[PDF][PDF] Predicting When Eye Fixations Are Consistent.

A Volokitin, M Gygli, X Boix - AAAI Spring Symposia, 2017 - cdn.aaai.org
AAAI Spring Symposia, 2017cdn.aaai.org
Many computational models of visual attention use image features and machine learning
techniques to predict eye fixation locations as saliency maps. Recently, the success of Deep
Convolutional Neural Networks (DCNNs) for object recognition has opened a new avenue
for computational models of visual attention due to the tight link between visual attention and
object recognition. In this paper, we show that using features from DCNNs for object
recognition we can make predictions that enrich the information provided by saliency …
Abstract
Many computational models of visual attention use image features and machine learning techniques to predict eye fixation locations as saliency maps. Recently, the success of Deep Convolutional Neural Networks (DCNNs) for object recognition has opened a new avenue for computational models of visual attention due to the tight link between visual attention and object recognition. In this paper, we show that using features from DCNNs for object recognition we can make predictions that enrich the information provided by saliency models. Namely, the consistency of the eye fixations among subjects, ie the agreement between the eye fixation locations of different subjects, can be predicted.
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