Super-resolution of partially coherent bosonic sources
- URL: http://arxiv.org/abs/2510.04818v1
- Date: Mon, 06 Oct 2025 14:00:15 GMT
- Title: Super-resolution of partially coherent bosonic sources
- Authors: Joaquín López-Suárez, Michalis Skotiniotis,
- Abstract summary: We show that the separation of the two sources can be super-resolved over the entire range of all other pertinent parameters.<n>Within the same limit, we show that the imaging problem can be effectively reduced to one where all relevant parameters are encoded in the Bloch vector of a two-dimensional system.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We consider the problem of imaging two partially coherent sources and derive the ultimate quantum limits for estimating all relevant parameters, namely their separation, relative intensity, as well as their coherence factor. We show that the separation of the two sources can be super-resolved over the entire range of all other pertinent parameters (with the exception of fully coherent sources), with anti-correlated sources furnishing the largest possible gain in estimation precision, using a binary spatial mode demultiplexing measurement positioned at the center of intensity of the joint point spread function for the two sources. In the sub-Rayleigh limit, we show that both the relative intensity, as well as the real part of the coherence factor, can be optimally estimated by a simple boson counting measurement, making it possible to optimally estimate the separation, relative intensity and real coherence factor of the sources simultaneously. Within the same limit, we show that the imaging problem can be effectively reduced to one where all relevant parameters are encoded in the Bloch vector of a two-dimensional system. Using such a model we find that indirect estimation schemes, which attempt to extract estimates of the separation of the two sources by measuring the purity of the corresponding state of the two-level system, yield suboptimal estimation precision for all non-zero values of the coherence factor.
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