Title :
Quantitative estimation of SiO2 content in igneous rocks using thermal infrared spectra with a neural network approach
Author :
Ninomiya, Yoshiki
Author_Institution :
Geol. Survey of Japan, Tsukuba, Japan
fDate :
5/1/1995 12:00:00 AM
Abstract :
Develops a method for estimating the SiO2 content of igneous rocks using thermal infrared reflectance spectra, aiming to utilize it in the remote sensing of thermal spectral emission. Silicate minerals, which are the major components of the Earth´s surface, display their strongest fundamental molecular vibration bands in the thermal infrared region (8-12 μm). The wavelengths of these so-called “reststrahlen bands” are systematically related to the SiO 2 content of rocks. Pattern matching (using a back-propagating neural network approach) between simulated remotely sensed data and the SiO2 content was performed. This approach was evaluated by comparing the spectrally estimated SiO2 content with the chemically determined SiO2 content for a separate set of rock samples. The estimated error between the spectrally estimated and chemically determined SiO2 contents for most samples was within 7%. Future multiband satellite sensors of the Earth´s thermal emission will have much higher spectral and spatial resolution than existing ones, and should be able to detect these spectral trends
Keywords :
backpropagation; feedforward neural nets; geochemistry; geophysical techniques; geophysics computing; infrared imaging; infrared spectra; infrared spectroscopy; remote sensing; rocks; spectrochemical analysis; spectroscopy computing; 8 to 12 mum; IR spectra; SiO2; backpropagating neural network; chemical composition; far infrared; geochemistry; geologic method; geophysical measurement technique; igneous rock; multispectral method; neural net; pattern matching; petrochemistry; quantitative estimation; reflectance spectra; remote sensing; reststrahlen band; silica; spectrochemical analysis; thermal infrared spectra; thermal spectral emission; Chemicals; Displays; Earth; Infrared spectra; Minerals; Neural networks; Pattern matching; Reflectivity; Remote sensing; Satellites;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on