Enhanced target detection using fractional Fourier transform features
with threshold-modified normalization
Abstract
Feature extraction from the normalized transformation domain is a key
technique in target detection. Traditional normalization approaches
assume that matrix elements follow a normal distribution, but any
deviations from this assumption can lead to significant systematic
errors. This article presents a novel method that modifies the
normalization process in the fractional Fourier transform (FRFT) domain
by incorporating a threshold mechanism to counteract the effects of
non-normal distributions. Three modified FRFT features are then
extracted from this modified FRFT domain. Furthermore, we propose a
target detection method that utilizes these three adjusted features.
Experimental results based on measured data indicate that the modified
FRFT features exhibit superior classification capabilities for sea
clutter and targets compared to the original ones. Additionally, the
experiments also demonstrate that under the same conditions, the
proposed detection method outperforms traditional FRFT feature detector
and the tri-feature based detector.