A data-driven algorithm for offline pupil signal preprocessing and eyeblink detection in low-speed eye-tracking protocols
Event detection is the conversion of raw eye-tracking data into events—such as fixations, saccades, glissades, blinks, and so forth—that are relevant for researchers. In eye-tracking studies, event detection algorithms can have a serious impact on higher level analyses, although most studies do not...
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Veröffentlicht in: | Behavior Research Methods 2011-06, Vol.43 (2), p.372-383 |
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Zusammenfassung: | Event detection is the conversion of raw eye-tracking data into events—such as fixations, saccades, glissades, blinks, and so forth—that are relevant for researchers. In eye-tracking studies, event detection algorithms can have a serious impact on higher level analyses, although most studies do not accurately report their settings. We developed a data-driven eyeblink detection algorithm (Identification-Artifact Correction [I-AC]) for 50-Hz eye-tracking protocols. I-AC works by first correcting blink-related artifacts within pupil diameter values and then estimating blink onset and offset. Artifact correction is achieved with data-driven thresholds, and more reliable pupil data are output. Blink parameters are defined according to previous studies on blink-related visual suppression. Blink detection performance was tested with experimental data by visually checking the actual correspondence between I-AC output and participants’ eye images, recorded by the eyetracker simultaneously with gaze data. Results showed a 97% correct detection percentage. |
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ISSN: | 1554-3528 1554-351X 1554-3528 |
DOI: | 10.3758/s13428-010-0055-7 |