Title :
Reservoir Computing for Prediction of the Spatially-Variant Point Spread Function
Author :
Weddell, Stephen J. ; Webb, Russell Y.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Canterbury, Christchurch
Abstract :
A new method is presented which provides prediction of the spatially variant point spread function for the restoration of astronomical images, distorted by atmospheric turbulence when viewed using ground-based telescopes. Our approach uses reservoir computing to firstly learn the spatio-temporal evolution of aberrations caused by turbulence, and secondly, predicts the space-varying point spread function (PSF) for application of widely-used deconvolution algorithms, resulting in the restoration of astronomical images. In this article, a reservoir-based, recurrent neural network is used to predict modal aberrations that comprise the spatially variant PSF over a wide field-of-view using a time-series ensemble from multiple reference beacons.
Keywords :
aberrations; adaptive optics; astronomical image processing; astronomical telescopes; atmospheric turbulence; deconvolution; image restoration; neural nets; optical transfer function; time series; aberrations; adaptive optics; astronomical images; atmospheric turbulence; deconvolution algorithms; field-of-view; ground-based telescopes; image restoration; modal aberrations; recurrent neural network; reservoir computing; spatially-variant point spread function; spatiotemporal evolution; time-series; Adaptive optics; Atmospheric measurements; Atmospheric waves; Extraterrestrial measurements; Image restoration; Optical distortion; Optical imaging; Optical sensors; Reservoirs; Signal restoration; Adaptive optics; reservoir computing; wavefront prediction;
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
DOI :
10.1109/JSTSP.2008.2004218