科技报告详细信息
Comparison of Two Gas Selection Methodologies: An Application of Bayesian Model Averaging
Renholds, Andrea S. ; Thompson, Sandra E. ; Anderson, Kevin K. ; Chilton, Lawrence K.
Pacific Northwest National Laboratory (U.S.)
关键词: 99 General And Miscellaneous//Mathematics, Computing, And Information Science;    Spectra An Application Of Bayesian Model Averaging;    An Application Of Bayesian Model Averaging;    Gases;    Detection;   
DOI  :  10.2172/1023740
RP-ID  :  PNNL-15749
RP-ID  :  AC05-76RL01830
RP-ID  :  1023740
美国|英语
来源: UNT Digital Library
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【 摘 要 】

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 materials. For many cases, BMA and SR performed the detection task comparably in terms of the receiver operating characteristic curves. For some gases, BMA performed better than SR when the size and complexity of the search library increased. This is encouraging because we expect improved BMA performance upon incorporation of prior information on background materials and gases.

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