2020
DOI: 10.1109/tmm.2019.2931400
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Design of Compressed Sensing System With Probability-Based Prior Information

Abstract: This paper deals with the design of a sensing matrix along with a sparse recovery algorithm by utilizing the probability-based prior information for compressed sensing system. With the knowledge of the probability for each atom of the dictionary being used, a diagonal weighted matrix is obtained and then the sensing matrix is designed by minimizing a weighted function such that the Gram of the equivalent dictionary is as close to the Gram of dictionary as possible. An analytical solution for the corresponding … Show more

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Cited by 20 publications
(13 citation statements)
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“…(16) makes the sparse coefficients totally associate with the measurements and the measure procedure (according to sensing matrix and dictionary ). Remark 2: It should be declared that (14) is the process concerning signal reconstruction, this is exactly the reason why we choose (16) to update sparse coefficients in the system design strategy. Make this updating procedure fully connected with the signal reconstruction, then utilize the obtained sparse coefficients to optimize sensing matrix and dictionary, so that and will be implicitly adapted to the reconstruction accuracy.…”
Section: B Measurement-driven Frameworkmentioning
confidence: 99%
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“…(16) makes the sparse coefficients totally associate with the measurements and the measure procedure (according to sensing matrix and dictionary ). Remark 2: It should be declared that (14) is the process concerning signal reconstruction, this is exactly the reason why we choose (16) to update sparse coefficients in the system design strategy. Make this updating procedure fully connected with the signal reconstruction, then utilize the obtained sparse coefficients to optimize sensing matrix and dictionary, so that and will be implicitly adapted to the reconstruction accuracy.…”
Section: B Measurement-driven Frameworkmentioning
confidence: 99%
“…should be included in the design model naturally. Once again, in our measurement-driven framework, the sparse coefficients are updated by (16), so 1 ( ) is just a cost function of , and S is viewed as a constant matrix when minimizing 1 ( ). This is totally different from the traditional dictionary learning problem (2).…”
Section: Simultaneous Sensing Matrix and Dictionary Optimizationmentioning
confidence: 99%
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