科技报告详细信息
Large Spectral Library Problem
Chilton, Lawrence K. ; Walsh, Stephen J.
Pacific Northwest National Laboratory (U.S.)
关键词: Information Retrieval;    Information Systems;    Identification Systems;    Spectra;    99 General And Miscellaneous//Mathematics, Computing, And Information Science;   
DOI  :  10.2172/963240
RP-ID  :  PNNL-17810
RP-ID  :  AC05-76RL01830
RP-ID  :  963240
美国|英语
来源: UNT Digital Library
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【 摘 要 】
Hyperspectral imaging produces a spectrum or vector at each image pixel. These spectra can be used to identify materials present in the image. In some cases, spectral libraries representing atmospheric chemicals or ground materials are available. The challenge is to determine if any of the library chemicals or materials exist in the hyperspectral image. The number of spectra in these libraries can be very large, far exceeding the number of spectral channels collected in the ¯eld. Suppose an image pixel contains a mixture of p spectra from the library. Is it possible to uniquely identify these p spectra? We address this question in this paper and refer to it as the Large Spectral Library (LSL) problem. We show how to determine if unique identi¯cation is possible for any given library. We also show that if p is small compared to the number of spectral channels, it is very likely that unique identi¯cation is possible. We show that unique identi¯cation becomes less likely as p increases.
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