Csa-assisted gabor features for automatic modulation classification

SIH Shah, A Coronato, SA Ghauri, S Alam… - Circuits, Systems, and …, 2022 - Springer
Circuits, Systems, and Signal Processing, 2022Springer
Automatic modulation classification (AMC) is a process of automatic detection of modulation
format imposed on the received signal with no prior information (carrier, signal power, phase
offset) of the signal, also known as blind classification. In this paper, we proposed a new
AMC algorithm, by combining the synergy of the meta-heuristic technique with Gabor feature
extraction mainly used in texture analysis. Gabor filters are used to extract the features that
are further optimized using the cuckoo search algorithm to increase the efficiency of the …
Abstract
Automatic modulation classification (AMC) is a process of automatic detection of modulation format imposed on the received signal with no prior information (carrier, signal power, phase offset) of the signal, also known as blind classification. In this paper, we proposed a new AMC algorithm, by combining the synergy of the meta-heuristic technique with Gabor feature extraction mainly used in texture analysis. Gabor filters are used to extract the features that are further optimized using the cuckoo search algorithm to increase the efficiency of the classification procedure. The classification approach is applied on digitally modulated signals having phase-shift keying, frequency-shift keying, and quadrature amplitude modulation schemes of order 2–64 over the nonfading channel (AWGN) and fading channel (Rayleigh). Simulations and performance comparison with the existing literature validate that the proposed solution has better classification accuracy with lower sample size and lower signal-to-noise ratio.
Springer