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Communication Dans Un Congrès Année : 2021

Comparison of methods employed to extract information contained in seafloor backscatter

Résumé

Seabed maps are based on quantities extracted from measurements of the seafloor‘s acoustic response by sonar systems such as single-beam echo-sounders (SBES), multibeam echo-sounders (MBES) or sidescan sonars (SSS). In this paper, a comparison of various strategies to estimate the backscattering strength (BS) from recorded time-series, i.e. seabed echoes extracted from pings, is presented. The work hypotheses are based on processed data from a SBES designed to be tilted mechanically. Ideal survey conditions are taken into account and the seafloor is supposed to be rough so that BS is assumed to be equivalent to the Rayleigh probability density function parameter. Classical methods such as averaging corrected (sonar equation) backscattered single values over a set of pings to estimate BS are compared to other methods exploiting several time-samples being part of pings. Simulated data is considered to estimate BS in different situations (several estimators, natural/squared values, number of samples and pings). The best estimator to reach a 0.1dB uncertainty is proposed, and a formula governing the number of time-samples and pings needed to reach an accurate BS estimation according to the measurement conditions is derived.

Dates et versions

hal-03808330 , version 1 (10-10-2022)

Identifiants

Citer

Irène Mopin, Gilles Le Chenadec, Michel Legris, Philippe Blondel, Jacques Marchal, et al.. Comparison of methods employed to extract information contained in seafloor backscatter. 6th Underwater Acoustics Conference and Exhibition, Jun 2021, Virtual Meeting, United States. pp.070036, ⟨10.1121/2.0001509⟩. ⟨hal-03808330⟩
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