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[해외논문] Nearshore Benthic Habitat Mapping Based on Multi-Frequency, Multibeam Echosounder Data Using a Combined Object-Based Approach: A Case Study from the Rowy Site in the Southern Baltic Sea 원문보기

Remote sensing, v.10 no.12, 2018년, pp.1983 -   

Janowski, Lukasz (Institute of Oceanography, University of Gdansk, al. Marszalka Pilsudskiego 46, 81-378 Gdynia, Poland) ,  Trzcinska, Karolina (Institute of Oceanography, University of Gdansk, al. Marszalka Pilsudskiego 46, 81-378 Gdynia, Poland) ,  Tegowski, Jaroslaw (Institute of Oceanography, University of Gdansk, al. Marszalka Pilsudskiego 46, 81-378 Gdynia, Poland) ,  Kruss, Aleksandra (Institute of Oceanography, University of Gdansk, al. Marszalka Pilsudskiego 46, 81-378 Gdynia, Poland) ,  Rucinska-Zjadacz, Maria (Institute of Oceanography, University of Gdansk, al. Marszalka Pilsudskiego 46, 81-378 Gdynia, Poland) ,  Pocwiardowski, Pawel (NORBIT-Poland Sp. z o.o., al. Niepodleglosci 813-815)

Abstract AI-Helper 아이콘AI-Helper

Recently, the rapid development of the seabed mapping industry has allowed researchers to collect hydroacoustic data in shallow, nearshore environments. Progress in marine habitat mapping has also helped to distinguish the seafloor areas of varied acoustic properties. As a result of these new develo...

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