Title :
Detection algorithms for hyperspectral imaging applications
Author :
Manolakis, Dimitris ; Shaw, Gary
Author_Institution :
Lincoln Lab., MIT, Lexington, MA, USA
fDate :
1/1/2002 12:00:00 AM
Abstract :
We introduce key concepts and issues including the effects of atmospheric propagation upon the data, spectral variability, mixed pixels, and the distinction between classification and detection algorithms. Detection algorithms for full pixel targets are developed using the likelihood ratio approach. Subpixel target detection, which is more challenging due to background interference, is pursued using both statistical and subspace models for the description of spectral variability. Finally, we provide some results which illustrate the performance of some detection algorithms using real hyperspectral imaging (HSI) data. Furthermore, we illustrate the potential deviation of HSI data from normality and point to some distributions that may serve in the development of algorithms with better or more robust performance. We therefore focus on detection algorithms that assume multivariate normal distribution models for HSI data
Keywords :
image processing; interference (signal); normal distribution; object detection; remote sensing; spectral analysis; adaptive algorithms; atmospheric propagation; background interference; classification algorithms; detection algorithms; hyperspectral imaging; hyperspectral remote sensing; likelihood ratio; mixed pixels; multivariate normal distribution models; spectral variability; statistical models; subpixel target detection; subspace models; Atmosphere; Chemical sensors; Composite materials; Detection algorithms; Hyperspectral imaging; Laboratories; Reflectivity; Remote sensing; Sensor phenomena and characterization; Signal processing algorithms;
Journal_Title :
Signal Processing Magazine, IEEE