Detection noise bias and variance in the power spectrum and bispectrum in optical interferometry
J. A. Gordon, D. F. Buscher

TL;DR
This paper develops a formalism for bias-free estimation of the power spectrum and bispectrum in optical interferometry, accounting for complex noise sources and uneven sampling, improving detection of faint companions like exoplanets.
Contribution
It introduces a method based on noise distribution moments to derive bias-free estimators applicable under less restrictive conditions than previous approaches.
Findings
Derived formulae for bias-free estimators of power spectrum and bispectrum.
Simulated interferograms demonstrating effects of noise biases.
Showed importance of bias correction in detecting faint companions.
Abstract
Long-baseline optical interferometry uses the power spectrum and bispectrum constructs as fundamental observables. Noise arising in the detection of the fringe pattern gives rise to both variance and biases in the power spectrum and bispectrum. Previous work on correcting the biases and estimating the variances for these quantities typically includes restrictive assumptions about the sampling of the interferogram and/or about the relative importance of Poisson and Gaussian noise sources. Until now it has been difficult to accurately compensate for systematic biases in data which violates these assumptions. We seek a formalism to allow the construction of bias-free estimators of the bispectrum and power spectrum, and to estimate their variances, under less restrictive conditions which include both unevenly-sampled data and measurements affected by a combination of noise sources with…
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