Contrast statistics of the majority of natural images conform to a Weibull distribution. This property of natural images may facilitate efficient and very rapid
extraction of a scene's visual gist. Here we investigated whether a neural response model based on the Weibull contrast distribution captures visual information that
humans use to rapidly identify natural scenes. In a learning phase, we measured EEG activity of 32 subjects viewing brief flashes of 700 natural scenes. From
these neural measurements and the contrast statistics of the natural image stimuli, we derived an across subject Weibull response model. We used this model to predict
the EEG responses to 100 new natural scenes and estimated which scene the subject viewed by finding the best match between the model predictions and the
observed EEG responses. In almost 90 percent of the cases our model accurately predicted the observed scene. Moreover, in most failed cases, the scene mistaken
for the observed scene was visually similar to the observed scene itself. Similar results
were obtained in a separate experiment in which 16 other subjects where presented with artificial occlusion models of natural images. Together, these results suggest that Weibull contrast statistics of natural images contain a considerable amount of visual gist information to warrant rapid image identification.
@InProceedings{GhebreabNIPS2009,
author = "Ghebreab, S. and Scholte, H. S. and Lamme, V. A. F. and Smeulders, A. W. M.",
title = "A Biologically Plausible Model for Rapid Natural Scene Identification",
booktitle = "Advances in Neural Information Processing Systems",
pages = "1--9",
year = "2009",
url = "https://ivi.fnwi.uva.nl/isis/publications/2009/GhebreabNIPS2009",
pdf = "https://ivi.fnwi.uva.nl/isis/publications/2009/GhebreabNIPS2009/GhebreabNIPS2009.pdf",
has_image = 1
}