Experimental adaptive quantum state tomography based on rank-preserving
transformations
- URL: http://arxiv.org/abs/2008.01691v1
- Date: Tue, 4 Aug 2020 16:49:03 GMT
- Title: Experimental adaptive quantum state tomography based on rank-preserving
transformations
- Authors: A. D. Moiseevskiy, G. I. Struchalin, S. S. Straupe and S. P. Kulik
- Abstract summary: Quantum tomography is a process of quantum state reconstruction using data from multiple measurements.
One of the recently proposed methods of quantum tomography is the algorithm based on rank-preserving transformations.
We present numerical and experimental comparisons of rank-preserving tomography with another adaptive method.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum tomography is a process of quantum state reconstruction using data
from multiple measurements. An essential goal for a quantum tomography
algorithm is to find measurements that will maximize the useful information
about an unknown quantum state obtained through measurements. One of the
recently proposed methods of quantum tomography is the algorithm based on
rank-preserving transformations. The main idea is to transform a basic
measurement set in a way to provide a situation that is equivalent to measuring
the maximally mixed state. As long as tomography of a fully mixed state has the
fastest convergence comparing to other states, this method is expected to be
highly accurate. We present numerical and experimental comparisons of
rank-preserving tomography with another adaptive method, which includes
measurements in the estimator eigenbasis and with random-basis tomography. We
also study ways to improve the efficiency of the rank-preserving
transformations method using transformation unitary freedom and measurement set
complementation.
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