Pure State Tomography with Fourier Transformation
- URL: http://arxiv.org/abs/2008.09079v4
- Date: Thu, 23 Jun 2022 04:22:08 GMT
- Title: Pure State Tomography with Fourier Transformation
- Authors: Yu Wang, Keren Li
- Abstract summary: Two adaptive protocols are proposed, with their respective quantum circuits.
Experiments on the IBM 5-qubit quantum computer, as well as numerical investigations, demonstrate the feasibility of the proposed protocols.
- Score: 3.469001874498102
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Extracting information from quantum devices has long been a crucial problem
in the field of quantum mechanics. By performing elaborate measurements,
quantum state tomography, an important and fundamental tool in quantum science
and technology, can be used to determine unknown quantum states completely. In
this study, we explore methods to determine multi-qubit pure quantum states
uniquely and directly. Two adaptive protocols are proposed, with their
respective quantum circuits. Herein, two or three observables are sufficient,
while the number of measurement outcomes is either the same as or fewer than
those in existing methods. Additionally, experiments on the IBM 5-qubit quantum
computer, as well as numerical investigations, demonstrate the feasibility of
the proposed protocols.
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