Bernoulli sensing matrix for compressed sensing using matlab

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I am trying to implement compressed sensing in matlab, also trying different types of sensing matrix (Gaussian, Bernoulli, Fourier), and I have problems implementing -+1 Bernoulli random matrix as a sensing matrix, I am generating it as follows:
p=0.5;
A=(rand(M,256)<p);
A=A*2-1;
where M is
M => C*K*log(N/K)
N is the vector length, K is the non-zero coefficients, is that correct?
  1 Comment
Walter Roberson
Walter Roberson on 7 Oct 2015
Your M does not appear to be restricted to non-negative integers, which would be required to use as the number of rows for rand()

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