This thesis focuses on one of the most challenging problems in the field of computer vision, i.e. general object recognition. In the introduction we first delineate the problem and possible solutions that have been formulated over the past thirty years. We proceed by concentrating on mostly one of the latest approaches introduced by Ali Farhadi et al, who have suggested a system which ascribes certain semantic and discriminative attributes to each object, which then act as a basis for performing quite satisfactory object recognition. We observe that this system has many additional advantages such as faster learning of greater number of categories, reporting unusual object traits as well as even learning and recognizing objects on the basis ...
Utilizing attributes for visual recognition has attracted increasingly interest because attributes c...
Attribute-based representation has shown great promis-es for visual recognition due to its intuitive...
We study the problem of object recognition for categories for which we have no training examples, a ...
This is the supplementary material for Designing Category-Level Attributes for Dis-criminative Visua...
Attributes of objects such as "square", "metallic", and "red" allow a way for humans to explain or d...
textVisual object category recognition is one of the most challenging problems in computer vision. E...
textVisual object category recognition is one of the most challenging problems in computer vision. E...
Abstract\\ It has been shown that learning on high-level visual description or visual properties of ...
This thesis is concerned with the modeling, representing and learning of visual categories for the p...
This thesis is concerned with the modeling, representing and learning of visual categories for the p...
This is the supplementary material for Designing Category-Level Attributes for Discriminative Visual...
Attributes possess appealing properties and benefit many computer vision problems, such as object re...
We address various issues in learning and representation of visual object categories. A key componen...
Recognition is a deep and fundamental question in computer vision. If approached correctly, object r...
Abstract\\ It has been shown that learning on high-level visual description or visual properties of...
Utilizing attributes for visual recognition has attracted increasingly interest because attributes c...
Attribute-based representation has shown great promis-es for visual recognition due to its intuitive...
We study the problem of object recognition for categories for which we have no training examples, a ...
This is the supplementary material for Designing Category-Level Attributes for Dis-criminative Visua...
Attributes of objects such as "square", "metallic", and "red" allow a way for humans to explain or d...
textVisual object category recognition is one of the most challenging problems in computer vision. E...
textVisual object category recognition is one of the most challenging problems in computer vision. E...
Abstract\\ It has been shown that learning on high-level visual description or visual properties of ...
This thesis is concerned with the modeling, representing and learning of visual categories for the p...
This thesis is concerned with the modeling, representing and learning of visual categories for the p...
This is the supplementary material for Designing Category-Level Attributes for Discriminative Visual...
Attributes possess appealing properties and benefit many computer vision problems, such as object re...
We address various issues in learning and representation of visual object categories. A key componen...
Recognition is a deep and fundamental question in computer vision. If approached correctly, object r...
Abstract\\ It has been shown that learning on high-level visual description or visual properties of...
Utilizing attributes for visual recognition has attracted increasingly interest because attributes c...
Attribute-based representation has shown great promis-es for visual recognition due to its intuitive...
We study the problem of object recognition for categories for which we have no training examples, a ...