This document discusses using hidden Markov models (HMMs) for unsupervised learning in hyperspectral image classification. It proposes an HMM-based probability density function classifier that models hyperspectral data using a reduced feature space. The approach uses an unsupervised learning scheme for maximum likelihood parameter estimation, combining both model selection and estimation. This HMM method can accurately model and synthesize approximate observations of true hyperspectral data in a reduced feature space without relying on supervised learning.