Learning Circulant Sensing Kernels

Abstract

In signal acquisition, Toeplitz and circulant matrices are widely used as sensing operators. They correspond to discrete convolutions and are easily or even naturally realized in various applications. For compressive sensing, recent work has used random Toeplitz and circulant sensing matrices and proved their efficiency in theory, by computer simulations, as well as through physical optical experiments. Motivated by recent work [8], we propose models to learn a circulant sensing matrix/operator for one and higher dimensional signals. Given the dictionary of the signal (s) to be sensed, the learned circulant sensing matrix/operator is more effective than a randomly generated circulant sensing matrix/operator, and even slightly so than a (non-circulant) Gaussian random sensing matrix. In addition, by exploiting the circulant structure, we improve the learning from the patch scale in [8] to the much large image scale. Furthermore, we test learning the circulant sensing matrix/operator and the nonparametric dictionary altogether and obtain even better performance. We demonstrate these results using both synthetic sparse signals and real images.

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Document Details

Document Type
Technical Report
Publication Date
Mar 01, 2014
Accession Number
ADA604171

Entities

People

  • Stanley Osher
  • Wotao Yin
  • Yangyang Xu

Organizations

  • Rice University

Tags

Communities of Interest

  • C4I

DTIC Thesaurus Topics

  • Acquisition
  • Algorithms
  • Applied Mathematics
  • Channel Estimation
  • Coding
  • Compressed Sensing
  • Convolution
  • Decoding
  • Dictionaries
  • Fast Fourier Transforms
  • Fourier Transformation
  • Learning
  • Mathematics
  • Optical Correlators
  • Probability
  • Simulations
  • Two Dimensional

Readers

  • Linear Algebra
  • Neural Network Machine Learning.
  • Sensor Fusion and Tracking Systems.