Fully Adaptive Bayesian Algorithm for Data Analysis. FABADA

Sánchez-Alarcón, Pablo M.; Ascasibar, Yago
Bibliographical reference

Highlights of Spanish Astrophysics XI

Advertised on:
5
2023
Number of authors
2
IAC number of authors
1
Citations
0
Refereed citations
0
Description
The discovery potential from astronomical and other data is limited by their noise. We introduce a novel non-parametric noise reduction technique based on Bayesian inference, \fabada, that automatically improves the signal-to-noise ratio of one- and two-dimensional data, such as astronomical images and spectra. The algorithm iteratively evaluates possible smoothed versions of the data, the smooth models, estimating the underlying signal that is statistically compatible with the noisy measurements. Iterations stop based on the evidence and the $\chi^2$ statistic of the last smooth model. We then compute the expected value of the signal as a weighted average of the whole set of smooth models. We evaluate its performance in terms of the peak signal to noise ratio using a battery of real astronomical observations. Our Fully Adaptive Bayesian Algorithm for Data Analysis (\fabada) yields results that, without any parameter tuning, are comparable to standard image processing algorithms whose parameters have been optimized based on the true signal to be recovered, something that is impossible in a real application. On the other hand, state-of-the-art non-parametric methods, such as BM3D, offer a slightly better performance at high signal-to-noise ratio, while our algorithm is significantly more accurate for extremely noisy data, a situation usually encountered in astronomy. The source code of the implementation of the method, is publicly available at https://github.com/PabloMSanAla/fabadaN