A Bayesian computational model for online character recognition and disability assessment during cursive eye writing
This research involves a novel apparatus, in which the user is presented with an illusion inducing visual stimulus. The user perceives illusory movement that can be followed by the eye, so that smooth pursuit eye movements can be sustained in arbitrary directions. Thus, free-flow trajectories of any...
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doaj-52dac9c9a0eb491dacc554ef279023ec2020-11-24T21:10:38ZengFrontiers Media S.A.Frontiers in Psychology1664-10782013-11-01410.3389/fpsyg.2013.0084360028A Bayesian computational model for online character recognition and disability assessment during cursive eye writingJulien eDiard0Vincent eRynik1Jean eLorenceau2Laboratoire de Psychologie et NeuroCognition CNRS UMR 5105Laboratoire de Psychologie et NeuroCognition CNRS UMR 5105Centre de Recherche de l’Institut du Cerveau et de la Moelle Epinière, CNRS UMR 7225, INSERM UMR S975This research involves a novel apparatus, in which the user is presented with an illusion inducing visual stimulus. The user perceives illusory movement that can be followed by the eye, so that smooth pursuit eye movements can be sustained in arbitrary directions. Thus, free-flow trajectories of any shape can be traced. In other words, coupled with an eye-tracking device, this apparatus enables "eye writing", which appears to be an original object of study. We adapt a previous model of reading and writing to this context. We describe a probabilistic model called the Bayesian Action-Perception for Eye On-Line model (BAP-EOL). It encodes probabilistic knowledge about isolated letter trajectories, their size, high-frequency components of the produced trajectory, and pupil diameter. We show how Bayesian inference, in this single model, can be used to solve several tasks, like letter recognition and novelty detection (i.e., recognizing when a presented character is not part of the learned database). We are interested in the potential use of the eye writing apparatus by motor impaired patients: the final task we solve by Bayesian inference is disability assessment (i.e., measuring and tracking the evolution of motor characteristics of produced trajectories). Preliminary experimental results are presented, which illustrate the method, showing the feasibility of character recognition in the context of eye writing. We then show experimentally how a model of the unknown character can be used to detect trajectories that are likely to be new symbols, and how disability assessment can be performed by opportunistically observing characteristics of fine motor control, as letter are being traced. Experimental analyses also help identify specificities of eye writing, as compared to handwriting, and the resulting technical challenges.http://journal.frontiersin.org/Journal/10.3389/fpsyg.2013.00843/fullBayesian modelingman-machine interactioncharacter recognitioneye writinggaze interaction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Julien eDiard Vincent eRynik Jean eLorenceau |
spellingShingle |
Julien eDiard Vincent eRynik Jean eLorenceau A Bayesian computational model for online character recognition and disability assessment during cursive eye writing Frontiers in Psychology Bayesian modeling man-machine interaction character recognition eye writing gaze interaction |
author_facet |
Julien eDiard Vincent eRynik Jean eLorenceau |
author_sort |
Julien eDiard |
title |
A Bayesian computational model for online character recognition and disability assessment during cursive eye writing |
title_short |
A Bayesian computational model for online character recognition and disability assessment during cursive eye writing |
title_full |
A Bayesian computational model for online character recognition and disability assessment during cursive eye writing |
title_fullStr |
A Bayesian computational model for online character recognition and disability assessment during cursive eye writing |
title_full_unstemmed |
A Bayesian computational model for online character recognition and disability assessment during cursive eye writing |
title_sort |
bayesian computational model for online character recognition and disability assessment during cursive eye writing |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Psychology |
issn |
1664-1078 |
publishDate |
2013-11-01 |
description |
This research involves a novel apparatus, in which the user is presented with an illusion inducing visual stimulus. The user perceives illusory movement that can be followed by the eye, so that smooth pursuit eye movements can be sustained in arbitrary directions. Thus, free-flow trajectories of any shape can be traced. In other words, coupled with an eye-tracking device, this apparatus enables "eye writing", which appears to be an original object of study. We adapt a previous model of reading and writing to this context. We describe a probabilistic model called the Bayesian Action-Perception for Eye On-Line model (BAP-EOL). It encodes probabilistic knowledge about isolated letter trajectories, their size, high-frequency components of the produced trajectory, and pupil diameter. We show how Bayesian inference, in this single model, can be used to solve several tasks, like letter recognition and novelty detection (i.e., recognizing when a presented character is not part of the learned database). We are interested in the potential use of the eye writing apparatus by motor impaired patients: the final task we solve by Bayesian inference is disability assessment (i.e., measuring and tracking the evolution of motor characteristics of produced trajectories). Preliminary experimental results are presented, which illustrate the method, showing the feasibility of character recognition in the context of eye writing. We then show experimentally how a model of the unknown character can be used to detect trajectories that are likely to be new symbols, and how disability assessment can be performed by opportunistically observing characteristics of fine motor control, as letter are being traced. Experimental analyses also help identify specificities of eye writing, as compared to handwriting, and the resulting technical challenges. |
topic |
Bayesian modeling man-machine interaction character recognition eye writing gaze interaction |
url |
http://journal.frontiersin.org/Journal/10.3389/fpsyg.2013.00843/full |
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