Conference Proceedings
Optimal visual search based on a model of target detectability in natural images
Shima Rashidi, Krista Ehinger, Andrew Turpin, Lars Kulik, Hugo Larochelle (ed.), Marc'Aurelio Ranzato (ed.), R Hadsel (ed.), MF Balcan (ed.), H Lin (ed.)
Advances in Neural Information Processing Systems 33 | MIT Press | Published : 2020
Abstract
To analyse visual systems, the concept of an ideal observer promises an optimal response for a given task. Bayesian ideal observers can provide optimal responses under uncertainty, if they are given the true distributions as input. In visual search tasks, prior studies have used signal to noise ratio (SNR) or psychophysics experiments to set the distributional parameters for simple targets on backgrounds with known patterns, however these methods do not easily translate to complex targets on natural scenes. Here, we develop a model of target detectability in natural images to estimate the parameters of target-present and target-absent distributions for a visual search task. We present a nove..
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Awarded by Australian Research Council
Funding Acknowledgements
This research was undertaken using the LIEF HPC-GPGPU Facility hosted at the University of Melbourne. This Facility was established with the assistance of ARC LIEF Grant LE170100200 [49].