TY - GEN
T1 - Rule-based learning for eye movement type detection
AU - Fuhl, Wolfgang
AU - Castner, Nora
AU - Kasneci, Enkelejda
N1 - Publisher Copyright:
© 2018 Association for Computing Machinery.
PY - 2018/10/16
Y1 - 2018/10/16
N2 - Eye movements hold information about human perception, intention, and cognitive state. Various algorithms have been proposed to identify and distinguish eye movements, particularly fixations, saccades, and smooth pursuits. A major drawback of existing algorithms is that they rely on accurate and constant sampling rates, error free recordings, and impend straightforward adaptation to new movements, such as microsaccades, since they are designed for certain eye movement detection. We propose a novel rule-based machine learning approach to create detectors on annotated or simulated data. It is capable of learning diverse types of eye movements as well as automatically detecting pupil detection errors in the raw gaze data. Additionally, our approach is capable of using any sampling rate, even with fluctuations. Our approach consists of learning several interdependent thresholds and previous type classifications and combines them into sets of detectors automatically. We evaluated our approach against the state-of-the-art algorithms on publicly available datasets. Our approach is integrated in the newest version of EyeTrace which can be downloaded at http://www.ti.uni-tuebingen.de/Eyetrace.1751.0.html.
AB - Eye movements hold information about human perception, intention, and cognitive state. Various algorithms have been proposed to identify and distinguish eye movements, particularly fixations, saccades, and smooth pursuits. A major drawback of existing algorithms is that they rely on accurate and constant sampling rates, error free recordings, and impend straightforward adaptation to new movements, such as microsaccades, since they are designed for certain eye movement detection. We propose a novel rule-based machine learning approach to create detectors on annotated or simulated data. It is capable of learning diverse types of eye movements as well as automatically detecting pupil detection errors in the raw gaze data. Additionally, our approach is capable of using any sampling rate, even with fluctuations. Our approach consists of learning several interdependent thresholds and previous type classifications and combines them into sets of detectors automatically. We evaluated our approach against the state-of-the-art algorithms on publicly available datasets. Our approach is integrated in the newest version of EyeTrace which can be downloaded at http://www.ti.uni-tuebingen.de/Eyetrace.1751.0.html.
KW - Eye movements
KW - Eye tracking
KW - Fixation
KW - Machine learning
KW - Post saccadic movements
KW - Saccade
KW - Smooth pursuit
UR - http://www.scopus.com/inward/record.url?scp=85058289467&partnerID=8YFLogxK
U2 - 10.1145/3279810.3279844
DO - 10.1145/3279810.3279844
M3 - Conference contribution
AN - SCOPUS:85058289467
T3 - Proceedings of the Workshop on Modeling Cognitive Processes from Multimodal Data, MCPMD 2018
BT - Proceedings of the Workshop on Modeling Cognitive Processes from Multimodal Data, MCPMD 2018
PB - Association for Computing Machinery, Inc
T2 - 2018 Workshop on Modeling Cognitive Processes from Multimodal Data, MCPMD 2018
Y2 - 16 October 2018
ER -