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1.
J Acoust Soc Am ; 130(3): 1287-98, 2011 Sep.
Article in English | MEDLINE | ID: mdl-21895071

ABSTRACT

Human listening tests were conducted to investigate if participants could distinguish between samples of target echoes and clutter obtained from a broadband active sonar experiment. For each echo, the listeners assigned a rating based on how confident they were that it was a target echo or clutter. The measure of performance was the area under the binormal receiver-operating-characteristic (ROC) curve, A(z). The mean performance was A(z)=0.95 ± 0.04 when signals were presented with their full available acoustic bandwidth of approximately 0-2 kHz. It was A(z)=0.77 ± 0.08 when the bandwidth was reduced to 0.5-2 kHz. The error bounds are stated as 95% confidence intervals. These results show that the listeners could definitely hear differences, but their performance was significantly degraded when the low-frequency signal information was removed. The performance of an automatic aural classifier was compared against this human-performance baseline. Results of statistical tests showed that it outperformed 2 of 13 listeners and 5 of 9 human listeners in the full-bandwidth and reduced-bandwidth tests, respectively, and performed similarly to the other listeners. Given its performance, the automatic aural classifier may prove beneficial to Navy sonar systems.


Subject(s)
Auditory Pathways/physiology , Auditory Perception , Noise , Signal Detection, Psychological , Signal Processing, Computer-Assisted , Ultrasonics , Water , Acoustic Stimulation , Audiometry , Automation , Chi-Square Distribution , Humans , Models, Statistical , ROC Curve , Task Performance and Analysis
2.
J Acoust Soc Am ; 122(3): 1502, 2007 Sep.
Article in English | MEDLINE | ID: mdl-17927410

ABSTRACT

Impulsive-source active sonar systems are often plagued by false alarm echoes resulting from the presence of naturally occurring clutter objects in the environment. Sonar performance could be improved by a technique for discriminating between echoes from true targets and echoes from clutter. Motivated by anecdotal evidence that target echoes sound very different than clutter echoes when auditioned by a human operator, this paper describes the implementation of an automatic classifier for impulsive-source active sonar echoes that is based on perceptual signal features that have been previously identified in the musical acoustics literature as underlying timbre. Perceptual signal features found in this paper to be particularly useful to the problem of active sonar classification include: the centroid and peak value of the perceptual loudness function, as well as several features based on subband attack and decay times. This paper uses subsets of these perceptual signal features to train and test an automatic classifier capable of discriminating between target and clutter echoes with an equal error rate of roughly 10%; the area under the receiver operating characteristic curve corresponding to this classifier is found to be 0.975.


Subject(s)
Sound Localization , Ultrasonics , Auditory Threshold , Humans , Malta , Models, Biological , Oceans and Seas , Pressure , Seawater , Sicily , Time Factors
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