Over the last years, several authors have signaled that state of the art categorization methods fail to perform well when trained and tested on data from different databases. The general consensus in the literature is that this issue, known as domain adaptation and/or dataset bias, is due to a distribution mismatch between data collections. Methods addressing it go from max-margin classifiers to learning how to modify the features and obtain a more robust representation. The large majority of these works use BOW feature descriptors, and learning methods based on image-to-image distance functions. Following the seminal work of [6], in this paper we challenge these two assumptions. We experimentally show that using the NBNN classifier over ex...
Abstract. We propose a simple neural network model to deal with the domain adaptation problem in obj...
A classifier trained on a dataset seldom works on other datasets obtained under different conditions...
Domain adaptation aims at generalizing a high-performance learner on a target domain via utilizing t...
As of today, object categorization algorithms are not able to achieve the level of robustness and ge...
For unsupervised domain adaptation, the process of learning domain-invariant representations could b...
Deep neural networks have been successfully applied in domain adaptation which uses the labeled data...
Tommasi T., Caputo B., ''Frustratingly easy NBNN domain adaptation'', Proceedings 14th international...
Current Domain Adaptation (DA) methods based on deep architectures assume that the source samples ar...
Discriminative learning methods for classification perform well when training and test data are draw...
Images seen during test time are often not from the same distribution as images used for learning. T...
Deep neural networks can learn powerful representations from massive amounts of labeled data; howeve...
Recent studies reveal that a deep neural network can learn transferable features which generalize we...
We propose an unsupervised domain adaptation method that exploits intrinsic compact structures of ca...
Domain adaptation aims to leverage a labeled source domain to learn a classifier for the unlabeled t...
Recent studies have shown that recognition datasets are biased. Paying no heed to those biases, lear...
Abstract. We propose a simple neural network model to deal with the domain adaptation problem in obj...
A classifier trained on a dataset seldom works on other datasets obtained under different conditions...
Domain adaptation aims at generalizing a high-performance learner on a target domain via utilizing t...
As of today, object categorization algorithms are not able to achieve the level of robustness and ge...
For unsupervised domain adaptation, the process of learning domain-invariant representations could b...
Deep neural networks have been successfully applied in domain adaptation which uses the labeled data...
Tommasi T., Caputo B., ''Frustratingly easy NBNN domain adaptation'', Proceedings 14th international...
Current Domain Adaptation (DA) methods based on deep architectures assume that the source samples ar...
Discriminative learning methods for classification perform well when training and test data are draw...
Images seen during test time are often not from the same distribution as images used for learning. T...
Deep neural networks can learn powerful representations from massive amounts of labeled data; howeve...
Recent studies reveal that a deep neural network can learn transferable features which generalize we...
We propose an unsupervised domain adaptation method that exploits intrinsic compact structures of ca...
Domain adaptation aims to leverage a labeled source domain to learn a classifier for the unlabeled t...
Recent studies have shown that recognition datasets are biased. Paying no heed to those biases, lear...
Abstract. We propose a simple neural network model to deal with the domain adaptation problem in obj...
A classifier trained on a dataset seldom works on other datasets obtained under different conditions...
Domain adaptation aims at generalizing a high-performance learner on a target domain via utilizing t...