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Published June 8, 2011 | Version v1
Software documentation Open

Seascape Developer's Reference

  • 1. Centre d'Estudis Avançats de Blanes (CEAB-CSIC), Accés Cala Sant Francesc 14, 17300 Blanes, Girona, Spain
  • 2. Starlab, C. Teodor Roviralta n45, 08022 Barcelona, Spain
  • 3. Institut Géographique National IGN-Laboratoire MATIS, 2/4, av. Pasteur, 94165 Saint-Mandé, France
  • 4. Institut Géographique National, Parc Technologique du Canal, BP 42116, 6 av. de l'Europe, 31521 Ramonville Cedex, France
  • 5. Institut Ciències del Mar (ICM-CSIC), Passeig Marítim de la Barceloneta 37–49, 08003 Barcelona, Spain
  • 6. CREATIS, UMR CNRS 5515, U 630 Inserm, INSA, 7 rue Jean Capelle, bat. Blaise Pascal, 69621 Villeurbanne Cedex, France
  • 7. Marine Technology Unit (UTM-CSIC), Passeig Marítim de la Barceloneta 37-49, 08003 Barcelona, Spain

Description

This repository contains a software named Seascape. It is  is a free software environment for areal coverage measures of marine benthic communities. It compiles and runs on a variety of UNIX platforms, Windows and easy portable to Macintosh.

This pdf file contains the technical details of the development of Seascape.

Please use the following citation in using Seascape: Teixidó N, Albajes-Eizagirre A, Bolbo D, Le Hir E, Demestre M, Garrabou J, Guigues L, Gili JM, Piera J, Prelot T, Soria-Frisch A (2011) Hierarchical Segmentation based software for Cover Classification Analyses of Seabed Images (Seascape). Mar Ecol Prog Ser 431:45-53. DOI: https://doi.org/10.3354/meps09127. https://www.int-res.com/abstracts/meps/v431/p45-53/

ABSTRACT: An important aspect of marine research is to quantify the areal coverage of benthic communities. It is technically feasible to efficiently obtain images of marine environments at different depths and benthic habitats over large spatial and temporal scales. Currently, there is a large and growing library of digital images to analyze, representing a valuable benthic ecological archive. Benthic coverage is the basis of studies on biodiversity, characterization of communities and evaluation of changes over temporal and spatial scales. However, there is still a lack of automatic or semi-automatic analytical methods for deriving ecologically relevant data from these images. We introduce a software program named Seascape to obtain semi-automatically segmented images (patch outlines) from underwater photographs of benthic communities, where each individual patch (species/categories) is routinely associated to its area cover and perimeter. Seascape is an analog to the classical and better known discipline of landscape ecology approach, which focuses on the concept that communities can be observed as a patch mosaic at any scale. The process starts with a hierarchical segmentation, using a color space criteria adapted to the problem of segmenting complex benthic images. As an endproduct, we obtain a set of images ­segmented into classified homogenous regions at different resolution levels (hierarchical seg­mentation). To illustrate the versatility and capacity of Seascape, we analyzed 4 digital images from different habitats and depths: coral reefs (Pacific Ocean), coralligenous communities (NW Mediterranean Sea), deep-water coral reefs (NW Mediterranean Sea) and the Antarctic continental shelf (Weddell Sea). The development of this semi-automatic outline tool and its use for classification constitute an important step ­forward in the analysis and processing time of underwater seabed images at any scale.

This work was funded by the Medchange project (Agence National de la Recherche, France), the Marie Curie Reintegration Grant Mechanisms (FP7- No.207632), the Spanish Ministry of Science and Innovation (CTM2009-06027-E/MAR) and TOTAL Foundation (MedDiversa Project). N.T. was partially funded by I3P-CSIC and Beatriu Pinós contracts (2009-BP-B-00263).

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