| Literature DB >> 25595505 |
Jukka-Pekka Kauppi1, Melih Kandemir2, Veli-Matti Saarinen3, Lotta Hirvenkari4, Lauri Parkkonen5, Arto Klami6, Riitta Hari7, Samuel Kaski8.
Abstract
We hypothesize that brain activity can be used to control future information retrieval systems. To this end, we conducted a feasibility study on predicting the relevance of visual objects from brain activity. We analyze both magnetoencephalographic (MEG) and gaze signals from nine subjects who were viewing image collages, a subset of which was relevant to a predetermined task. We report three findings: i) the relevance of an image a subject looks at can be decoded from MEG signals with performance significantly better than chance, ii) fusion of gaze-based and MEG-based classifiers significantly improves the prediction performance compared to using either signal alone, and iii) non-linear classification of the MEG signals using Gaussian process classifiers outperforms linear classification. These findings break new ground for building brain-activity-based interactive image retrieval systems, as well as for systems utilizing feedback both from brain activity and eye movements.Keywords: Bayesian classification; Gaussian processes; Gaze signal; Image relevance; Implicit relevance feedback; Information retrieval; Magnetoencephalography
Mesh:
Year: 2015 PMID: 25595505 DOI: 10.1016/j.neuroimage.2014.12.079
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556