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Compressive Sensing Using Low Density Frames

Publication ,  Journal Article
Akçakaya, M; Park, J; Tarokh, V
March 3, 2009

We consider the compressive sensing of a sparse or compressible signal ${\bf x} \in {\mathbb R}^M$. We explicitly construct a class of measurement matrices, referred to as the low density frames, and develop decoding algorithms that produce an accurate estimate $\hat{\bf x}$ even in the presence of additive noise. Low density frames are sparse matrices and have small storage requirements. Our decoding algorithms for these frames have $O(M)$ complexity. Simulation results are provided, demonstrating that our approach significantly outperforms state-of-the-art recovery algorithms for numerous cases of interest. In particular, for Gaussian sparse signals and Gaussian noise, we are within 2 dB range of the theoretical lower bound in most cases.

Duke Scholars

Publication Date

March 3, 2009
 

Citation

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Akçakaya, M., Park, J., & Tarokh, V. (2009). Compressive Sensing Using Low Density Frames.
Akçakaya, Mehmet, Jinsoo Park, and Vahid Tarokh. “Compressive Sensing Using Low Density Frames,” March 3, 2009.
Akçakaya M, Park J, Tarokh V. Compressive Sensing Using Low Density Frames. 2009 Mar 3;
Akçakaya, Mehmet, et al. Compressive Sensing Using Low Density Frames. Mar. 2009.
Akçakaya M, Park J, Tarokh V. Compressive Sensing Using Low Density Frames. 2009 Mar 3;

Publication Date

March 3, 2009