Raman spectroscopy and pattern recognition techniques are used to develop a
potential method to characterize wood by type. The test data consists of 9
8 Raman spectra of temperate softwoods and hardwoods, and Brazilian and Hon
duran tropical woods. A genetic algorithm (GA) is used to extract features
(i.e., line intensities at specific wavelengths) characteristic of the Rama
n profile of each wood-type. The spectral features identified by the patter
n recognition GA allow the wood samples to cluster by type in a plot of the
two largest principal components of the data. Because principal components
maximize variance, the bulk of the information encoded by these spectral f
eatures is about differences between wood types. The predictive ability of
the descriptors identified by the pattern recognition GA and the principal
component map associated with them is validated using an external predictio
n set consisting of tropical woods and temperate hard and softwoods.