Evaluating the efficacy of sonification for signal detection in univariate, evenly sampled light curves using astronify

Author:

Tucker Brown J1,Harrison C M1ORCID,Zanella A2ORCID,Trayford J3

Affiliation:

1. School of Mathematics, Statistics and Physics, Newcastle University , NE1 7RU, Newcastle, UK

2. Istituto Nazionale di Astrofisica , Vicolo dell’Osservatorio 5, I-35122 Padova, Italy

3. Institute of Cosmology and Gravitation, University of Portsmouth , Dennis Sciama Building, Burnaby Road, Portsmouth PO1 3FX, UK

Abstract

ABSTRACT Sonification is the technique of representing data with sound, with potential applications in astronomy research for aiding discovery and accessibility. Several astronomy-focused sonification tools have been developed; however, efficacy testing is extremely limited. We performed testing of astronify, a prototype tool for sonification functionality within the Barbara A. Mikulski Archive for Space Telescopes. We created synthetic light curves containing zero, one, or two transit-like signals with a range of signal-to-noise ratios (SNRs = 3–100) and applied the default mapping of brightness to pitch. We performed remote testing, asking participants to count signals when presented with light curves as a sonification, visual plot, or combination of both. We obtained 192 responses, of which 118 self-classified as experts in astronomy and data analysis. For high SNRs (=30 and 100), experts and non-experts performed well with sonified data (85–100 per cent successful signal counting). At low SNRs (=3 and 5), both groups were consistent with guessing with sonifications. At medium SNRs (=7 and 10), experts performed no better than non-experts with sonifications but significantly better (factor of ∼2–3) with visuals. We infer that sonification training, like that experienced by experts for visual data inspection, will be important if this sonification method is to be useful for moderate SNR signal detection within astronomical archives and broader research. None the less, we show that even a very simple, and non-optimized, sonification approach allows users to identify high SNR signals. A more optimized approach, for which we present ideas, would likely yield higher success for lower SNR signals.

Funder

CMH

United Kingdom Research and Innovation

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

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