Title :
Robust Signal Classification Using Unsupervised Learning
Author :
Clancy, T. Charles ; Khawar, Awais ; Newman, Timothy R.
fDate :
4/1/2011 12:00:00 AM
Abstract :
Spectrum sensing is required for many cognitive radio applications, including spectral awareness, interoperability, and dynamic spectrum access. Any approach is highly dependent on the signal environment in which it operates. Noise, multipath channel distortion, sample-rate offsets, and center-frequency mis-estimations can make feature-based signal detection difficult. Additionally, as these values change in a dynamic environment, statically-trained classifiers cannot track the evolving class statistics. Unsupervised learning allows a cognitive radio system to evolve its classifier as the radio environment evolves, without the need for expert-annotated signal samples. While this allows improved classifier performance, previous work has demonstrated that unsupervised techniques developed without security in mind suffer from classifier manipulation through transmission of carefully crafted signals that shift decision boundaries. This paper develops countermeasures to the class manipulation attacks that mitigates their efficacy, and shows the robustness of unsupervised learning for signal classification in an evolving RF environment.
Keywords :
cognitive radio; multipath channels; signal classification; signal detection; telecommunication computing; unsupervised learning; center-frequency misestimations; classifier manipulation; cognitive radio system; decision boundary; dynamic spectrum access; expert-annotated signal samples; feature-based signal detection; multipath channel distortion; robust signal classification; sample-rate offsets; spectral awareness; spectrum sensing; static trained classifiers; unsupervised learning; Classification algorithms; Digital TV; Neurons; Robustness; Self organizing feature maps; Training data; Unsupervised learning; Bayesian reasoning; IEEE 802.22; Signal classification; TV whitespace; dynamic spectrum access; unsupervised learning;
Journal_Title :
Wireless Communications, IEEE Transactions on
DOI :
10.1109/TWC.2011.030311.101137