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Stability of Efficient Deterministic Compressed Sensing for Images with Chirps and Reed-Muller Sequences

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DOI: 10.4236/am.2013.41A029    2,873 Downloads   5,048 Views   Citations

ABSTRACT

We explore the stability of image reconstruction algorithms under deterministic compressed sensing. Recently, we have proposed [1-3] deterministic compressed sensing algorithms for 2D images. These algorithms are suitable when Daubechies wavelets are used as the sparsifying basis. In the initial work, we have shown that the algorithms perform well for images with sparse wavelets coefficients. In this work, we address the question of robustness and stability of the algorithms, specifically, if the image is not sparse and/or if noise is present. We show that our algorithms perform very well in the presence of a certain degree of noise. This is especially important for MRI and other real world applications where some level of noise is always present.

Conflicts of Interest

The authors declare no conflicts of interest.

Cite this paper

S. Datta, K. Ni, P. Mahanti and S. Roudenko, "Stability of Efficient Deterministic Compressed Sensing for Images with Chirps and Reed-Muller Sequences," Applied Mathematics, Vol. 4 No. 1A, 2013, pp. 183-196. doi: 10.4236/am.2013.41A029.

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