non-target as a target (False Alarms), depending on the choice of membership functions. Results for using seven extracted features on performance data show < 1% Leakage corresponding to 13% False Alarms.© (2000) COPYRIGHT SPIE--The International Society for Optical Engineering. Downloading of the abstract is permitted for personal use only.

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