We search for the best possible transmission for an external occulter coronagraph that is dedicated to the direct observation of terrestrial exoplanets. We show that better observation conditions are obtained when the flux in the focal plane is minimized in the zone in which the exoplanet is observed, instead of the total flux received by the...
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July 17, 2014 (v1)Journal articleUploaded on: March 25, 2023
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2019 (v1)Journal article
—The recent breakthroughs in the fields of computer sciences and engineering slowly stir the world towards a more connected environment. This consequence leads to an overgrowing amount of collected data flowing from different types of devices. While it is still possible to process the incoming informations in a centralized manner, it is often...
Uploaded on: February 28, 2023 -
2012 (v1)Journal article
We propose a principled framework for learning with infinitely many features, situations that are usually induced by continuously parametrized feature extraction methods. Such cases occur for instance when considering Gabor-based features in computer vision problems or when dealing with Fourier features for kernel approximations. We cast the...
Uploaded on: December 3, 2022 -
June 22, 2016 (v1)Journal article
In this paper, we study the effect of different regularizers and their implications in high dimensional image classification and sparse linear unmixing. Although kernelization or sparse methods are globally accepted solutions for processing data in high dimensions, we present here a study on the impact of the form of regularization used and its...
Uploaded on: February 28, 2023 -
May 4, 2014 (v1)Conference paper
The use of non-convex sparse regularization has attracted much interest when estimating a very sparse model on high dimensional data. In this work we express the optimality conditions of the optimization problem for a large class of non-convex regularizers. From those conditions, we derive an efficient active set strategy that avoids the...
Uploaded on: March 25, 2023 -
January 2015 (v1)Journal article
International audience
Uploaded on: March 25, 2023 -
July 1, 2016 (v1)Publication
This chapter aims at providing an introduction to numerical optimizationwith some applications in astronomy and astrophysics. We provide important preliminary definitions that will guide the reader towards differentoptimization procedures. We discuss three families of optimizationproblems and describe numerical algorithms allowing, when this...
Uploaded on: February 28, 2023 -
December 13, 2015 (v1)Conference paper
As the number of samples and dimensionality of optimization problems related to statistics an machine learning explode, block coordinate descent algorithms have gained popularity since they reduce the original problem to several smaller ones. Coordinates to be optimized are usually selected randomly according to a given probability...
Uploaded on: February 28, 2023 -
September 2014 (v1)Conference paper
Hyperspectral images have a strong potential for landcover/landuse classification, since the spectra of the pixels can highlight subtle differences between materials and provide information beyond the visible spectrum. Yet, a limitation of most current approaches is the hypothesis of spatial independence between samples: images are spatially...
Uploaded on: March 25, 2023 -
September 2014 (v1)Conference paper
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...
Uploaded on: March 25, 2023 -
October 20, 2015 (v1)Report
The objectives of this technical report is to provide additional results on the generalized conditional gradient methods introduced by Bredies et al. [BLM05]. Indeed , when the objective function is smooth, we provide a novel certificate of optimality and we show that the algorithm has a linear convergence rate. Applications of this algorithm...
Uploaded on: March 25, 2023 -
July 29, 2016 (v1)Book section
This chapter introduces statistical learning and its applications to brain-computer interfaces (BCIs). It presents the general principles of supervised learning and discusses the difficulties raised by its implementation, with a particular focus on aspects related to selecting sensors and multisubject learning. The chapter also describes how a...
Uploaded on: December 4, 2022 -
April 30, 2018 (v1)Conference paper
The Wasserstein distance received a lot of attention recently in the community of machine learning, especially for its principled way of comparing distributions. It has found numerous applications in several hard problems, such as domain adaptation, dimensionality reduction or generative models. However, its use is still limited by a heavy...
Uploaded on: December 4, 2022