F.J. Himpsel, T.A. Jung, et al.
Surface Review and Letters
This paper proposes a new method for signal classification based on a combination of deep-learning (DL) image classifiers and recently introduced nonlinear spectral analysis technique called quantile-frequency analysis (QFA). The QFA method converts a one-dimensional signal into a two-dimensional representation of quantile periodograms (QPER) which represent the signal’s oscillatory behavior in the frequency domain at different quantiles. With a moving window, the QFA method can also covert a signal into a sequence of such two-dimensional representations, called short-time quantile periodograms, that are localized in time to represent the signal’s time-dependent or nonstationary properties. The DL image classifiers take these representations as input for signal classification. The benefit of this QFA-DL classification method in comparison with the traditional frequency-domain method based on the power spectrum and spectrogram is demonstrated by a numerical experiment using real-world ultrasound signals from a nondestructive evaluation application.
F.J. Himpsel, T.A. Jung, et al.
Surface Review and Letters
A. Skumanich, M. Jurich, et al.
OTF 1993
J.W.M. Frenken, R.J. Hamers, et al.
Journal of Vacuum Science and Technology A: Vacuum, Surfaces and Films
H.-C.W. Huang, C.M. Serrano
JVSTA