Universal Sparse Modeling

Abstract

Sparse data models, where data is assumed to be well represented as a linear combination of a few elements from a dictionary, have gained considerable attention in recent years, and their use has led to state-of-the-art results in many signal and image processing tasks. It is now well understood that the choice of the sparsity regularization term is critical in the success of such models. In this work, we use tools from information theory, and in particular universal coding theory, to propose a framework for designing sparsity regularization terms which have several theoretical and practical advantages when compared to the more standard `0 or `1 ones, and which lead to improved coding performance and accuracy in reconstruction and classification tasks. We also report on further improvements obtained by imposing low mutual coherence and Gram matrix norm on the corresponding learned dictionaries. The presentation of the framework and theoretical foundations is complemented with examples in image denoising and classification.

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Document Details

Document Type
Technical Report
Publication Date
Mar 01, 2010
Accession Number
ADA520463

Entities

People

  • Guillermo Sapiro
  • Ignacio Ramirez

Organizations

  • University of Minnesota

Tags

Communities of Interest

  • C4I
  • Materials and Manufacturing Processes

DTIC Thesaurus Topics

  • Accuracy
  • Algorithms
  • Bayesian Networks
  • Coding
  • Compressed Sensing
  • Computer Programming
  • Estimators
  • Image Processing
  • Information Theory
  • Method Of Moments
  • Physical Properties
  • Probability
  • Probability Density Functions
  • Probability Distributions
  • Random Variables
  • Signal Processing
  • Statistics

Fields of Study

  • Computer science

Readers

  • Computer Vision.
  • Systems Analysis and Design
  • Theoretical Analysis.