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Detection and Time-of-Arrival Estimation of Underwater Acoustic Signals

We focus on detection and time-of-arrival (ToA)
estimation of underwater acoustic signals of unknown structure.
The common practice to use a detection threshold may fail
when the assumed channel model is mismatched or when noise
transients exist. We propose to detect and evaluate the ToA by
labeling samples of observed data as ‘signal’ or ‘noise’. Then,
signal is detected when enough samples are labeled as ‘signal’,
and ToA is estimated according to the position of the first ‘signal’-
related sample. We take a clustering approach, thereby obviating
the need for a detection threshold and training. Our method
combines a constrained expectation-maximization (EM) with the
Viterbi algorithm, and becomes handy when channel conditions
are rough, noise statistics is hard to estimate, and signal-to-noise
ratio is low. Numerical and experimental results 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 in terms of accuracy of ToA estimation.

Authors:

Roee Diamant, Ryan Kastner, and Michele Zorzi

Published On:

SPAWC 16

Publication Year:

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