2007-10-312007-10-312000-04-202002-10-30"A Hierarchical Wavelet-Based Framework for Pattern Analysis and Synthesis," <i>Masters Thesis,</i> 2000.https://hdl.handle.net/1911/20339Masters ThesisDespite their success in other areas of statsitical signal processing, current wavelet-based image models are inadequate for modeling patterns in images, due to the presence of unknown transformations inherent in most pattern observations. In this thesis we introduce a hierarchical wavelet-based framework for modeling patterns in digital images. This framework takes advantage of the efficient image representations afforded by wavelets, while accounting for unknown pattern transformations. Given a trained model, we can use this framework to synthesize pattern observations. If the model parameters are unknown, we can infer them from labeled training data using TEMPLAR, a novel template learning algorithm with linear complexity. TEMPLAR employs minimum description length (MDL) complexity regularization to learn a template with a sparse representation in the wavelet domain. If we are given several trained models for different patterns, our framework provides a low-dimensional subspace classifier that is invariant to unknown pattern transformations as well as background clutter.engWaveletspattern analysisMDLA Hierarchical Wavelet-Based Framework for Pattern Analysis and SynthesisThesisWaveletspattern analysisMDL