研究目的
Investigating the feasibility of using reflectance spectroscopy coupled with artificial intelligence for gem identification.
研究成果
Reflectance spectroscopy coupled to an ANN could serve as a useful tool to distinguish gems or imitations from different classes. However, identifications of gems from the same class yield relatively low recognition rate. This method is potentially economic and rapid for gem identification, but further investigation and training are needed.
研究不足
Discrimination between natural and treated gems of the same class is not as effective as discrimination of gems of different classes. Advanced identification needs further training and investigation.
1:Experimental Design and Method Selection:
Established an artificial neural network model consisting of standard multilayered, feed-forward, and back-propagation neural networks.
2:Sample Selection and Data Sources:
Obtained reflectance spectra of almandine, turquoise, almandine imitations (agate, plastic, and glass), and treated turquoise samples (dyed, impregnated, and Zachery treated) using an Analytical Spectral Devices spectrometer.
3:List of Experimental Equipment and Materials:
Used an ASD FieldSpec4 VNIR Hi-Res spectrometer for spectral measurements.
4:Experimental Procedures and Operational Workflow:
Measured reflectance spectra of samples, trained and tested the ANN model with the acquired spectra.
5:Data Analysis Methods:
Used the trained ANN model to discriminate between genuine and imitation gems, and between natural and treated gems.
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