Modern image classification methods are based on supervised learning algorithms that require labeled training data. However, only a limited amount of annotated data may be available in certain applications due to scarcity of the data itself or high costs associated with human annotation. Introduction of additional information and structural constraints can help improve the performance of a learning algorithm. In this thesis, we study the framework of learning using privileged information and demonstrate its relation to learning with instance weights. We also consider multitask feature learning and develop an efficient dual optimization scheme that is particularly well suited to problems with high dimensional image descriptors. Scaling annot...
We address the problem of partially-labeled multiclass classification, where instead of a single lab...
Statistical machine learning techniques have transformed computer vision research in the last two de...
Abstract—A probabilistic formulation for semantic image annotation and retrieval is proposed. Annota...
Modern image classification methods are based on supervised learning algorithms that require labeled...
Modern image classification methods are based on supervised learning algorithms that require labeled...
Modern image classification methods are based on supervised learning algorithms that require labeled...
Big data is an increasingly attractive concept in many fields both in academia and in industry. The ...
Big data is an increasingly attractive concept in many fields both in academia and in industry. The ...
We introduce a new method to automatically annotate and retrieve images using a vocabulary of image ...
Increased use of data and computation have been the main drivers in Deep Learning for improving perf...
In many image and video collections, we have access only to partially labeled data. For example, per...
We introduce a framework for actively learning visual categories from a mixture of weakly and strong...
In this paper we propose a novel biased random sampling strategy for image representation in Bag-of-...
In many image and video collections, we have access only to partially labeled data. For example, per...
We introduce a new method to automatically annotate and retrieve images using a vocabulary of image ...
We address the problem of partially-labeled multiclass classification, where instead of a single lab...
Statistical machine learning techniques have transformed computer vision research in the last two de...
Abstract—A probabilistic formulation for semantic image annotation and retrieval is proposed. Annota...
Modern image classification methods are based on supervised learning algorithms that require labeled...
Modern image classification methods are based on supervised learning algorithms that require labeled...
Modern image classification methods are based on supervised learning algorithms that require labeled...
Big data is an increasingly attractive concept in many fields both in academia and in industry. The ...
Big data is an increasingly attractive concept in many fields both in academia and in industry. The ...
We introduce a new method to automatically annotate and retrieve images using a vocabulary of image ...
Increased use of data and computation have been the main drivers in Deep Learning for improving perf...
In many image and video collections, we have access only to partially labeled data. For example, per...
We introduce a framework for actively learning visual categories from a mixture of weakly and strong...
In this paper we propose a novel biased random sampling strategy for image representation in Bag-of-...
In many image and video collections, we have access only to partially labeled data. For example, per...
We introduce a new method to automatically annotate and retrieve images using a vocabulary of image ...
We address the problem of partially-labeled multiclass classification, where instead of a single lab...
Statistical machine learning techniques have transformed computer vision research in the last two de...
Abstract—A probabilistic formulation for semantic image annotation and retrieval is proposed. Annota...