Semi-supervised multi-output image manifold regression
Hui Wu, Scott Spurlock, et al.
ICIP 2017
We propose a sparse reconstruction method based on compressed sensing theory for aperture synthesis imaging. Our algorithm directly works on observational data without grid-ding. We achieve fast convergence by introducing an adaptive tolerance parameter based on the noise level and a thresholding value based on the cumulative sum of the power of the estimated source components. We demonstrate the accuracy in estimating the source positions and intensities in extremely low signal-to-noise (SNR) scenarios in Monte Carlo simulation. We could recover both point sources and extended sources with our algorithm using a Dirac basis from real data.
Hui Wu, Scott Spurlock, et al.
ICIP 2017
Paul Hurley, Ted Hurley
ISIT 2007
Robin Scheibler, Paul Hurley
SPIE Advanced Lithography 2012
Paul Hurley, Matthieu Simeoni
ICASSP 2017