In this paper we aim for object classification and segmentation by attributes. Where existing work considers attributes either for the global image or for the parts of the object, we propose, as our first novelty, to learn and extract attributes on segments containing the entire object. Object-level attributes suffer less from accidental content around the object and accidental image conditions such as partial occlusions, scale changes and viewpoint changes. As our second novelty, we propose joint learning for simultaneous object classification and segment proposal ranking, solely on the basis of attributes. This naturally brings us to our third novelty: object-level attributes for zero-shot, where we use attribute descriptions of unseen cl...
This thesis focuses on one of the most challenging problems in the field of computer vision, i.e. ge...
Abstract. When humans describe images they tend to use combinations of nouns and adjectives, corresp...
Methods based on local, viewpoint invariant features have proven capable of recognizing objects in s...
Abstract. In this paper we aim for object classification and segmentation by attributes. Where exist...
We study the problem of object recognition for categories for which we have no training examples, a ...
Generally, training images are essential for a computer vision model to classify specific object cla...
We study the problem of object classification when training and test classes are disjoint, i.e. no t...
We study the problem of object classification when training and test classes are disjoint, i.e. no t...
Attributes of objects such as "square", "metallic", and "red" allow a way for humans to explain or d...
We study the problem of object classification when training and test classes are disjoint, i.e. no t...
When humans describe images they tend to use combinations of nouns and adjectives, corresponding to ...
When humans describe images they tend to use combinations of nouns and adjectives, corresponding to ...
The concepts of objects and attributes are both impor-tant for describing images precisely, since ve...
We present a probabilistic generative model of visual attributes, together with an efficient learnin...
We present a probabilistic generative model of visual attributes, together with an efficient learnin...
This thesis focuses on one of the most challenging problems in the field of computer vision, i.e. ge...
Abstract. When humans describe images they tend to use combinations of nouns and adjectives, corresp...
Methods based on local, viewpoint invariant features have proven capable of recognizing objects in s...
Abstract. In this paper we aim for object classification and segmentation by attributes. Where exist...
We study the problem of object recognition for categories for which we have no training examples, a ...
Generally, training images are essential for a computer vision model to classify specific object cla...
We study the problem of object classification when training and test classes are disjoint, i.e. no t...
We study the problem of object classification when training and test classes are disjoint, i.e. no t...
Attributes of objects such as "square", "metallic", and "red" allow a way for humans to explain or d...
We study the problem of object classification when training and test classes are disjoint, i.e. no t...
When humans describe images they tend to use combinations of nouns and adjectives, corresponding to ...
When humans describe images they tend to use combinations of nouns and adjectives, corresponding to ...
The concepts of objects and attributes are both impor-tant for describing images precisely, since ve...
We present a probabilistic generative model of visual attributes, together with an efficient learnin...
We present a probabilistic generative model of visual attributes, together with an efficient learnin...
This thesis focuses on one of the most challenging problems in the field of computer vision, i.e. ge...
Abstract. When humans describe images they tend to use combinations of nouns and adjectives, corresp...
Methods based on local, viewpoint invariant features have proven capable of recognizing objects in s...