An understanding of the distribution and extent of marine habitats is essential for the implementation of ecosystem-based management strategies. Historically this had been difficult in marine environments until the advancement of acoustic sensors. This study demonstrates the applicability of supervised learning techniques for benthic habitat characterization using angular backscatter response data. With the advancement of multibeam echo-sounder (MBES) technology, full coverage datasets of physical structure over vast regions of the seafloor are now achievable. Supervised learning methods typically applied to terrestrial remote sensing provide a cost-effective approach for habitat characterization in marine systems. However the comparison of...
Legacy seabed mapping datasets are increasingly common as the need for detailed seabed information i...
This research was aimed at developing the mapping model of benthic habitat mapping using machine-lea...
A method to map seafloor substrates using machine learning, based primarily on hydroacoustic data in...
An understanding of the distribution and extent of marine habitats is essential for the implementati...
Marine habitat mapping provides information on seabed substrata and faunal community structure to us...
Backscatter information from multibeam echosounders (MBES) have been shown to contain useful informa...
<div><p>Multibeam echosounders (MBES) are increasingly becoming the tool of choice for marine habita...
The need for detailed spatial map of marine habitats is increasingly important and demanding in mana...
Backscatter imagery from multibeam echosounders (MBES) is increasingly used for benthic habitat mapp...
The effective management of our marine ecosystems requires the capability to identify, characterise ...
Developing quantitative and objective approaches to integrate multibeam echosounder (MBES) data with...
Multibeam echosounders (MBES) are increasingly becoming the tool of choice for marine habitat mappin...
In marine habitat mapping, single beam echo sounders are widely used to derive information about the...
Artificial reefs (ARs) are effective means to maintain fishery resources and to restore ecological e...
The aim of this study was to develop and examine the use of backscatter data collected with multibea...
Legacy seabed mapping datasets are increasingly common as the need for detailed seabed information i...
This research was aimed at developing the mapping model of benthic habitat mapping using machine-lea...
A method to map seafloor substrates using machine learning, based primarily on hydroacoustic data in...
An understanding of the distribution and extent of marine habitats is essential for the implementati...
Marine habitat mapping provides information on seabed substrata and faunal community structure to us...
Backscatter information from multibeam echosounders (MBES) have been shown to contain useful informa...
<div><p>Multibeam echosounders (MBES) are increasingly becoming the tool of choice for marine habita...
The need for detailed spatial map of marine habitats is increasingly important and demanding in mana...
Backscatter imagery from multibeam echosounders (MBES) is increasingly used for benthic habitat mapp...
The effective management of our marine ecosystems requires the capability to identify, characterise ...
Developing quantitative and objective approaches to integrate multibeam echosounder (MBES) data with...
Multibeam echosounders (MBES) are increasingly becoming the tool of choice for marine habitat mappin...
In marine habitat mapping, single beam echo sounders are widely used to derive information about the...
Artificial reefs (ARs) are effective means to maintain fishery resources and to restore ecological e...
The aim of this study was to develop and examine the use of backscatter data collected with multibea...
Legacy seabed mapping datasets are increasingly common as the need for detailed seabed information i...
This research was aimed at developing the mapping model of benthic habitat mapping using machine-lea...
A method to map seafloor substrates using machine learning, based primarily on hydroacoustic data in...