A Clustering Approach for the Detection of Acoustic/Seismic Signals of Unknown Structure

A Clustering Approach for the Detection of Acoustic/Seismic Signals of Unknown Structure

By: Diamant R., Kipnis D., Zorzi M.
Published in: IEEE Transactions on Geoscience and Remote Sensing
SDGs : SDG 14  |  Units: Marine Sciences  | Time: 2018 |  Link
Description: We focus on the detection of sporadic low-power acoustic/seismic signals of unknown structure and statistics, such as th e detection of sound produced by marine mammals, low-power underground signals, or the discovery of events such as volcano eruptions. In these cases, since the ambient noise may be fast time varying and may include many noise transients, threshold-based detection may lead to a significant false alarm rate. Instead, we propose a detection scheme that avoids the use of a decision threshold. Our method is based on clustering the samples of the observed buffer according to a binary hidden Markov model to discriminate between ‘noise’ and ‘signal’ states. Our detector is a modification of the Baum-Welch algorithm that takes into account the expected continuity of the desired signal and obtains a robust detection using the complex but flexible general Gaussian mixture model. The result is a combination of a constrained expectation-maximization algorithm with the Viterbi algorithm. We evaluate the performance of our scheme in numerical simulations, in a seimic test, and in an ocean experiment. The results are close to the hybrid Cramér-Rao lower bound and show that, at the cost of some additional complexity, our proposed algorithm outperforms common benchmark methods in terms of detection and false alarm rates, and also achieves a better accuracy of the time of detection. To allow reproducibility of the results, we publish our code. © 1980-2012 IEEE.