Skip to content

NeuroFan/Compressive_Sensing_C_and_MATLAB

Repository files navigation

Three well-known Sparse Recovery Algorithms implemented in C/C++ and MATLAB:

  I. Orthogonal Matching Pursuit ( OMP ),
  II. Iterative Hard Thresholding ( IHT ),  
  III. Approximage Message Passing ( AMP )  

Notice AMP needs intitial coefficients that were taken from Baranuik's work (detail in the code). Further the C code contains all subroutins that includes: QR decompostion, Gausian elimination, bubble-sort, back-substitution, etc. Matrix multipications, correlation computations SNR, MSE

Introduction

Excerpts are from our paper [1].

  OMP is a greedy algorithm introduced as an extension to the well-established 
  Matching Pursuit algorithm. The OMP algorithm iteratively finds the best matrix
  columns that correspond to the non-zero coefficients of the sparse  signal, and then
  performs a least squares (LS) optimization in the subspace formed from current and 
  previously selected columns. AMP and the IHT algorithms do not require LS in each 
  iteration, and instead perform simple vector truncation, which results in an 
  iterative completion of the sparse signal. The parameters, such as step  size and 
  threshold, are critical in the performance of AMP and IHT algorithms. The optimum
  parameters of AMP are chosen based on the experimental results of . In the case of
  the IHT algorithm, a different flavor of algorithm called Normalized-IHT was 
  implemented, where the step size is automatically determined in each iteration.

Results

  For fair comparison of the algorithms, one must take into consideration the window
  length of the signal, the sparsity degree of the test signal, the hyperparameters
  of the algorithms, such as termination criteria and desired reconstruction quality.
  From Fig. 4 [following figure], we observed that the OMP algorithm is fastest in
  reconstruction, whereas the AMP and IHT algorithms that are known to be computationally
  cheaper, appear to be slower. 

alt text

  This is due to the low sparsity degree and short signal length. The OMP algorithm gives
  better performance for less sparse signals [27], and here the experiments were done
  with signals with less than 10% occupancy. The IHT algorithm’s performance is relatively
  independent from the sparsity degree, and the performance of   AMP is less sensitive to
  sparsity degree than the  OMP,. These issues are rather strong practical arguments for
  flexible designs. 

Citation

If you used the code please cite our paper [1].

You can find the paper in this repository or through following link: https://github.com/NeuroFan/Compressive_Sensing/blob/master/An%20Embedded%20Programmable%20Processor%20for%20Compressive.pdf

Reference

[1] M. Safarpour, I. Hautala and O. Silvén, "An Embedded Programmable Processor for Compressive Sensing Applications," 2018 IEEE Nordic Circuits and Systems Conference (NORCAS): NORCHIP and International Symposium of System-on-Chip (SoC), Tallinn, Estonia, 2018, pp. 1-5.

doi: 10.1109/NORCHIP.2018.8573494

About

C and MATLAB implementation of CS recovery algorithm, i.e. Orthogonal Matching Pursuit, Approximate Message Passing, Iterative Hard Thresholding Algorithms

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published