A Framework for Robust Driver Gaze Classification

2016-01-1426

4/5/2016

Authors
Abstract
Content
The challenge of developing a robust, real-time driver gaze classification system is that it has to handle difficult edge cases that arise in real-world driving conditions: extreme lighting variations, eyeglass reflections, sunglasses and other occlusions. We propose a single-camera end-toend framework for classifying driver gaze into a discrete set of regions. This framework includes data collection, semi-automated annotation, offline classifier training, and an online real-time image processing pipeline that classifies the gaze region of the driver. We evaluate an implementation of each component on various subsets of a large onroad dataset. The key insight of our work is that robust driver gaze classification in real-world conditions is best approached by leveraging the power of supervised learning to generalize over the edge cases present in large annotated on-road datasets.
Meta TagsDetails
DOI
https://doi.org/10.4271/2016-01-1426
Citation
Fridman, L., Lee, J., Reimer, B., and Mehler, B., "A Framework for Robust Driver Gaze Classification," SAE 2016 World Congress and Exhibition, Detroit, Michigan, United States, April 12, 2016, https://doi.org/10.4271/2016-01-1426.
Additional Details
Publisher
Published
4/5/2016
Product Code
2016-01-1426
Content Type
Technical Paper
Language
English