Driver Gaze Estimation in the Real World: Overcoming the Eyeglass Challenge

02/06/2020
by   Akshay Rangesh, et al.
7

A driver's gaze is critical for determining the driver's attention level, state, situational awareness, and readiness to take over control from partially and fully automated vehicles. Tracking both the head and eyes (pupils) can provide reliable estimation of a driver's gaze using face images under ideal conditions. However, the vehicular environment introduces a variety of challenges that are usually unaccounted for - harsh illumination, nighttime conditions, and reflective/dark eyeglasses. Unfortunately, relying on head pose alone under such conditions can prove to be unreliable owing to significant eye movements. In this study, we offer solutions to address these problems encountered in the real world. To solve issues with lighting, we demonstrate that using an infrared camera with suitable equalization and normalization usually suffices. To handle eyeglasses and their corresponding artifacts, we adopt the idea of image-to-image translation using generative adversarial networks (GANs) to pre-process images prior to gaze estimation. To this end, we propose the Gaze Preserving CycleGAN (GPCycleGAN). As the name suggests, this network preserves the driver's gaze while removing potential eyeglasses from infrared face images. GPCycleGAN is based on the well-known CycleGAN approach, with the addition of a gaze classifier and a gaze consistency loss for additional supervision. Our approach exhibits improved performance and robustness on challenging real-world data spanning 13 subjects and a variety of driving conditions.

READ FULL TEXT

page 1

page 3

page 4

page 7

research
11/24/2017

MPIIGaze: Real-World Dataset and Deep Appearance-Based Gaze Estimation

Learning-based methods are believed to work well for unconstrained gaze ...
research
07/16/2015

Driver Gaze Region Estimation Without Using Eye Movement

Automated estimation of the allocation of a driver's visual attention ma...
research
07/04/2023

A Review of Driver Gaze Estimation and Application in Gaze Behavior Understanding

Driver gaze plays an important role in different gaze-based applications...
research
02/08/2018

Driver Gaze Zone Estimation using Convolutional Neural Networks: A General Framework and Ablative Analysis

Driver gaze has been shown to be an excellent surrogate for driver atten...
research
04/13/2020

Speak2Label: Using Domain Knowledge for Creating a Large Scale Driver Gaze Zone Estimation Dataset

Labelling of human behavior analysis data is a complex and time consumin...
research
11/26/2016

What Can Be Predicted from Six Seconds of Driver Glances?

We consider a large dataset of real-world, on-road driving from a 100-ca...
research
02/23/2016

Investigating Drivers' Head and Glance Correspondence

The relationship between a driver's glance pattern and corresponding hea...

Please sign up or login with your details

Forgot password? Click here to reset