In this thesis, we study how semantics can improve image categorization. Previous image categorization approaches mostly neglect semantics, which has two major limitations. First, object classes have semantic overlaps. For example, “sedan” is a specific kind of “car”. However, previous approaches treat “sedan” and “car” as independent and train a classifier to distinguish them, which is unreasonable. Second, image features used for classification are unified for different object classes. But this is at odds with the human perception system, which is believed to use different features for distinct objects. For example, the features used for differentiating “sedan” from “bike” should be distinct from the features used for differentiating “sed...
Finding relations between image semantics and image characteristics is a problem of long standing in...
This paper presents a new approach for the object categorization problem. Our model is based on the ...
© 2018 Studies show that refining real-world categories into semantic subcategories contributes to b...
In this thesis, we study how semantics can improve image categorization. Previous image categorizati...
textVisual object category recognition is one of the most challenging problems in computer vision. E...
In this paper, we study how to use semantic relationships for image classification in order to impro...
International audienceIn this paper we propose to use lexical semantic networks to extend the state-...
The aim of semantic image understanding is to reveal the semantic meaning behind the image pixel. Th...
This article introduces an image classification approach in which the semantic context of images and...
When learning features for complex visual recognition problems, labeled image exemplars alone can be...
Lack of human prior knowledge is one of the main reasons that the semantic gap still remains when it...
Extracting and utilizing high-level semantic information from images is one of the important goals o...
AbstractDespite the major effort put into the creation of Content-Based Image Retrieval (CBIR) syste...
Due to the semantic gap, the low-level features are unsatisfactory for object categorization. Beside...
International audienceThis paper presents a new approach for object categorization involving the fol...
Finding relations between image semantics and image characteristics is a problem of long standing in...
This paper presents a new approach for the object categorization problem. Our model is based on the ...
© 2018 Studies show that refining real-world categories into semantic subcategories contributes to b...
In this thesis, we study how semantics can improve image categorization. Previous image categorizati...
textVisual object category recognition is one of the most challenging problems in computer vision. E...
In this paper, we study how to use semantic relationships for image classification in order to impro...
International audienceIn this paper we propose to use lexical semantic networks to extend the state-...
The aim of semantic image understanding is to reveal the semantic meaning behind the image pixel. Th...
This article introduces an image classification approach in which the semantic context of images and...
When learning features for complex visual recognition problems, labeled image exemplars alone can be...
Lack of human prior knowledge is one of the main reasons that the semantic gap still remains when it...
Extracting and utilizing high-level semantic information from images is one of the important goals o...
AbstractDespite the major effort put into the creation of Content-Based Image Retrieval (CBIR) syste...
Due to the semantic gap, the low-level features are unsatisfactory for object categorization. Beside...
International audienceThis paper presents a new approach for object categorization involving the fol...
Finding relations between image semantics and image characteristics is a problem of long standing in...
This paper presents a new approach for the object categorization problem. Our model is based on the ...
© 2018 Studies show that refining real-world categories into semantic subcategories contributes to b...