The Automated and Integrated Seafloor Classification Workflow (AI-SCW) is a semi-automated underwater image processing pipeline that has been customized for use in classifying the seafloor into semantic habitat categories. The current implementation has been tested against a sequence of underwater images collected by the Ocean Floor Observation System (OFOS), in the Clarion-Clipperton Zone of the Pacific Ocean. Despite this, the workflow could also be applied to images acquired by other platforms such as an Autonomous Underwater Vehicle (AUV), or Remotely Operated Vehicle (ROV). The modules in AI-SCW have been implemented using the python programming language, specifically using libraries such as scikit-image for image processing, scikit-le...
Scientific surveys using underwater robots can recover a huge volume of seafloor imagery. For mappin...
The extent and speed of marine environmental mapping is increasing quickly with technological advanc...
Far-sighted marine research institutions around the globe are capturing images from the seafloor at ...
Mapping and monitoring of seafloor habitats are key tasks for fully understanding ocean ecosystems a...
Here we present a technique for automatic classification of seafloor data collected during the 2012 ...
The need for detailed spatial map of marine habitats is increasingly important and demanding in mana...
A method to map seafloor substrates using machine learning, based primarily on hydroacoustic data in...
This thesis develops a method to incorporate domain knowledge into modern machine learning technique...
Schoening T, Kuhn T, Nattkemper TW. Seabed Classification Using a Bag-of-Prototypes Feature Represen...
In this work, we present a system for the automated classiffication of seabed substrates in underwat...
1352-1357Present study consists an experimental study of the framework for seafloor scene classific...
Manual analysis of large amounts of benthic images is time consuming and costly. This challenge has ...
Abstract Scientific imaging (e.g., satellites looking at ocean color, medical imaging) can produce ...
3D visual mapping of the seafloor has found applications ranging from environment monitoring and sur...
An understanding of marine ecosystems and their biodiversity is relevant to sustainable use of the g...
Scientific surveys using underwater robots can recover a huge volume of seafloor imagery. For mappin...
The extent and speed of marine environmental mapping is increasing quickly with technological advanc...
Far-sighted marine research institutions around the globe are capturing images from the seafloor at ...
Mapping and monitoring of seafloor habitats are key tasks for fully understanding ocean ecosystems a...
Here we present a technique for automatic classification of seafloor data collected during the 2012 ...
The need for detailed spatial map of marine habitats is increasingly important and demanding in mana...
A method to map seafloor substrates using machine learning, based primarily on hydroacoustic data in...
This thesis develops a method to incorporate domain knowledge into modern machine learning technique...
Schoening T, Kuhn T, Nattkemper TW. Seabed Classification Using a Bag-of-Prototypes Feature Represen...
In this work, we present a system for the automated classiffication of seabed substrates in underwat...
1352-1357Present study consists an experimental study of the framework for seafloor scene classific...
Manual analysis of large amounts of benthic images is time consuming and costly. This challenge has ...
Abstract Scientific imaging (e.g., satellites looking at ocean color, medical imaging) can produce ...
3D visual mapping of the seafloor has found applications ranging from environment monitoring and sur...
An understanding of marine ecosystems and their biodiversity is relevant to sustainable use of the g...
Scientific surveys using underwater robots can recover a huge volume of seafloor imagery. For mappin...
The extent and speed of marine environmental mapping is increasing quickly with technological advanc...
Far-sighted marine research institutions around the globe are capturing images from the seafloor at ...