Literature DB >> 29766396

A novel evaluation of two related and two independent algorithms for eye movement classification during reading.

Lee Friedman1, Ioannis Rigas2, Evgeny Abdulin2, Oleg V Komogortsev2.   

Abstract

Nystrӧm and Holmqvist have published a method for the classification of eye movements during reading (ONH) (Nyström & Holmqvist, 2010). When we applied this algorithm to our data, the results were not satisfactory, so we modified the algorithm (now the MNH) to better classify our data. The changes included: (1) reducing the amount of signal filtering, (2) excluding a new type of noise, (3) removing several adaptive thresholds and replacing them with fixed thresholds, (4) changing the way that the start and end of each saccade was determined, (5) employing a new algorithm for detecting PSOs, and (6) allowing a fixation period to either begin or end with noise. A new method for the evaluation of classification algorithms is presented. It was designed to provide comprehensive feedback to an algorithm developer, in a time-efficient manner, about the types and numbers of classification errors that an algorithm produces. This evaluation was conducted by three expert raters independently, across 20 randomly chosen recordings, each classified by both algorithms. The MNH made many fewer errors in determining when saccades start and end, and it also detected some fixations and saccades that the ONH did not. The MNH fails to detect very small saccades. We also evaluated two additional algorithms: the EyeLink Parser and a more current, machine-learning-based algorithm. The EyeLink Parser tended to find more saccades that ended too early than did the other methods, and we found numerous problems with the output of the machine-learning-based algorithm.

Keywords:  Classification; Comparison; Evaluation; Eye movement

Mesh:

Year:  2018        PMID: 29766396     DOI: 10.3758/s13428-018-1050-7

Source DB:  PubMed          Journal:  Behav Res Methods        ISSN: 1554-351X


  7 in total

1.  REMoDNaV: robust eye-movement classification for dynamic stimulation.

Authors:  Asim H Dar; Adina S Wagner; Michael Hanke
Journal:  Behav Res Methods       Date:  2021-02

2.  Evaluating Eye Movement Event Detection: A Review of the State of the Art.

Authors:  Mikhail Startsev; Raimondas Zemblys
Journal:  Behav Res Methods       Date:  2022-06-17

3.  Eye movements during text reading align with the rate of speech production.

Authors:  Benjamin Gagl; Klara Gregorova; Julius Golch; Stefan Hawelka; Jona Sassenhagen; Alessandro Tavano; David Poeppel; Christian J Fiebach
Journal:  Nat Hum Behav       Date:  2021-12-06

4.  Why Temporal Persistence of Biometric Features, as Assessed by the Intraclass Correlation Coefficient, Is So Valuable for Classification Performance.

Authors:  Lee Friedman; Hal S Stern; Larry R Price; Oleg V Komogortsev
Journal:  Sensors (Basel)       Date:  2020-08-14       Impact factor: 3.576

5.  MAD saccade: statistically robust saccade threshold estimation via the median absolute deviation.

Authors:  Benjamin Voloh; Marcus R Watson; Seth König; Thilo Womelsdorf
Journal:  J Eye Mov Res       Date:  2020-05-12       Impact factor: 0.957

6.  An Effective Gaze-Based Authentication Method with the Spatiotemporal Feature of Eye Movement.

Authors:  Jinghui Yin; Jiande Sun; Jing Li; Ke Liu
Journal:  Sensors (Basel)       Date:  2022-04-14       Impact factor: 3.847

7.  GazeBase, a large-scale, multi-stimulus, longitudinal eye movement dataset.

Authors:  Henry Griffith; Dillon Lohr; Evgeny Abdulin; Oleg Komogortsev
Journal:  Sci Data       Date:  2021-07-16       Impact factor: 6.444

  7 in total

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