Images seen during test time are often not from the same distribution as images used for learning. This problem, known as domain shift, occurs when training classifiers from object-centric internet image databases and trying to apply them directly to scene understanding tasks. The con-sequence is often severe performance degradation and is one of the major barriers for the application of classifiers in real-world systems. In this paper, we show how to learn transform-based domain adaptation classifiers in a scalable manner. The key idea is to exploit an implicit rank con-straint, originated from a max-margin domain adaptation formulation, to make optimization tractable. Experiments show that the transformation between domains can be very ef...
Deep models must learn robust and transferable representations in order to perform well on new domai...
This paper describes the first edition of the Domain Adaptation Task at ImageCLEF 2014. Domain adapt...
Most machine learning algorithms assume that training and test data are sampled from the same distri...
Images seen during test time are often not from the same distribution as images used for learning. T...
Image classification has been used in many real-world applications such as self-driving cars, recomm...
Image classification has been used in many real-world applications such as self-driving cars, recomm...
We describe an unsupervised domain adaptation framework for images by a transform to an abstract int...
The advent of deep convolutional networks has powered a new wave of progress in visual recognition. ...
The advent of deep convolutional networks has powered a new wave of progress in visual recognition. ...
Abstract. In this paper we report the contribution of XRCE team to the Domain Adaptation Challenge [...
One of the main limitations of artificial intelligence today is its inability to adapt to unforeseen...
Abstract. The supervised learning paradigm assumes in general that both training and test data are s...
Abstract. This paper describes the first edition of the Domain Adapta-tion Task at ImageCLEF 2014. D...
A basic assumption of statistical learning theory is that train and test data are drawn from the sam...
Abstract. This paper describes the first edition of the Domain Adapta-tion Task at ImageCLEF 2014. D...
Deep models must learn robust and transferable representations in order to perform well on new domai...
This paper describes the first edition of the Domain Adaptation Task at ImageCLEF 2014. Domain adapt...
Most machine learning algorithms assume that training and test data are sampled from the same distri...
Images seen during test time are often not from the same distribution as images used for learning. T...
Image classification has been used in many real-world applications such as self-driving cars, recomm...
Image classification has been used in many real-world applications such as self-driving cars, recomm...
We describe an unsupervised domain adaptation framework for images by a transform to an abstract int...
The advent of deep convolutional networks has powered a new wave of progress in visual recognition. ...
The advent of deep convolutional networks has powered a new wave of progress in visual recognition. ...
Abstract. In this paper we report the contribution of XRCE team to the Domain Adaptation Challenge [...
One of the main limitations of artificial intelligence today is its inability to adapt to unforeseen...
Abstract. The supervised learning paradigm assumes in general that both training and test data are s...
Abstract. This paper describes the first edition of the Domain Adapta-tion Task at ImageCLEF 2014. D...
A basic assumption of statistical learning theory is that train and test data are drawn from the sam...
Abstract. This paper describes the first edition of the Domain Adapta-tion Task at ImageCLEF 2014. D...
Deep models must learn robust and transferable representations in order to perform well on new domai...
This paper describes the first edition of the Domain Adaptation Task at ImageCLEF 2014. Domain adapt...
Most machine learning algorithms assume that training and test data are sampled from the same distri...