Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Nicolas Courty is active.

Publication


Featured researches published by Nicolas Courty.


Isprs Journal of Photogrammetry and Remote Sensing | 2015

Multiclass feature learning for hyperspectral image classification: Sparse and hierarchical solutions

Devis Tuia; Rémi Flamary; Nicolas Courty

In this paper, we tackle the question of discovering an effective set of spatial filters to solve hyperspectral classification problems. Instead of fixing a priori the filters and their parameters using expert knowledge, we let the model find them within random draws in the (possibly infinite) space of possible filters. We define an active set feature learner that includes in the model only features that improve the classifier. To this end, we consider a fast and linear classifier, multiclass logistic classification, and show that with a good representation (the filters discovered), such a simple classifier can reach at least state of the art performances. We apply the proposed active set learner in four hyperspectral image classification problems, including agricultural and urban classification at different resolutions, as well as multimodal data. We also propose a hierarchical setting, which allows to generate more complex banks of features that can better describe the nonlinearities present in the data.


IEEE Transactions on Pattern Analysis and Machine Intelligence | 2017

Optimal Transport for Domain Adaptation

Nicolas Courty; Rémi Flamary; Devis Tuia; Alain Rakotomamonjy

Domain adaptation is one of the most challenging tasks of modern data analytics. If the adaptation is done correctly, models built on a specific data representation become more robust when confronted to data depicting the same classes, but described by another observation system. Among the many strategies proposed, finding domain-invariant representations has shown excellent properties, in particular since it allows to train a unique classifier effective in all domains. In this paper, we propose a regularized unsupervised optimal transportation model to perform the alignment of the representations in the source and target domains. We learn a transportation plan matching both PDFs, which constrains labeled samples of the same class in the source domain to remain close during transport. This way, we exploit at the same time the labeled samples in the source and the distributions observed in both domains. Experiments on toy and challenging real visual adaptation examples show the interest of the method, that consistently outperforms state of the art approaches. In addition, numerical experiments show that our approach leads to better performances on domain invariant deep learning features and can be easily adapted to the semi-supervised case where few labeled samples are available in the target domain.


european conference on machine learning | 2014

Domain Adaptation with Regularized Optimal Transport

Nicolas Courty; Rémi Flamary; Devis Tuia

We present a new and original method to solve the domain adaptation problem using optimal transport. By searching for the best transportation plan between the probability distribution functions of a source and a target domain, a non-linear and invertible transformation of the learning samples can be estimated. Any standard machine learning method can then be applied on the transformed set, which makes our method very generic. We propose a new optimal transport algorithm that incorporates label information in the optimization: this is achieved by combining an efficient matrix scaling technique together with a majoration of a non-convex regularization term. By using the proposed optimal transport with label regularization, we obtain significant increase in performance compared to the original transport solution. The proposed algorithm is computationally efficient and effective, as illustrated by its evaluation on a toy example and a challenging real life vision dataset, against which it achieves competitive results with respect to state-of-the-art methods.


european conference on machine learning | 2011

PERTURBO: a new classification algorithm based on the spectrum perturbations of the Laplace-Beltrami operator

Nicolas Courty; Thomas Burger; Johann Laurent

PerTurbo, an original, non-parametric and efficient classification method is presented here. In our framework, the manifold of each class is characterized by its Laplace-Beltrami operator, which is evaluated with classical methods involving the graph Laplacian. The classification criterion is established thanks to a measure of the magnitude of the spectrum perturbation of this operator. The first experiments show good performances against classical algorithms of the state-of-the-art. Moreover, from this measure is derived an efficient policy to design sampling queries in a context of active learning. Performances collected over toy examples and real world datasets assess the qualities of this strategy.


neural information processing systems | 2017

Joint distribution optimal transportation for domain adaptation

Nicolas Courty; Rémi Flamary; Amaury Habrard; Alain Rakotomamonjy

This paper deals with the unsupervised domain adaptation problem, where one wants to estimate a prediction function


IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing | 2014

PerTurbo Manifold Learning Algorithm for Weakly Labeled Hyperspectral Image Classification

Laetitia Chapel; Thomas Burger; Nicolas Courty; Sébastien Lefèvre

f


signal processing and communications applications conference | 2013

Mitosis detection in breast cancer histological images with mathematical morphology

Erchan Aptoula; Nicolas Courty; Sébastien Lefèvre

in a given target domain without any labeled sample by exploiting the knowledge available from a source domain where labels are known. Our work makes the following assumption: there exists a non-linear transformation between the joint feature/label space distributions of the two domain


Machine Learning | 2018

Wasserstein discriminant analysis

Rémi Flamary; Marco Cuturi; Nicolas Courty; Alain Rakotomamonjy

mathcal{P}_s


IEEE Transactions on Geoscience and Remote Sensing | 2017

Sparse Hilbert Schmidt Independence Criterion and Surrogate-Kernel-Based Feature Selection for Hyperspectral Image Classification

Bharath Bhushan Damodaran; Nicolas Courty; Sébastien Lefèvre

and


international geoscience and remote sensing symposium | 2016

Unsupervised classifier selection approach for hyperspectral image classification

Bharath Bhushan Damodaran; Nicolas Courty; Sébastien Lefèvre

mathcal{P}_t

Collaboration


Dive into the Nicolas Courty's collaboration.

Top Co-Authors

Avatar

Rémi Flamary

Centre national de la recherche scientifique

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Bharath Bhushan Damodaran

Centre national de la recherche scientifique

View shared research outputs
Top Co-Authors

Avatar

Thomas Corpetti

Centre national de la recherche scientifique

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Cédric Févotte

Centre national de la recherche scientifique

View shared research outputs
Top Co-Authors

Avatar

Jimmy Vandel

Centre national de la recherche scientifique

View shared research outputs
Researchain Logo
Decentralizing Knowledge