19 research outputs found
Efficient tomography with unknown detectors
We compare the two main techniques used for estimating the state of a
physical system from unknown measurements: standard detector tomography and
data-pattern tomography. Adopting linear inversion as a fair benchmark, we show
that the difference between these two protocols can be traced back to the
nonexistence of the reverse-order law for pseudoinverses. We capitalize on this
fact to identify regimes where the data-pattern approach outperforms the
standard one and vice versa. We corroborate these conclusions with numerical
simulations of relevant examples of quantum state tomography.Comment: 13 pages, 6 figures. Submitted for publication. Comments most
welcome
Experimental violation of a Bell-like inequality with optical vortex beams
Optical beams with topological singularities have a Schmidt decomposition.
Hence, they display features typically associated with bipartite quantum
systems; in particular, these classical beams can exhibit entanglement. This
classical entanglement can be quantified by a Bell inequality formulated in
terms of Wigner functions. We experimentally demonstrate the violation of this
inequality for Laguerre-Gauss (LG) beams and confirm that the violation
increases with increasing orbital angular momentum. Our measurements yield
negativity of the Wigner function at the origin for \LG_{10} beams, whereas
for \LG_{20} we always get a positive value.Comment: 6 pages, 4 eps-color figures. Comments welcome
Time-Multiplexed Measurements of Nonclassical Light at Telecom Wavelengths
We report the experimental reconstruction of the statistical properties of an
ultrafast pulsed type-II parametric down conversion source in a periodically
poled KTP waveguide at telecom wavelengths, with almost perfect photon-number
correlations. We used a photon-number-resolving time-multiplexed detector based
on a fiber-optical setup and a pair of avalanche photodiodes. By resorting to a
germane data-pattern tomography, we assess the properties of the nonclassical
light states states with unprecedented precision.Comment: 4.5 pages, 5 color figues. Comments welcome
Neural-network quantum state tomography
We revisit the application of neural networks techniques to quantum state
tomography. We confirm that the positivity constraint can be successfully
implemented with trained networks that convert outputs from standard
feed-forward neural networks to valid descriptions of quantum states. Any
standard neural-network architecture can be adapted with our method. Our
results open possibilities to use state-of-the-art deep-learning methods for
quantum state reconstruction under various types of noise.Comment: 8 pages, 4 color figures. Comments are most welcom
Efficient algorithm for optimizing data pattern tomography
We give a detailed account of an efficient search algorithm for the data
pattern tomography proposed by J. Rehacek, D. Mogilevtsev, and Z. Hradil [Phys.
Rev. Lett.~\textbf{105}, 010402 (2010)], where the quantum state of a system is
reconstructed without a priori knowledge about the measuring setup. The method
is especially suited for experiments involving complex detectors, which are
difficult to calibrate and characterize. We illustrate the approach with the
case study of the homodyne detection of a nonclassical photon state.Comment: 5 pages, 5 eps-color figure
Enhancing axial localization with wavefront control
Enhancing the ability to resolve axial details is crucial in
three-dimensional optical imaging. We provide experimental evidence showcasing
the ultimate precision achievable in axial localization using vortex beams. For
Laguerre-Gauss (LG) beams, this remarkable limit can be attained with just a
single intensity scan. This proof-of-principle demonstrates that microscopy
techniques based on LG vortex beams can potentially benefit from the introduced
quantum-inspired superresolution protocol.Comment: 10 pages, 6 figures. Comments welcom