English

Predicting Driver Attention in Critical Situations

Computer Vision and Pattern Recognition 2018-12-06 v3

Abstract

Robust driver attention prediction for critical situations is a challenging computer vision problem, yet essential for autonomous driving. Because critical driving moments are so rare, collecting enough data for these situations is difficult with the conventional in-car data collection protocol---tracking eye movements during driving. Here, we first propose a new in-lab driver attention collection protocol and introduce a new driver attention dataset, Berkeley DeepDrive Attention (BDD-A) dataset, which is built upon braking event videos selected from a large-scale, crowd-sourced driving video dataset. We further propose Human Weighted Sampling (HWS) method, which uses human gaze behavior to identify crucial frames of a driving dataset and weights them heavily during model training. With our dataset and HWS, we built a driver attention prediction model that outperforms the state-of-the-art and demonstrates sophisticated behaviors, like attending to crossing pedestrians but not giving false alarms to pedestrians safely walking on the sidewalk. Its prediction results are nearly indistinguishable from ground-truth to humans. Although only being trained with our in-lab attention data, the model also predicts in-car driver attention data of routine driving with state-of-the-art accuracy. This result not only demonstrates the performance of our model but also proves the validity and usefulness of our dataset and data collection protocol.

Keywords

Cite

@article{arxiv.1711.06406,
  title  = {Predicting Driver Attention in Critical Situations},
  author = {Ye Xia and Danqing Zhang and Jinkyu Kim and Ken Nakayama and Karl Zipser and David Whitney},
  journal= {arXiv preprint arXiv:1711.06406},
  year   = {2018}
}

Comments

ACCV 2018

R2 v1 2026-06-22T22:48:59.660Z