logo
banner

Journals & Publications

Publications Papers

Papers

A Joint Cascaded Framework for Simultaneous Eye Detection and Eye State Estimation
Jul 18, 2017Author:
PrintText Size A A

Title: A Joint Cascaded Framework for Simultaneous Eye Detection and Eye State Estimation

Authors: Gou, C; Wu, Y; Wang, K; Wang, KF; Wang, FY; Ji, Q  

Author Full Names: Gou, Chao; Wu, Yue; Wang, Kang; Wang, Kunfeng; Wang, Fei-Yue; Ji, Qiang  

Source: PATTERN RECOGNITION, 67 23-31; 10.1016/j.patcog.2017.01.023 JUL 2017  

Language: English  

Abstract: Eye detection and eye state (close/open) estimation are important for a wide range of applications, including iris recognition, visual interaction and driver fatigue detection. Current work typically performs eye detection first, followed by eye state estimation by a separate classifier. Such an approach fails to capture the interactions between eye location and its state. In this paper, we propose a method for simultaneous eye detection and eye state estimation. Based on a cascade regression framework, our method iteratively estimates the location of the eye and the probability of the eye being occluded by eyelid. At each iteration of cascaded regression, image features from the eye center as well as contextual image features from eyelid and eye corners are jointly used to estimate the eye position and openness probability. Using the eye openness probability, the most likely eye state can be estimated. Since it requires large number of facial images with labeled eye related landmarks, we propose to combine the real and synthetic images for training. It further improves the performance by utilizing this learning-by-synthesis method. Evaluations of our method on benchmark databases such as BioID and Gi4E database as well as on real world driving videos demonstrate its superior performance comparing to state-of-the-art methods for both eye detection and eye state estimation. (C) 2017 Elsevier Ltd. All rights reserved.  

ISSN: 0031-3203  

eISSN: 1873-5142  

IDS Number: ES4QV  

Unique ID: WOS:000399520700003

*Click Here to View Full Record