Title :
Sparsity-based composite detection tests. application to astrophysical hyperspectral data
Author :
Paris, Silvia ; Mary, David ; Ferrari, Andre ; Bourguignon, Sebastien
Author_Institution :
Univ. de Nice-Sophia Antipolis, Nice, France
fDate :
Aug. 29 2011-Sept. 2 2011
Abstract :
We propose an analysis of some connections existing between sparse estimation and detection tests. In addition to the Generalized Likelihood Ratio (GLR) and to the Bayes Factor, we consider two tests based on Maximum A Posteriori estimates of the sparse vector parameter. These detection tests are then set in order to take advantage of a redundant dictionary, and to account for instrument and noise characteristics specific to the MUSE integral field spectrograph, which will deliver astrophysical hyperspectral data. We use in this framework a specific representation dictionary, designed by finely discretising elementary spectral features (lines with various widths, steps, and continuum parameterisation). We show that the proposed detection strategy is efficient, and outperforms the GLR. Finally we present a possible improvement to this detection strategy, by exploiting spatial dependencies existing in the data cube.
Keywords :
Bayes methods; astronomical techniques; maximum likelihood estimation; Bayes factor; MUSE integral field spectrograph data; astrophysical hyperspectral data; continuum parameterisation; data cube; detection strategy; elementary spectral features; generalized likelihood ratio; maximum a posteriori estimates; noise characteristics; redundant dictionary; sparse vector parameter; sparsity-based composite detection tests; spatial dependencies; specific representation dictionary; Data models; Dictionaries; Estimation; Hyperspectral imaging; Instruments; Signal to noise ratio;
Conference_Titel :
Signal Processing Conference, 2011 19th European
Conference_Location :
Barcelona