Multi-domain learning (MDL) aims at obtaining a model with minimal average risk across multiple domains. Our empirical motivation is automated microscopy data, where cultured cells are imaged after being exposed to known and unknown chemical perturbations, and each dataset displays significant experimental bias. This paper presents a multi-domain adversarial learning approach, MuLANN, to leverage multiple datasets with overlapping but distinct class sets, in a semi-supervised setting. Our contributions include: i) a bound on the average- and worst-domain risk in MDL, obtained using the H-divergence; ii) a new loss to accommodate semi-supervised multi-domain learning and domain adaptation; iii) the experimental validation of the approach, im...
Most machine learning algorithms require that training data are identically distributed to ensure ef...
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 ...
International audienceMulti-domain learning (MDL) aims at obtaining a model with minimal average ris...
Recent advances in deep domain adaptation reveal that adversarial learning can be embedded into deep...
Recent works on domain adaptation reveal the effectiveness of adversarial learning on filling the di...
In this work, we present a new, algorithm for multi-domain learning. Given a pretrained architecture...
Deep learning architectures can achieve state-of-the-art results in several computer vision tasks. H...
Domain adaptation (DA) aims to transfer knowledge from one source domain to another different but re...
Abstract Domain adaptation for image classification is one of the most fundamental transfer learning...
Recent progresses in domain adaptive semantic segmentation demonstrate the effectiveness of adversar...
International audienceThe method proposed in this paper is a robust combination of multi-task learni...
Significant advances have been made towards building accu- rate automatic segmentation systems for a...
Deep learning models tend to underperform in the presence of domain shifts. Domain transfer has rece...
One of the main limitations of artificial intelligence today is its inability to adapt to unforeseen...
Most machine learning algorithms require that training data are identically distributed to ensure ef...
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 ...
International audienceMulti-domain learning (MDL) aims at obtaining a model with minimal average ris...
Recent advances in deep domain adaptation reveal that adversarial learning can be embedded into deep...
Recent works on domain adaptation reveal the effectiveness of adversarial learning on filling the di...
In this work, we present a new, algorithm for multi-domain learning. Given a pretrained architecture...
Deep learning architectures can achieve state-of-the-art results in several computer vision tasks. H...
Domain adaptation (DA) aims to transfer knowledge from one source domain to another different but re...
Abstract Domain adaptation for image classification is one of the most fundamental transfer learning...
Recent progresses in domain adaptive semantic segmentation demonstrate the effectiveness of adversar...
International audienceThe method proposed in this paper is a robust combination of multi-task learni...
Significant advances have been made towards building accu- rate automatic segmentation systems for a...
Deep learning models tend to underperform in the presence of domain shifts. Domain transfer has rece...
One of the main limitations of artificial intelligence today is its inability to adapt to unforeseen...
Most machine learning algorithms require that training data are identically distributed to ensure ef...
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 ...