• Nenhum resultado encontrado

COMPARISON OF AUTOMATIC AND SEMI-AUTOMATIC METHODS FOR CLASSIFICATION OF SIDE SCAN SONAR IMAGERY

N/A
N/A
Protected

Academic year: 2020

Share "COMPARISON OF AUTOMATIC AND SEMI-AUTOMATIC METHODS FOR CLASSIFICATION OF SIDE SCAN SONAR IMAGERY"

Copied!
10
0
0

Texto

Loading

Imagem

Figure 1 – Location of the study area and survey lines.
Figure 2 – Flowchart presenting the steps to process the sonograms.
Figure 4 – Digital Terrain Model.
Figure 7 – Division of the survey area in three zones: proximal, intermediate and distal.
+5

Referências

Documentos relacionados

Inspection of the map also reveals limitations of the method. Neuron P21 was activated by reactions producing no changes in the 1 H NMR spectra. Reactions from different subclasses

While automatic tagging algorithms depend almost entirely on CBIR algorithms to perform annotations using pre- annotated sets of images for comparison, semi automatic systems

1) Wildcat’s home range areas followed the common patterns of carnivores, with larger areas for males than for females. The high variability in home range size obtained for

Allgum nem empedimemto E pera todo asy se compryr e manter pera sempre Ao dicto martym Affomso de sousa. e ha seus sobcesores houbriguou em nome do dicto senhor elle fernamd

By “high value”, the Council means effective long-term solutions, and, as effectiveness, Conceição-Heldt and Meunier (2014) perceive the “ability to influence

RESUMO Um total de 240 indivíduos não relacionados da população do Estado de Pernambuco Nordeste do Brasil foram estudados quanto ao polimorfismo dos locos de STRs Short tandem

Conclusion: Although visual and automatic segmentation methods can be used to determine the threshold and calculate root canal volume and surface, the automatic method may be the

Using GIS to integrate and analyse the data from concurrent, automatic GPS animal tracking, automatic foraging behaviour recording and precise vegetation mapping provides a