Concepedia

Publication | Open Access

Robust Control of Varying Weak Hyperspectral Target Detection With Sparse Nonnegative Representation

13

Citations

27

References

2017

Year

Abstract

In this study, a multiple-comparison approach is developed for detecting faint hyperspectral sources. The detection method relies on a sparse and nonnegative representation on a highly coherent dictionary to track a spatially varying source. A robust control of the detection errors is ensured by learning the test statistic distributions on the data. The resulting control is based on the false discovery rate, to take into account the large number of pixels to be tested. This method is applied to data recently recorded by the three-dimensional spectrograph MultiUnit Spectrograph Explorer (MUSE).

References

YearCitations

Page 1