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@@ -17,7 +17,7 @@ folder.
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We also provide the annotations from our algorithm as detected from the
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[sp\_tool](https://github.com/MikhailStartsev/sp_tool), which is based on
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Agtzidis et al. (2016), along with annotations from Berg et al. (2009) and Larsson et al.
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-(2015) in the corresponding folders starting with *output_*.
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+(2015) (our re-implementation of the latter is available on the http://michaeldorr.de/smoothpursuit/ page, or via this [link](http://michaeldorr.de/smoothpursuit/larsson_reimplementation.zip)) in the corresponding folders starting with *output_*.
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Finally, a collection of 45 hand annotated targets is provided in the
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[targets\_arff](https://web.gin.g-node.org/ioannis.agtzidis/gazecom_annotations/src/master/targets_arff)
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@@ -25,10 +25,17 @@ folder.
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# sp_tool
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-The implementation of our detection algorithm together with a wide variety of
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+The implementation of our clustering-based detection algorithm together with a wide variety of
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evaluation metrics for eye movement classification can be found
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[here](https://github.com/MikhailStartsev/sp_tool).
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+# Model performance comparison
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+A tentative evaluation table of sample-level model evaluation statistics for eye movement classification on GazeCom is available at http://michaeldorr.de/smoothpursuit/.
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+
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+For a more thorough evaluation (all eye movement classes; including event-level metrcis), plese refer to our later papers:
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+* [1D CNN with BLSTM for automated classification of fixations, saccades, and smooth pursuits](https://link.springer.com/article/10.3758/s13428-018-1144-2) (Startsev et al., 2019, Behavior Research Methods).
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+* [A novel gaze event detection metric that is not fooled by gaze-independent baselines](https://dl.acm.org/citation.cfm?id=3319836) (Startsev et al., 2019, ETRA)
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+
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## References
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Agtzidis, I., Startsev, M., & Dorr, M. (2016). Smooth pursuit detection
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