Skip to content

A curated list of papers on theoretical and practical aspects of drivers' attention used for paper "Attention for Vision-Based Assistive and Automated Driving: A Review of Algorithms and Datasets" and report on "Behavioral research and practical models of drivers' attention".

Notifications You must be signed in to change notification settings

mlab-upenn/attention_and_driving

 
 

Repository files navigation

Attention and driving

This is a repository holding information on papers related to attention and driving. The repository contains behavioral and practical papers published since 2010 where drivers' gaze allocation is explicitly measured (e.g. via an eye-tracker) or used in some relevant practical application.

Excluded from the list are:

  1. studies using modes of transportation other than cars (e.g. bicycles, motorcycles, trucks, buses, trains);
  2. studies that rely only on indirect methods to assess drivers' attention (e.g. ego-vehicle sensor information);
  3. studies that focused on drivers with medical issues or under the influence of alcohol or drugs;
  4. uncited papers over 5 years old.

Papers in the repository are grouped into behavioral, appliation (split into 5 application categories), datasets, and other (includes surveys and other relevant papers). For each paper listed we provide citation in bibtex format and tags. For application papers we provide information on what dataset they used (private if data was unpublished or link to public dataset(s)). For dataset papers we provide a short summary of the dataset and available annotations.

Contributing to this project

If you notice any errors or missing papers and code, please post an issue on this github.

Citation

If you used this repository in your research, please cite:

@article{kotseruba2022practical,
  title={Attention for Vision-Based Assistive and Automated Driving: A Review of Algorithms and Datasets},
  author={Kotseruba, Iuliia and Tsotsos, John K},
  journal={IEEE Transactions on Intelligent Transportation Systems},
  year={2022}
}

@article{kotseruba2021behavioral,
  title={Behavioral Research and Practical Models of Drivers' Attention},
  author={Kotseruba, Iuliia and Tsotsos, John K},
  journal={arXiv preprint arXiv:2104.05677},
  year={2021}
}

Acknowledgment

This work is inspired by the database of papers on vision-based action prediction created by Amir Rasouli.

About

A curated list of papers on theoretical and practical aspects of drivers' attention used for paper "Attention for Vision-Based Assistive and Automated Driving: A Review of Algorithms and Datasets" and report on "Behavioral research and practical models of drivers' attention".

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published