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arXiv:1405.0237 [cs.IT]AbstractReferencesReviewsResources

An RIP-based approach to $ΣΔ$ quantization for compressed sensing

Joe-Mei Feng, Felix Krahmer

Published 2014-05-01Version 1

In this paper, we provide a new approach to estimating the error of reconstruction from $\Sigma\Delta$ quantized compressed sensing measurements. Our method is based on the restricted isometry property (RIP) of a certain projection of the measurement matrix. Our result yields simple proofs and a slight generalization of the best-known reconstruction error bounds for Gaussian and subgaussian measurement matrices.

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