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arxiv: 0812.4323 · v2 · submitted 2008-12-23 · 🪐 quant-ph

Quantum Process Tomography via L1-norm Minimization

classification 🪐 quant-ph
keywords l1-normminimizationprocessquantumsparsetomographyexistingmethods
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For an initially well designed but imperfect quantum information system, the process matrix is almost sparse in an appropriate basis. Existing theory and associated computational methods (L1-norm minimization) for reconstructing sparse signals establish conditions under which the sparse signal can be perfectly reconstructed from a very limited number of measurements (resources). Although a direct extension to quantum process tomography of the L1-norm minimization theory has not yet emerged, the numerical examples presented here, which apply L1-norm minimization to quantum process tomography, show a significant reduction in resources to achieve a desired estimation accuracy over existing methods.

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