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Detection tests for worst-case scenarios with optimized dictionaries. Applications to hyperspectral data

This Ph.D dissertation deals with a "one among many" detection problem, where one has to discriminate between pure noise under H0 and one among L known alternatives under H1. This work focuses on the study and implementation of robust reduced dimension detection tests using optimized dictionaries. These detection methods are associated with the Generalized Likelihood Ratio test. The proposed approaches are principally assessed on hyperspectral data. In the first part, several technical topics associated to the framework of this dissertation are presented. The second part highlights the theoretical and algorithmic aspects of the proposed methods. Two issues linked to the large number of alternatives arise in this framework. In this context, we propose dictionary learning techniques based on a robust criterion that seeks to minimize the maximum power loss (type minimax). In the case where the learned dictionary has K = 1 column, we show that the exact solution can be obtained. Then, we propose in the case K > 1 three minimax learning algorithms. Finally, the third part of this manuscript presents several applications. The principal application regards astrophysical hyperspectral data of the Multi Unit Spectroscopic Explorer instrument. Numerical results show that the proposed algorithms are robust and in the case K > 1 they allow to increase the minimax detection performances over the K = 1 case. Other possible applications such as worst-case recognition of faces and handwritten digits are presented.

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