Taxonomical classification of reef fish with broadband backscattering models and machine learning approaches

Author:

Roa Camilo1,Pedersen Geir2,Bollinger Michael3,Taylor Christopher3,Boswell Kevin M.1

Affiliation:

1. Institute of Environment and Department of Biological Sciences, Florida International University, Miami, Florida 33199, USA

2. IMR, P.O. Box 1870, Nordnes, NO-5817 Bergen, Norway

3. NOAA's National Centers for Coastal Ocean Science, Beaufort, North Carolina 28516, USA

Abstract

Commercially available broadband echosounders have the potential to classify acoustic targets based on their scattering responses, which are a function of their species-specific morphological and physiological properties. This is particularly important in complex environments with biologically diverse fish assemblages. Using theoretical acoustic scattering models among 130 fishes across six species, we examine the potential to classify reef fish based on the fine-scale gas-bearing swim bladder morphology quantified from three-dimensional computed-tomography models. Modeled echoes of the swim bladder for an incident broadband sound source (30–200 kHz) and across a range of orientation angles (±44°) are acoustically simulated using the boundary element method. Backscatter models present characteristics that are consistent within species and distinguishable among them. Broadband and multifrequency echoes are classified and compared with Bayesian, support vector machine, k-nearest neighbor, and convolutional neural network estimators. Classifiers have higher accuracies (>70%) when noise is not present and perform better when applied to broadband spectra than multifrequency data (42, 70, 100, 132, 160, 184 kHz). The modeling and classification approaches presented indicate that a taxonomic distinction based on morphologically dependent scattering responses is possible and may provide the capacity to acoustically discriminate among fish species.

Funder

National Marine Fisheries Service, National Oceanic and Atmospheric Administration

Research Council of Norway

Publisher

Acoustical Society of America (ASA)

Subject

Acoustics and Ultrasonics,Arts and Humanities (miscellaneous)

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