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Authors' implementation for "Designing Constrained Projections for Compressed Sensing: Mean Errors and Anomalies with Coherence", IEEE GlobalSIP 2018

Home Page: https://prieuredesion.github.io/constrained-projections/

MATLAB 69.25% C 8.41% Makefile 0.20% HTML 20.12% CSS 2.01%
statistical-learning compressed-sensing sparsity-optimization

constrained-projections's Introduction

Designing Constrained Projections for Compressed Sensing: Mean Errors and Anomalies with Coherence

Dhruv Shah ([email protected]), Alankar Kotwal and Ajit Rajwade


Sample results using the proposed algorithm

This repository contains the authors' implementation for the paper "Designing Constrained Projections for Compressed Sensing: Mean Errors and Anomalies with Coherence" submitted to IEEE Global Conference on Signal and Information Processing 2018.

  • coherence-opt/: Our implementation of average coherence-based projection design, described in section 3 of the paper.
  • datasets/: Test natural images drawn from the Berkeley Segmentation Data Set (BSDS500) and the INRIA Holidays Data Set for testing the algorithms and generating results. These images were not a part of the training data.
  • designed-matrices/: Sample matrices designed using the various algorithms discussed in the paper provided for use.
  • gmm-train/: Unoptimized implementation sourced from MATLAB File Exchange, courtesy Mo Chen (downloaded 2018-01-19). A sample GMM trained on natural image patches from BSDS500 can be found as gmm-train/results/trained_model_25.mat.
  • misc/: Miscellaneous files useful for reconstruction and file handling. This includes original implementations of l1-magic, SPGL1, our implementation of the piecewise-linear decoder and other scripts.
  • mmse-opt/: Our implementation of the MMSE-based projection design algorithm proposed in section 4.3 of the paper.
  • results/: Compare different reconstruction methods (and matrices) and visualize results. Results from the paper can be replicated using the scripts provided.

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