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<Title>paper: Quantum Annealing Based Binary Compressive Sensing with Matrix Uncertainty</Title>
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    <h1>Quantum Annealing Based Binary Compressive Sensing with Matrix Uncertainty</h1>
    
    
    
    <div>Ramin Ayanzadeh, Seyedahmad Mousavi, Milton Halem and Tim Finin, <a href="https://ebiquity.umbc.edu/paper/html/id/845/Quantum-Annealing-Based-Binary-Compressive-Sensing-with-Matrix-Uncertainty" rel="nofollow external" class="bo">Quantum Annealing Based Binary Compressive Sensing with Matrix Uncertainty</a>, arXiv:1901.00088 [cs.IT], 1 January 2019.</div>
     
    
    
    
    
    
    <p><a href="https://en.wikipedia.org/wiki/Compressed_sensing" rel="nofollow external" class="bo">Compressive sensing</a> is a novel approach that linearly samples sparse or compressible signals at a rate much below the Nyquist-Shannon sampling rate and outperforms traditional signal processing techniques in acquiring and reconstructing such signals. Compressive sensing with matrix uncertainty is an extension of the standard compressive sensing problem that appears in various applications including but not limited to cognitive radio sensing, calibration of the antenna, and deconvolution. The original problem of compressive sensing is NP-hard so the traditional techniques, such as convex and nonconvex relaxations and greedy algorithms, apply stringent constraints on the measurement matrix to indirectly handle this problem in the realm of classical computing. </p>
    
    
    
    <p>We propose well-posed approaches for both binary compressive sensing and binary compressive sensing with matrix uncertainty problems that are tractable by <a href="https://en.wikipedia.org/wiki/Quantum_annealing" rel="nofollow external" class="bo">quantum annealers</a>. Our approach formulates an <a href="https://en.wikipedia.org/wiki/Ising_model" rel="nofollow external" class="bo">Ising model</a> whose ground state represents a sparse solution for the binary compressive sensing problem and then employs an alternating minimization scheme to tackle the binary compressive sensing with matrix uncertainty problem. This setting only requires the solution uniqueness of the considered problem to have a successful recovery process, and therefore the required conditions on the measurement matrix are notably looser. As a proof of concept, we can demonstrate the applicability of the proposed approach on the <a href="https://www.dwavesys.com/home" rel="nofollow external" class="bo">D-Wave</a> quantum annealers; however, we can adapt our method to employ other modern computing phenomena–like adiabatic quantum computers (in general), CMOS annealers, optical parametric oscillators, and neuromorphic computing.</p>
    
    
    <p>The post <a href="https://ebiquity.umbc.edu/blogger/2019/01/13/paper-quantum-annealing-based-binary-compressive-sensing-with-matrix-uncertainty/" rel="nofollow external" class="bo">paper: Quantum Annealing Based Binary Compressive Sensing with Matrix Uncertainty</a> appeared first on <a href="https://ebiquity.umbc.edu/blogger" rel="nofollow external" class="bo">UMBC ebiquity</a>.</p>
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<Summary>Quantum Annealing Based Binary Compressive Sensing with Matrix Uncertainty      Ramin Ayanzadeh, Seyedahmad Mousavi, Milton Halem and Tim Finin, Quantum Annealing Based Binary Compressive Sensing...</Summary>
<Website>https://ebiquity.umbc.edu/blogger/2019/01/13/paper-quantum-annealing-based-binary-compressive-sensing-with-matrix-uncertainty/</Website>
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<PostedAt>Sun, 13 Jan 2019 12:00:54 -0500</PostedAt>
<EditAt>Sun, 13 Jan 2019 12:00:54 -0500</EditAt>
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