Many papers describe hybrid methods used for pattern recognition. Such syst
ems consist of an optical part, performing fast signal preprocessing, and a
computer, analyzing preprocessed data. Here we present. the method which u
ses for feature extraction the ring-wedge detectors (RWD) or computer gener
ated holograms (CGH) serving as RWD. Features obtained in this way are shif
t, rotation, and scale invariant, but papers suggest that they can be still
subject for further optimization. This article presents an original method
for optimizing feature extraction abilities of CGH. This method uses rough
set theory (RST) to measure the amount of essential information for the cl
assification, preserved in feature vector. As there is no gradient directio
n information in factors defined by RST, we use for a space search a stocha
stic evolutionary approach. Finally, we use RST to determine decision rules
for the feature vector classification. The whole method is illustrated by
a system recognizing the speckle pattern images obtained as a result of int
erference of light going through a quasi-monomode optical fiber. As the con
ditions of interference differ when some kind of distortion of the optical
fiber is produced, such a system can be used as a sensor of the pressure ca
using this distortion. (C) 2000 John Wiley & Sons, Inc.