2011
DOI: 10.1109/twc.2011.040411.101118
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A Sparsity-Aware Approach for NBI Estimation in MIMO-OFDM

Abstract: Abstract-In this paper, we present a novel approach based on compressive sensing theory to estimate and mitigate asynchronous narrow-band interference (NBI) in orthogonal frequency division multiplexing systems with multiple transmit and/or multiple receive antennas. We consider the practical scenarios where one or multiple asynchronous NBI signals experience fast fading and/or frequency-selective fading channels. Furthermore, we propose a novel technique for estimating the desired signal's channel in the pres… Show more

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Cited by 74 publications
(29 citation statements)
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“…As a result, we can exploit this sparse signal structure with ISLs to design recovery algorithms that outperform the conventional CS recovery algorithms in [6], [7], [8], [9]. The above system model covers many interesting application scenarios in wireless communications [11] and other fields involving CS signal processing [3], [5].…”
Section: System Modelmentioning
confidence: 99%
“…As a result, we can exploit this sparse signal structure with ISLs to design recovery algorithms that outperform the conventional CS recovery algorithms in [6], [7], [8], [9]. The above system model covers many interesting application scenarios in wireless communications [11] and other fields involving CS signal processing [3], [5].…”
Section: System Modelmentioning
confidence: 99%
“…All the signals we employ in the following study have a length of N = 1024. We let the sparsity level be S = N 20 in our simulation 3 . We calculate the Fréchet mean from the randomly sampled signal of different SNs with λ 1 = .…”
Section: Algorithm 2 Precognition Matching Pursuit (Pmp)mentioning
confidence: 99%
“…Compressive sensing (CS) is a new sampling paradigm, which leverages the compressibility of signals to reduce the number of samples required for reconstruction and have been applied to a wide range of applications [1]- [3]. Using the CS technique as the data acquisition approach in WSNs can significantly reduce the energy consumed in the process of sampling and transmission through the network, and also lower the wireless bandwidth requirements for communication.…”
Section: Introductionmentioning
confidence: 99%
“…Assuming knowledge 1 of Λ and, hence,Λ at the receiver, we multiply Y by W such that WΛ = 0. To 1 Channel estimation is investigated in [14] this end, W is designed to be the projection matrix on the left null-subspace ofΛ as follows 2…”
Section: Compressive Sensing Backgroundmentioning
confidence: 99%
“…This technique is labelled as "with estimating α" in Section VII. In [14], we use another technique to deal with asynchronous jammers, viz. we use receiver windowing to spectrally contain the jammer.…”
Section: B Asynchronous Jammermentioning
confidence: 99%