MultiMediate: Multi-modal Group Behaviour Analysis for Artificial Mediation

Prediction of Search Targets From Fixations in Open-world Settings

Hosnieh Sattar, Sabine Müller, Mario Fritz, Andreas Bulling

Proc. IEEE Conference on Computer Vision and Pattern Recognition (CVPR), pp. 981-990, 2015.


Abstract

Previous work on predicting the target of visual search from human fixations only considered closed-world settings in which training labels are available and predictions are performed for a known set of potential targets. In this work we go beyond the state of the art by studying search target prediction in an open-world setting in which we no longer assume that we have fixation data to train for the search targets. We present a dataset containing fixation data of 18 users searching for natural images from three image categories within synthesised image collages of about 80 images. In a closed-world baseline experiment we show that we can predict the correct target image out of a candidate set of five images. We then present a new problem formulation for search target prediction in the open-world setting that is based on learning compatibilities between fixations and potential targets.

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BibTeX

@inproceedings{sattar15_cvpr, author = {Sattar, Hosnieh and M{\"{u}}ller, Sabine and Fritz, Mario and Bulling, Andreas}, title = {Prediction of Search Targets From Fixations in Open-world Settings}, booktitle = {Proc. IEEE Conference on Computer Vision and Pattern Recognition (CVPR)}, year = {2015}, pages = {981-990}, doi = {10.1109/CVPR.2015.7298700} }