Computer Science – Information Theory
Scientific paper
2010-04-24
O. Taheri and S.A. Vorobyov, "Segmented compressed sampling for analog-to-information conversion: Method and performance analy
Computer Science
Information Theory
32 pages, 5 figures, submitted to the IEEE Transactions on Signal Processing in April 2010
Scientific paper
A new segmented compressed sampling method for analog-to-information conversion (AIC) is proposed. An analog signal measured by a number of parallel branches of mixers and integrators (BMIs), each characterized by a specific random sampling waveform, is first segmented in time into $M$ segments. Then the sub-samples collected on different segments and different BMIs are reused so that a larger number of samples than the number of BMIs is collected. This technique is shown to be equivalent to extending the measurement matrix, which consists of the BMI sampling waveforms, by adding new rows without actually increasing the number of BMIs. We prove that the extended measurement matrix satisfies the restricted isometry property with overwhelming probability if the original measurement matrix of BMI sampling waveforms satisfies it. We also show that the signal recovery performance can be improved significantly if our segmented AIC is used for sampling instead of the conventional AIC. Simulation results verify the effectiveness of the proposed segmented compressed sampling method and the validity of our theoretical studies.
Taheri Omid
Vorobyov Sergiy A.
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