Demixing structured superposition signals from periodic and aperiodic nonlinear observations.

IEEE Global Conference on Signal and Information Processing(2017)

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摘要
We consider the demixing problem of two (or more) structured high-dimensional vectors from a limited number of nonlinear observations where this nonlinearity is due to either a periodic or an aperiodic function. We study certain families of structured superposition models, and propose a method which provably recovers the components given (nearly) m = O(s) samples where s denotes the sparsity level of the underlying components. This strictly improves upon previous nonlinear demixing techniques and asymptotically matches the best possible sample complexity. We also provide a range of simulations to illustrate the performance of the proposed algorithms.
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关键词
aperiodic function,aperiodic nonlinear observations,superposition signals,nonlinear demixing techniques
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