Published October 28, 2019 | Version 1.0
Dataset Open

Headcam: Cylindrical Panoramic Video Dataset for Unsupervised Learning of Depth and Ego-Motion

  • 1. Naval Research Laboratory
  • 2. California Polytechnic State University

Description

This dataset contains panoramic video captured from a helmet-mounted camera while riding a bike through suburban Northern Virginia.  We used the videos to evaluate an unsupervised learning method for depth and ego-motion estimation, as described in our paper:

Alisha Sharma and Jonathan Ventura.  "Unsupervised Learning of Depth and Ego-Motion from Cylindrical Panoramic Video."  Proceedings of the 2019 IEEE Artificial Intelligence & Virtual Reality Conference, San Diego, CA, 2019.

If you make use of this dataset, please cite this paper.

 

The videos are stored as .mkv video files encoded using lossless H.264.  To extract the images, we recommend using ffmpeg:

mkdir 2018-10-03 ;

ffmpeg -i 2018-10-03.mkv -q:v 1 2018-10-03/%05d.png ;

Associated code can be found in our GitHub repository.  

Notes

This material is based upon work supported by the National Science Foundation under Grant Nos. 1659788 and 1464420. This work was performed as part of an REU program at the University of Colorado Colorado Springs.

Files

Files (44.8 GB)

Name Size Download all
md5:0c03605d8837060738792e827e4c55ec
22.6 GB Download
md5:bf98d77ad25ed190cd1406358693153e
9.4 GB Download
md5:6ff178dcfc13473713d4366cbe1b7e98
12.8 GB Download

Additional details

Funding

CRII: RI: High-Speed Vision-Based Motion Estimation 1464420
National Science Foundation