Many techniques to reduce the cost at test time in large-scale problems involve a hierarchical organization of classifiers, but are either too expensive to learn or degrade the classification performance. Conversely, in this work we show that using ensembles of randomized hierarchical decompositions of the original problem can both improve the accuracy and reduce the computational complexity at test time. The proposed method is evaluated in the ImageNet Large Scale Visual Recognition Challenge’10, with promising results.Peer Reviewe
La construction d'algorithmes classifiant des images à grande échelle est devenue une t^ache essenti...
Object recognition in images is used in many areas of practical use. Very often, progress in its app...
A canonical problem in computer vision is category recognition (e.g. find all instances of human fac...
Many techniques to reduce the cost at test time in large-scale problems involve a hierarchical organ...
<p> Large-scale image classification is a challenging task and has recently attracted active resear...
© 2016 IEEE. We investigate the scalable image classification problem with a large number of categor...
With the advent of larger image classification datasets such as ImageNet, designing scalable and eff...
We consider sublinear test-time algorithms for image catego-rization when the number of classes is v...
Most previous research on image categorization has focused on medium-scale data sets, while large-sc...
International audienceWe propose a benchmark of several objective functions for large-scale image cl...
We consider in this paper the problem of large scale natural image classification. As the explosion ...
Most previous research on image categorization has focused on medium-scale data sets, while large-sc...
Deep neural networks (DNNs) have drawn much attention due to their success in various vision tasks. ...
The number of images is growing rapidly in recent years because of development of Internet, especial...
The sparse coding technique has shown flexibility and capability in image representation and analysi...
La construction d'algorithmes classifiant des images à grande échelle est devenue une t^ache essenti...
Object recognition in images is used in many areas of practical use. Very often, progress in its app...
A canonical problem in computer vision is category recognition (e.g. find all instances of human fac...
Many techniques to reduce the cost at test time in large-scale problems involve a hierarchical organ...
<p> Large-scale image classification is a challenging task and has recently attracted active resear...
© 2016 IEEE. We investigate the scalable image classification problem with a large number of categor...
With the advent of larger image classification datasets such as ImageNet, designing scalable and eff...
We consider sublinear test-time algorithms for image catego-rization when the number of classes is v...
Most previous research on image categorization has focused on medium-scale data sets, while large-sc...
International audienceWe propose a benchmark of several objective functions for large-scale image cl...
We consider in this paper the problem of large scale natural image classification. As the explosion ...
Most previous research on image categorization has focused on medium-scale data sets, while large-sc...
Deep neural networks (DNNs) have drawn much attention due to their success in various vision tasks. ...
The number of images is growing rapidly in recent years because of development of Internet, especial...
The sparse coding technique has shown flexibility and capability in image representation and analysi...
La construction d'algorithmes classifiant des images à grande échelle est devenue une t^ache essenti...
Object recognition in images is used in many areas of practical use. Very often, progress in its app...
A canonical problem in computer vision is category recognition (e.g. find all instances of human fac...