Most previous research on image categorization has focused on medium-scale data sets, while large-scale image categorization with millions of images from thousands of categories remains a challenge. With the emergence of structured large-scale dataset such as the ImageNet, rich information about the conceptual relationships between images, such as a tree hierarchy among various image categories, become available. As human cognition of complex visual world benefits from underlying semantic relationships between object classes, we believe a machine learning system can and should leverage such information as well for better performance. In this paper, we employ such semantic relatedness among image categories for large-scale image categorizati...
Assigning categorical labels to objects in images has proven to be a significantchallenge for automa...
We consider sublinear test-time algorithms for image catego-rization when the number of classes is v...
Heidemann G. Unsupervised image categorization. Image and Vision Computing. 2005;23(10):861-876.Larg...
Most previous research on image categorization has focused on medium-scale data sets, while large-sc...
Most previous research on image categorization has focused on medium-scale data sets, while large-sc...
© 2016 IEEE. We investigate the scalable image classification problem with a large number of categor...
This thesis tackles the problem of large-scale visual search for categories within large collections...
<p> Large-scale image classification is a challenging task and has recently attracted active resear...
Automatic image annotation assigns semantic labels to images thus presents great potential to achiev...
Many techniques to reduce the cost at test time in large-scale problems involve a hierarchical organ...
This paper proposes a novel approach to constructing a hierarchical representation of visual input t...
With the advent of larger image classification datasets such as ImageNet, designing scalable and eff...
For the task of visual categorization, the learning model is expected to be endowed with discriminat...
With the growing interest in object categorization vari-ous methods have emerged that perform well i...
The sparse coding technique has shown flexibility and capability in image representation and analysi...
Assigning categorical labels to objects in images has proven to be a significantchallenge for automa...
We consider sublinear test-time algorithms for image catego-rization when the number of classes is v...
Heidemann G. Unsupervised image categorization. Image and Vision Computing. 2005;23(10):861-876.Larg...
Most previous research on image categorization has focused on medium-scale data sets, while large-sc...
Most previous research on image categorization has focused on medium-scale data sets, while large-sc...
© 2016 IEEE. We investigate the scalable image classification problem with a large number of categor...
This thesis tackles the problem of large-scale visual search for categories within large collections...
<p> Large-scale image classification is a challenging task and has recently attracted active resear...
Automatic image annotation assigns semantic labels to images thus presents great potential to achiev...
Many techniques to reduce the cost at test time in large-scale problems involve a hierarchical organ...
This paper proposes a novel approach to constructing a hierarchical representation of visual input t...
With the advent of larger image classification datasets such as ImageNet, designing scalable and eff...
For the task of visual categorization, the learning model is expected to be endowed with discriminat...
With the growing interest in object categorization vari-ous methods have emerged that perform well i...
The sparse coding technique has shown flexibility and capability in image representation and analysi...
Assigning categorical labels to objects in images has proven to be a significantchallenge for automa...
We consider sublinear test-time algorithms for image catego-rization when the number of classes is v...
Heidemann G. Unsupervised image categorization. Image and Vision Computing. 2005;23(10):861-876.Larg...