Motivated by recent advances in deep domain adaptation, this paper introduces a deep architecture for estimating 3D keypoints when the training (source) and the test (target) images greatly differ in terms of visual appearance (domain shift). Our approach operates by promoting domain distribution alignment in the feature space adopting batch normalization-based techniques. Furthermore, we propose to collect statistics about 3D keypoints positions of the source training data and to use this prior information to constrain predictions on the target domain introducing a loss derived from Multidimensional Scaling. We conduct an extensive experimental evaluation considering three publicly available benchmarks and show that our approach out-perfor...
Using additional training data is known to improve the results, especially for medical image 3D segm...
One of the main challenges for developing visual recognition systems working in the wild is to devis...
none5noThe established approach to 3D keypoint detection consists in defining effective handcrafted ...
Motivated by recent advances in deep domain adaptation, this paper introduces a deep architecture fo...
Recent unsupervised domain adaptation methods based on deep architectures have shown remarkable perf...
Data is the main constraint when training Deep Learning models. Real-domain data is costly to annot...
Abstract—Discriminative, or (structured) prediction, methods have proved effective for variety of pr...
Background. Domain adaptation is described as, a model learning from a source data distribution and ...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
In recent years, computer vision tasks have increasingly used deep learning techniques. In some task...
International audiencePurpose: We propose to learn a 3D keypoint descriptor which we use to match ke...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
Domain adaptation algorithms focus on a setting where the training and test data are sampled from re...
International audienceDomain adaptation is an important task to enable learning when labels are scar...
Using additional training data is known to improve the results, especially for medical image 3D segm...
One of the main challenges for developing visual recognition systems working in the wild is to devis...
none5noThe established approach to 3D keypoint detection consists in defining effective handcrafted ...
Motivated by recent advances in deep domain adaptation, this paper introduces a deep architecture fo...
Recent unsupervised domain adaptation methods based on deep architectures have shown remarkable perf...
Data is the main constraint when training Deep Learning models. Real-domain data is costly to annot...
Abstract—Discriminative, or (structured) prediction, methods have proved effective for variety of pr...
Background. Domain adaptation is described as, a model learning from a source data distribution and ...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
In recent years, computer vision tasks have increasingly used deep learning techniques. In some task...
International audiencePurpose: We propose to learn a 3D keypoint descriptor which we use to match ke...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
Domain adaptation algorithms focus on a setting where the training and test data are sampled from re...
International audienceDomain adaptation is an important task to enable learning when labels are scar...
Using additional training data is known to improve the results, especially for medical image 3D segm...
One of the main challenges for developing visual recognition systems working in the wild is to devis...
none5noThe established approach to 3D keypoint detection consists in defining effective handcrafted ...