Visual recognition has always been a fundamental problem in computer vision. Its task is to learn visual categories using labeled training data and then identify unlabeled new instances of those categories. However, due to the large variations in visual data, visual recognition is still a challenging problem. Handling the variations in captured images is important for real-world applications where unconstrained data acquisition scenarios are widely prevalent. In this dissertation, we first address the variations between training and testing data. Particularly, for cross-domain object recognition, we propose a Grassmann manifold-based domain adaptation approach to model the domain shift using the geodesic connecting the source and target d...
Image and video recognition is a fundamental and challenging problem in computer vision, which has p...
While deep neural networks attain state-of-the-art performance for computer vision tasks with the he...
Abstract. Real world applicability of many computer vision solutions is constrained by the mismatch ...
New approaches for dictionary learning and domain adaptation are proposed for face and action recogn...
Thanks to the advancement of machine learning and computer vision research we are observing remarkab...
Human action recognition is crucial to many practical applications, ranging from human-computer inte...
Machine learning algorithms usually require a huge amount of training examples to learn a new model ...
We address the visual categorization problem and present a method that utilizes weakly labeled data ...
Human action recognition is crucial to many practical applications, ranging from human-computer inte...
Cross domain recognition extracts knowledge from one domain to recognize samples from another domain...
Human action recognition is crucial to many practical applications, ranging from human-computer inte...
In an extension of the AdaBoost and transfer AdaBoost algorithms, a boosted cross-domain categorizat...
Deep learning has recently raised hopes and expectations as a general solution for many applications...
In an extension of the AdaBoost and transfer AdaBoost algorithms, a boosted cross-domain categorizat...
We present a novel cross-dataset action recognition framework that utilizes relevant actions from ot...
Image and video recognition is a fundamental and challenging problem in computer vision, which has p...
While deep neural networks attain state-of-the-art performance for computer vision tasks with the he...
Abstract. Real world applicability of many computer vision solutions is constrained by the mismatch ...
New approaches for dictionary learning and domain adaptation are proposed for face and action recogn...
Thanks to the advancement of machine learning and computer vision research we are observing remarkab...
Human action recognition is crucial to many practical applications, ranging from human-computer inte...
Machine learning algorithms usually require a huge amount of training examples to learn a new model ...
We address the visual categorization problem and present a method that utilizes weakly labeled data ...
Human action recognition is crucial to many practical applications, ranging from human-computer inte...
Cross domain recognition extracts knowledge from one domain to recognize samples from another domain...
Human action recognition is crucial to many practical applications, ranging from human-computer inte...
In an extension of the AdaBoost and transfer AdaBoost algorithms, a boosted cross-domain categorizat...
Deep learning has recently raised hopes and expectations as a general solution for many applications...
In an extension of the AdaBoost and transfer AdaBoost algorithms, a boosted cross-domain categorizat...
We present a novel cross-dataset action recognition framework that utilizes relevant actions from ot...
Image and video recognition is a fundamental and challenging problem in computer vision, which has p...
While deep neural networks attain state-of-the-art performance for computer vision tasks with the he...
Abstract. Real world applicability of many computer vision solutions is constrained by the mismatch ...