Title :
Signal discrimination via non-Gaussian modeling with application to termite detection
Author :
Haiyan Fan ; Xuezhi Wang ; Zengfu Wang ; Guangyao Kuang
Author_Institution :
Nat. Univ. of Defence Technol., Changsha, China
Abstract :
Detection of weak signals in a low SNR environment is generally difficult, particularly, when the underlying signal noise is not only not Gaussian distributed but essentially unknown. A good example of such a case is the detection of termite biting signals from noisy audio data recorded by a passive acoustic sensor. In this paper, we present a novel technique to discriminate weak signals in data from noise of a learned non-Gaussian distribution. The proposed method, proceeds via the framework of generalised likelihood ratio test, and consists of two fundamental steps. First, an entropy-based incremental variational Bayesian inference is adopted to learn the non-Gaussian distribution from data using a Gaussian mixture model. An information geometric mapping of the data is then carried out via the total Bregman divergence (tBD), where the ambient noise distribution is approximated by the tBD-based l1-norm center of the neighboring data points over a specified time window. Experiment results show that the proposed method yields a significantly improvement in detection probability in low SNR and a robust detection performance compared with existing detection techniques.
Keywords :
Bayes methods; Gaussian processes; acoustic devices; acoustic signal detection; entropy; maximum likelihood detection; mixture models; variational techniques; Gaussian mixture model; entropy-based incremental variational Bayesian inference; generalised likelihood ratio test; information geometric mapping; noise distribution; non-Gaussian distribution; non-Gaussian modeling; passive acoustic sensor; signal discrimination; tBD-based l1-norm center; termite biting signal detection probability; total Bregman divergence; Detectors;
Conference_Titel :
Radar Symposium (IRS), 2015 16th International
Conference_Location :
Dresden
DOI :
10.1109/IRS.2015.7226329