Authors
Aditya Khosla, Tinghui Zhou, Tomasz Malisiewicz, Alexei A. Efros, Antonio Torralba
Publication date
2012
Conference
European Conference on Computer Vision
Publisher
Springer
Description
The presence of bias in existing object recognition datasets is now well-known in the computer vision community. While it remains in question whether creating an unbiased dataset is possible given limited resources, in this work we propose a discriminative framework that directly exploits dataset bias during training. In particular, our model learns two sets of weights: (1) bias vectors associated with each individual dataset, and (2) visual world weights that are common to all datasets, which are learned by undoing the associated bias from each dataset. The visual world weights are expected to be our best possible approximation to the object model trained on an unbiased dataset, and thus tend to have good generalization ability. We demonstrate the effectiveness of our model by applying the learned weights to a novel, unseen dataset, and report superior results for both classification and detection tasks …
Total citations
20122013201420152016201720182019202020212022202320243262431412843706583716934
Scholar articles
A Khosla, T Zhou, T Malisiewicz, AA Efros, A Torralba - Computer Vision–ECCV 2012: 12th European …, 2012