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FixaTons

A collection of Human FixationsDatasets and Metrics for Scanpath Similarity

Citations

If you intend to use this collection of datasets on your research, please cite the technical report

and also, all the correspondent pubblications for the dataset included:

Authors of compatible datasets are encouraged to add them to this collection. Simply send an email to the corresponding author of this report along with an authorization to redistribute that data. Below, the list of datasets currently added to the collection.

Download FixaTons

Structure of FixaTons


  • FixaTons

    • DATASET_NAME

      • STIMULI : contains original images. They can have different file format (jpg, jpeg, png,...)

      • SCANPATHS : contains one folder for each image

        • IMAGE_ID : it contains one file for each scanpath of that image scanpaths are matrices rows of this matrices describe fixations each fixation is of the form : [x-pixel, inverted-y-pixel, initial time, final time] Times are in seconds.
      • FIXATION_MAPS : contains a fixation map of each original image they are matrices of zeros (NON-fixated pixels) and 255's (fixated pixels). They can have different file format (jpg, jpeg, png,...)

      • SALIENCY_MAPS : contains saliency maps of each original image they are generated from human data. They can have different file format (jpg, jpeg, png,...)


Implemented metrics for saliency maps and scanpaths evaluation

  • Metrics for saliency prediction task:
    • AUC_Judd (Area Under the ROC Curve, Judd version)
    • AUC_shuffled
    • KLdiv
    • NSS (Normalized Scanpath Saliency)
    • InfoGain
  • Metrics for scanpaths prediction task:
    • euclidean_distance
    • string_edit_distance
    • scaled_time_delay_embedding_distance
    • string-based time-delay embeddings
    • Recurrence Quantification Analysis (RQA)
    • ScanMatch
    • MultiMatch

How to use FixaTons (with python)

For an easy use of the dataset, python software is provided. This tools help you in different tasks:

- List information
- Get data (matrices)
- Visualize data
- Compute metrics
- Compute statistics

For some example codes, please refer to the correspondent report or Tutorial.ipynb (jupiter notebook) https://github.com/dariozanca/FixaTons/blob/master/Tutorial.ipynb.