Authors:
Marvin A. Conn
1
;
2
and
Darsana Josyula
1
Affiliations:
1
Army Research Laboratory, 2800 Power Mill Rd., Adelphi MD 20783, U.S.A.
;
2
Bowie State University, 14000 Jericho Park Rd., Bowie, MD 20715, U.S.A.
Keyword(s):
CNN, Convolutional Neural Networks, Classification, Adaptive, Anomaly, Detection, Radio Waveforms, Modulation, Transfer Learning.
Abstract:
Adaptive classifiers detect previously unknown classes of data, cluster them and adapt itself to classify the newly detected classes without degrading classification performance on known classes. This study explores applying transfer learning from pre-trained CNNs for feature extraction, and adaptive classifier algorithms for predicting radio waveform modulation classes. It is surmised that adaptive classifiers are essential components for cognitive radio and radar systems. Three approaches that use anomaly detection and clustering techniques are implemented for online adaptive RF waveform classification. The use of CNNs is explored because they have been demonstrated previously as highly accurate classifiers on two-dimensional constellation images of RF signals, and because CNNs lend themselves well to transfer learning applications where limited data is available. This study explores replacing the last softmax layer of CNNs with adaptive classifiers to determine if the resulting cl
assifiers can maintain or improve the original accuracy of the CNNs, as well as provide for on-the-fly anomaly detection and clustering in nonstationary RF environments.
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