Title
Toward Driver Face Recognition in the Intelligent Traffic Monitoring Systems
Abstract
This paper models the driver face recognition problem under the intelligent traffic monitoring systems as severe illumination variation face recognition with single sample problem. Firstly, in the point of view of numerical value sign, the current illumination invariant unit is derived from the subtraction of two pixels in the face local region, which may be positive or negative, we propose a generalized illumination robust (GIR) model based on positive and negative illumination invariant units to tackle severe illumination variations. Then, the GIR model can be used to generate several GIR images based on the local edge-region or the local block-region, which results in the edge-region based GIR (EGIR) image or the block-region based GIR (BGIR) image. For single GIR image based classification, the GIR image utilizes the saturation function and the nearest neighbor classifier, which can develop EGIR-face and BGIR-face. For multi GIR images based classification, the GIR images employ the extended sparse representation classification (ESRC) as the classifier that can form the EGIR image based classification (GIRC) and the BGIR image based classification (BGIRC). Further, the GIR model is integrated with the pre-trained deep learning (PDL) model to construct the GIR-PDL model. Finally, the performances of the proposed methods are verified on the Extended Yale B, CMU PIE, AR, self-built Driver and VGGFace2 face databases. The experimental results indicate that the proposed methods are efficient to tackle severe illumination variations.
Year
DOI
Venue
2020
10.1109/TITS.2019.2945923
IEEE Transactions on Intelligent Transportation Systems
Keywords
DocType
Volume
Traffic driver face recognition,severe illumination variations,generalized illumination robust model,single sample problem
Journal
21
Issue
ISSN
Citations 
12
1524-9050
0
PageRank 
References 
Authors
0.34
0
6
Name
Order
Citations
PageRank
Chang-Hui Hu111.76
Yang Zhang252.48
Fei Wu31247.11
Xiaobo Lu414125.71
Pan Liu5366.75
Xiao-Yuan Jing676955.18