INVESTIGADORES
SANCHEZ CARNERO noela Belen
congresos y reuniones científicas
Título:
Seabed classification using supervised functional data analysis techniques
Autor/es:
JAVIER TARRIO-SAAVEDRA; NOELA SÁNCHEZ CARNERO; ANDRÉS PRIETO
Lugar:
A Coruña
Reunión:
Simposio; European Symposium on Underwater Acoustics Applications. 48 Congreso Español de acústica; 2017
Institución organizadora:
Sociedad Española de Acústica (SEA)
Resumen:
The objective of this work is the numerical analysis of the Discretization parameters used in the functional statistical methodologies, on which the supervised classification for the automaticidentification of seabed types in coastal zones is based. This methodology uses acoustic data obtained by a simple beam echo sounder (at 38kHz) coupled to a small boat. Each of the acoustic intensity curves has been previously preprocessed by applying time, power and pinglength corrections in order to eliminate its dependence on depth. The experimental data were obtained in a controlled environment in the region of Cabo de Palos (Murcia, Spain), studying three different types of bottom: sandy, sandy with vegetation and rock. The statisticaltechniques applied to this particular case belong to the group of supervised classification techniques but combined with functional data procedures. The numerical results obtained andits analysis confirm that the use of a low number of elements of the discrete basis combined with their accurate approximation properties provide a correct classification of the three types of seabed considered.