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CVPR
2010
IEEE

Comparative object similarity for improved recognition with few or no examples

14 years 24 days ago
Comparative object similarity for improved recognition with few or no examples
Learning models for recognizing objects with few or no training examples is important, due to the intrinsic longtailed distribution of objects in the real world. In this paper, we propose an approach to use comparative object similarity. The key insight is that: given a set of object categories which are similar and a set of categories which are dissimilar, a good object model should respond more strongly to examples from similar categories than to examples from dissimilar categories. We develop a regularized kernel machine algorithm to use this category dependent similarity regularization. Our experiments on hundreds of categories show that our method can make significant improvement, especially for categories with no examples.
Gang Wang, David Forsyth, Derek Hoiem
Added 05 Apr 2010
Updated 14 May 2010
Type Conference
Year 2010
Where CVPR
Authors Gang Wang, David Forsyth, Derek Hoiem
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