This study aims at the autonomous seafloor surveillance by underwater vehicles based on computer vision techniques. A novel scheme of seabed image classification is proposed to identify three types of seabed sediments. The texture features of seabed sediments were described by using gray-level co-occurrence matrix and fractal dimension. Subsequently, an unsupervised learning method, Self-Organizing Map, was applied to analyze the seabed images with the extracted texture features. The experimental results demonstrated that the proposed texture feature descriptors were feasible and effective to category the three types of seabed images
An automatic classifier algorithm has been designed to assess the population of Posidonia oceanica o...
The increasing scientific and economic interest in the visual exploration and monitoring of marine a...
Machine learning is becoming an increasingly useful tool across many scientific disciplines; however...
This study aims at the autonomous seafloor surveillance by underwater vehicles based on computer vis...
The purpose of this research is to define and extract the visual features of the seabed sediments to...
Perception of the seabed environment is an important capability of autonomous underwater vehicles. T...
In order to perform autonomous manipulation in underwater surveys, a robust seabed type classificati...
This paper describes a method for the classification of seabed type from a video cap-tured by a came...
Through the recognition of ocean sediment sonar images, the texture in the image can be classified, ...
International audienceAbstract—The conventional approaches for habitats mapping based on supervised ...
The authors present a technique for making use of both sidescan amplitude and bathymetric data provi...
Abstract. The automatic seabed characterization is a difficult problem. Most automatic characterizat...
Here we present a technique for automatic classification of seafloor data collected during the 2012 ...
In this paper, object-based image analysis classification methods are developed that do not rely on ...
Along with the development of sonar technology, the detection accuracy and stability of sonar have b...
An automatic classifier algorithm has been designed to assess the population of Posidonia oceanica o...
The increasing scientific and economic interest in the visual exploration and monitoring of marine a...
Machine learning is becoming an increasingly useful tool across many scientific disciplines; however...
This study aims at the autonomous seafloor surveillance by underwater vehicles based on computer vis...
The purpose of this research is to define and extract the visual features of the seabed sediments to...
Perception of the seabed environment is an important capability of autonomous underwater vehicles. T...
In order to perform autonomous manipulation in underwater surveys, a robust seabed type classificati...
This paper describes a method for the classification of seabed type from a video cap-tured by a came...
Through the recognition of ocean sediment sonar images, the texture in the image can be classified, ...
International audienceAbstract—The conventional approaches for habitats mapping based on supervised ...
The authors present a technique for making use of both sidescan amplitude and bathymetric data provi...
Abstract. The automatic seabed characterization is a difficult problem. Most automatic characterizat...
Here we present a technique for automatic classification of seafloor data collected during the 2012 ...
In this paper, object-based image analysis classification methods are developed that do not rely on ...
Along with the development of sonar technology, the detection accuracy and stability of sonar have b...
An automatic classifier algorithm has been designed to assess the population of Posidonia oceanica o...
The increasing scientific and economic interest in the visual exploration and monitoring of marine a...
Machine learning is becoming an increasingly useful tool across many scientific disciplines; however...