Title
Classification and filtering of spectra: A case study in mineralogy
Abstract
The ability to identify the mineral composition of rocks and soils is an important tool for the exploration of geological sites. Even though expert knowledge is commonly used for this task, it is desirable to create automated systems with similar or better performance. For instance, NASA intends to design robots that are sufficiently autonomous to perform this task on planetary missions. Spectrometer readings provide one important source of data for identifying sites with minerals of interest. Reflectance spectrometers measure intensities of light reflected from surfaces over a range of wavelengths. Spectral intensity patterns may in some cases be sufficiently distinctive for proper identification of minerals or classes of minerals. For some mineral classes, carbonates for example, specific short spectral intervals are known to carry a distinctive signature. Finding similar distinctive spectral ranges for other mineral classes is not an easy problem. We propose and evaluate data-driven techniques in two stages: first, evaluating algorithms to identify which components are probably present in a given rock; second, trying to improve this classification by automatically searching for spectral ranges optimized for specific classes of minerals. In one set of studies, we partition the whole interval of wavelengths available in our data into sub-intervals, or bins, and use a genetic algorithm to evaluate a candidate selection of subintervals. As an alternative to these computationally expensive search techniques, we present an entropy-based heuristic that gives higher scores for wavelengths more likely to distinguish between classes. Results are presented for four different classes, showing reasonable improvements in identifying some, but not all, of the mineral classes tested.
Year
Venue
Keywords
2002
Intell. Data Anal.
specific short spectral interval,automated system,spectral intensity pattern,specific class,mineral composition,mineral class,distinctive signature,similar distinctive spectral range,case study,important source,important tool,feature selection,filtering,genetic algorithm,classification
Field
DocType
Volume
Data mining,Feature selection,Computer science,Artificial intelligence,Genetic algorithm,Heuristic,Pattern recognition,Spectrometer,Filter (signal processing),Spectral line,Robot,Reflectivity,Machine learning
Journal
6
Issue
Citations 
PageRank 
6
0
0.34
References 
Authors
8
5
Name
Order
Citations
PageRank
Jonathan Moody100.34
Ricardo Bezerra de Andrade e Silva210924.56
Joseph Vanderwaart321.19
Joseph Ramsey400.34
Clark Glymour546882.20