Most supervised classification approaches try to learn patterns in in-ter class variabilities using training samples. However in the real world, their discriminative power is often diminished, because data is seldom free from irregularities within a class. Apriori modeling of these intra class variabilities poses a challenge even in underwa-ter sidescan sonar images that we consider for object classification in this work. Sparse representation techniques prove particularly useful in this regard because of their data driven approach to model these variabilities. Results on the NSWC sidescan sonar database suggest that sparse representation classifier with zernike magnitude features is significantly robust in the presence of these non-idealit...
Abstract—New generations of sonars appeared in the last decade. The major interest in SAS systems an...
Cette thèse a pour objectif d'améliorer la classification d'objets sous-marins dans des images sonar...
International audienceAbstract—The conventional approaches for habitats mapping based on supervised ...
International audienceThis paper presents a model-based approach to perform underwater target classi...
The detection of mine-like objects (MLOs) in sidescan sonar (SSS) imagery continues to be a challeng...
The task of detecting mine-like objects (MLOs) in side scan sonar imagery has a profound impact on m...
Forward Looking Sonars (FLS) are a typical choiceof sonar for autonomous underwater vehicles. They a...
Abstract Multi-beam sonar imaging has been widely used in various underwater tasks su...
Abstract—Mine-like object classification from sidescan sonar images is of great interest for mine co...
Side-scan sonar is widely used in underwater rescue and the detection of undersea targets, such as s...
In this paper, the detection of mines or other objects on the seabed from multiple side-scan sonar v...
The authors present a technique for making use of both sidescan amplitude and bathymetric data provi...
In this paper, we present methods for segmenting noisy two-dimensional forward-scan sonar images and...
Abstract Data in most of the real world applications like sonar images clas-sification are high dime...
2013-04-22This thesis proposes novel variations of Sparse Representation techniques and shows succes...
Abstract—New generations of sonars appeared in the last decade. The major interest in SAS systems an...
Cette thèse a pour objectif d'améliorer la classification d'objets sous-marins dans des images sonar...
International audienceAbstract—The conventional approaches for habitats mapping based on supervised ...
International audienceThis paper presents a model-based approach to perform underwater target classi...
The detection of mine-like objects (MLOs) in sidescan sonar (SSS) imagery continues to be a challeng...
The task of detecting mine-like objects (MLOs) in side scan sonar imagery has a profound impact on m...
Forward Looking Sonars (FLS) are a typical choiceof sonar for autonomous underwater vehicles. They a...
Abstract Multi-beam sonar imaging has been widely used in various underwater tasks su...
Abstract—Mine-like object classification from sidescan sonar images is of great interest for mine co...
Side-scan sonar is widely used in underwater rescue and the detection of undersea targets, such as s...
In this paper, the detection of mines or other objects on the seabed from multiple side-scan sonar v...
The authors present a technique for making use of both sidescan amplitude and bathymetric data provi...
In this paper, we present methods for segmenting noisy two-dimensional forward-scan sonar images and...
Abstract Data in most of the real world applications like sonar images clas-sification are high dime...
2013-04-22This thesis proposes novel variations of Sparse Representation techniques and shows succes...
Abstract—New generations of sonars appeared in the last decade. The major interest in SAS systems an...
Cette thèse a pour objectif d'améliorer la classification d'objets sous-marins dans des images sonar...
International audienceAbstract—The conventional approaches for habitats mapping based on supervised ...