A Bayesian approach to spectrum sensing, denoising and anomaly detection

This paper deals with the problem of discriminating samples that contain only noise from samples that contain a signal embedded in noise. The focus is on the case when the variance of the noise is unknown. We derive the optimal soft decision detector using a Bayesian approach. The complexity of this optimal detector grows exponentially with the number of observations and as a remedy, we propose a number of approximations to it. The problem under study is a fundamental one and it has applications in signal denoising, anomaly detection, and spectrum sensing for cognitive radio. We illustrate the results in the context of the latter.

[1]  Petre Stoica,et al.  On denoising via penalized least-squares rules , 2008, 2008 IEEE International Conference on Acoustics, Speech and Signal Processing.

[2]  Robert B. Ash,et al.  Information Theory , 2020, The SAGE International Encyclopedia of Mass Media and Society.

[3]  M. Nasiri-Kenari,et al.  Wideband spectrum sensing in unknown white Gaussian noise , 2008, IET Commun..

[4]  David J. C. MacKay,et al.  Information Theory, Inference, and Learning Algorithms , 2004, IEEE Transactions on Information Theory.

[5]  H. Vincent Poor,et al.  Wideband Spectrum Sensing in Cognitive Radio Networks , 2008, 2008 IEEE International Conference on Communications.

[6]  Erik G. Larsson,et al.  Linear Regression With a Sparse Parameter Vector , 2007, IEEE Trans. Signal Process..

[7]  Li Wei,et al.  Assumption-Free Anomaly Detection in Time Series , 2005, SSDBM.

[8]  Geoffrey Ye Li,et al.  Soft Combination and Detection for Cooperative Spectrum Sensing in Cognitive Radio Networks , 2007, IEEE Transactions on Wireless Communications.

[9]  Anant Sahai,et al.  Cooperative Sensing among Cognitive Radios , 2006, 2006 IEEE International Conference on Communications.

[10]  H. Vincent Poor,et al.  Spatial-spectral joint detection for wideband spectrum sensing in cognitive radio networks , 2008, ICASSP.