One goal of hyperspectral imagery analysis is the detection and characterization of plumes. Characterization includes identifying the gases in the plumes, which is a model selection problem. Two gas selection methods compared in this report are Bayesian model averaging (BMA) and minimum Akaike information criterion (AIC) stepwise regression (SR). Simulated spectral data from a three-layer radiance transfer model were used to compare the two methods. Test gases were chosen to span the types of spectra observed, which exhibit peaks ranging from broad to sharp. The size and complexity of the search libraries were varied. Background materials were chosen to either replicate a remote area of eastern Washington or feature many common background m...
Target detection in hyperspectral imagery is the process of locating pixels from an image which are ...
The problem of assigning a probability of matching a number of spectra is addressed. The context is ...
The standard methodology when building statistical models has been to use one of several algorithms ...
Typically a regression approach is applied in order to identify the gaseous constituents present in ...
Hyperspectral imaging is a remote sensing technique widely used in a variety of military and environ...
This paper presents a nonlinear Bayesian regression algorithm for detecting and estimating gas plume...
Identification of constituent gases in effluent plumes is performed using linear least-squares regre...
The detection and identification of weak gaseous plumes using thermal imaging data is complicated by...
The goal of this research was to develop an algorithm for identifying the constituent gases in stack...
Identification of constituent gases in effluent plumes is performed using linear least-squares regre...
Applications of hyperspectral imaging (HSI) to the quantitative and qualitative measurement of sampl...
Remote detection and identification of chemicals in a scene is a challenging problem. We introduce a...
Using a Fourier transform infrared field spectrometer, spectral infrared radiance measurements were ...
The ability to detect and identify effluent gases is, and will continue to be, of great importance. ...
Gas plumes detection, identification and concentration estimation by using hyperspectral sensors in ...
Target detection in hyperspectral imagery is the process of locating pixels from an image which are ...
The problem of assigning a probability of matching a number of spectra is addressed. The context is ...
The standard methodology when building statistical models has been to use one of several algorithms ...
Typically a regression approach is applied in order to identify the gaseous constituents present in ...
Hyperspectral imaging is a remote sensing technique widely used in a variety of military and environ...
This paper presents a nonlinear Bayesian regression algorithm for detecting and estimating gas plume...
Identification of constituent gases in effluent plumes is performed using linear least-squares regre...
The detection and identification of weak gaseous plumes using thermal imaging data is complicated by...
The goal of this research was to develop an algorithm for identifying the constituent gases in stack...
Identification of constituent gases in effluent plumes is performed using linear least-squares regre...
Applications of hyperspectral imaging (HSI) to the quantitative and qualitative measurement of sampl...
Remote detection and identification of chemicals in a scene is a challenging problem. We introduce a...
Using a Fourier transform infrared field spectrometer, spectral infrared radiance measurements were ...
The ability to detect and identify effluent gases is, and will continue to be, of great importance. ...
Gas plumes detection, identification and concentration estimation by using hyperspectral sensors in ...
Target detection in hyperspectral imagery is the process of locating pixels from an image which are ...
The problem of assigning a probability of matching a number of spectra is addressed. The context is ...
The standard methodology when building statistical models has been to use one of several algorithms ...