Skip to content

HariprasanthMS/GazeCapture

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Towards Hardware-Agnostic Gaze-Trackers

Enhanced iTracker Architecture

Figure 1: Enhanced iTracker Architecture

Introduction

This is the official repository for the code, models and datasets associated with the 2020 ArXiv paper, “Towards Hardware-Agnostic Gaze-Trackers”.

We express our sincere thanks to Krakfa, Khosla, Kellnhofer et al – authors of the 2016 CVPR paper, "Eye Tracking for Everyone" – who contributed the iTracker architecture and GazeCapture dataset to the entire research community. Their dataset is by far one of the biggest and most diverse publicly available data for constrained gaze-tracking on portable devices and their work on the iTracker architecture is an inspiration to this work. We reproduced the iTracker network architecture using Python as a baseline to our incremental enhancements and utilized the original GazeCapture dataset along with its restructured variant GazeCapture* for the proposed experiments in the paper. If you are interested in the original iTracker paper and GazeCapture dataset please refer to their paper and project website as mentioned above.

We propose a series of incremental enhancements over the iTracker architecture to reduce the overall RMSError. We do not employ any calibration or device-specific fine-tuning during evaluation. Data Augmentation is only used during the training phase and not for test phase. As a part of our experiments, we relax the uniform data distribution constraint in the GazeCapture dataset by allowing subjects who did not look at the full set of points for evaluation and explore its impact on performance.

How to use:

Dataset preparation

  1. Download the GazeCapture dataset.

  2. Extract the files (including the sub-archives) to a folder Source directory. The resulting structure should be something like this:

Source
\--00002
    \--frames
    \--appleFace.json
    \--appleLeftEye.json
    \--appleRightEye.json
    \--dotInfo.json
    \--faceGrid.json
    \--frames.json
    \--info.json
    \--motion.json
    \--screen.json
\--00003
...
  1. Please clone this repository and switch to milestones/dataPrep branch.

  2. Run ROI Detection Task to generate metadata. ROI Detection Task is only needed when a new landmark detection algorithm is evaluated. Valid DetectionTypes are circa, dlib and rc. For the original circa detection, this step won't perform any action and therefore should be skipped. Syntax:

python taskCreator.py --task 'ROIDetectionTask' --input <SourceDirectoryPath> --output <MetadataDirectoryPath> --type <DetectionType>

For other DetectionTypes the resulting structure should be something like this:

Metadata
\--00002
    \--dlibFace.json
    \--dlibLeftEye.json
    \--dlibRightEye.json
\--00003
...
  1. Run ROI Extraction Task to generate processed dataset. This step uses either the landmarks and data-split distribution to prepare training and evaluation dataset. Syntax:
python taskCreator.py --task 'ROIExtractionTask' --input <SourceDirectoryPath> --metapath <MetadataDirectoryPath> --output <DestinationDirectoryPath> --type <DetectionType>

Valid DetectionTypes are circa, dlib and rc. For the circa detection, you should skip the metapath field. The resulting structure should be something like this:

Destination
\---00002
    \---appleFace
        \---00000.jpg
        ...
    \---appleLeftEye
        ...
    \---appleRightEye
        ...
\---00003
...
\---metadata.mat

To try a new custom distribution, you could create a data distribution json file with directoryName : SplitName entries in a dict() object and use the follwing syntax:

python taskCreator.py --task 'ROIExtractionTask' --input <SourceDirectoryPath> --metapath <MetadataDirectoryPath> --output <DestinationDirectoryPath> --type <DetectionType> --info <DistributionInfoFilePath>

For example, to use GazeCapture* distribution (which utilized a 70-20-10 split ratio) you should use GazeCaptureStar_distribution_info.json file.

Using the models

The paper “Towards Hardware-Agnostic Gaze-Trackers” lists muliple incremental enhancements in Table 2. Please choose an appropriate branch based upon the Experimental Variant that you want to try. For example, if you want to try Experiment 14, switch to milestones/14 using command git checkout milestones/14, go inside the directory which contains the main.py file and use the default settings with appropriate path to the data as listed below-

Training

python main.py --data_path <DestinationDirectoryPath> --local_rank <deviceId> --reset

--reset is used to start training from scratch and build a model. If you want to resume training from an existing model checkpoint run the command without it.

Validation

python main.py --data_path <DestinationDirectoryPath> --local_rank <deviceId> --validate

Testing

python main.py --data_path <DestinationDirectoryPath> --local_rank <deviceId> --test

Arguments

Frequently used args:
--local_rank  : gpu id {0 to max_gpus-1}
--batch_size  : batch size (e.g. 64, 100, 128, 256)
--data_path   : directory path to the data (i.e. DestinationPath)
--base_lr     : lower bound on learning rate (e.g. 1E-7)
--max_lr      : upper bound on learning rate (e.g. 1E-2)
--reset       : starts from a new untrained model
--epochs      : maximum number of training epochs (e.g. 30)

Dockerization

If you prefer running the experiments in a sandbox environment, you could use the Dockerfile to build an image and then run experiments in a container. Code dependencies are listed in requirements.txt and Dockefile uses this file to build an image. To build an image please run:

sudo docker build -t gazepy .

Once the image is built successfully, go inside the pytorch directory to use the training commands. Alternatively, you can use the gazepy docker image to run your experiments in a sandbox environment. In this case, use the following syntax -

sudo docker run -P --runtime=nvidia --ipc=host --gpus all -v /data:/data -v $(pwd):$(pwd) -v /var/run/docker.sock:/var/run/docker.sock -w $(pwd) --rm -it gazepy main.py --data_path [Source Path] --reset

History

Any necessary changes to the dataset will be documented here.

  • October 2020: ArXiv announcement of “Towards Hardware-Agnostic Gaze-Trackers” and release of updated instructions.
  • January 2019: A dataset preprocessing code for an easier deployment. A conversion to pytorch 0.4.1.
  • March 2018: Original code release.

Terms

Usage of the original GazeCapture dataset (including all data, models, and code) is subject to the associated license, found in LICENSE.md. The license permits the use of released code, dataset and models for research purposes only. We also ask that you cite the associated paper if you make use of the GazeCapture dataset; following is the BibTeX entry:

@inproceedings{cvpr2016_gazecapture,
Author = {Kyle Krafka and Aditya Khosla and Petr Kellnhofer and Harini Kannan and Suchendra Bhandarkar and Wojciech Matusik and Antonio Torralba},
Title = {Eye Tracking for Everyone},
Year = {2016},
Booktitle = {IEEE Conference on Computer Vision and Pattern Recognition (CVPR)}
}

If you use the Enhanced iTracker architecture or any other work presented in the paper “Towards Hardware-Agnostic Gaze-Trackers” then please cite the paper following the BibTeX entry:

@misc{sharma2020,
      title={Towards Hardware-Agnostic Gaze-Trackers},
      author={Jatin Sharma and Jon Campbell and Pete Ansell and Jay Beavers and Christopher O'Dowd},
      year={2020},
      eprint={2010.05123},
      archivePrefix={arXiv},
      primaryClass={cs.AI},
      url = {https://arxiv.org/abs/2010.05123}
}

Contact

Please email any questions or comments concerning the paper “Towards Hardware-Agnostic Gaze-Trackers” to the authors.

About

Eye Tracking for Everyone

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 80.6%
  • Python 19.4%