Author:
El-Shazly Ehab H.,Abdelhakim Assem
Abstract
Abstract
In this paper, a robust pulse shape discrimination algorithm
is proposed to classify neutron and gamma pulses in radiation
detectors. Scalogram of the induced pulses, which represent the
absolute value of the Continuous Wavelet Transform (CWT)
coefficients in the time-frequency domain, is used as feature
descriptors. A two-dimensional principal component analysis (2D PCA)
is employed to achieve dimensionality reduction of the obtained
features and remove the redundancy in the given data. Accordingly,
dominant features are selected and stacked together to construct two
feature sets representing the two classes (neutron and
gamma). Canonical Correlation Analysis is performed between the
testing and training feature sets to find the basis vectors on which
the new projected set pairs are highly correlated. Experimental
results showed that the proposed method outperforms the other
state-of-the art PSD methods in terms the discrimination accuracy.
Subject
Mathematical Physics,Instrumentation
Cited by
1 articles.
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