Biometric recognition via texture features of eye movement trajectories in a visual searching task.

Biometric recognition technology based on eye-movement dynamics has been in development for more than ten years. Different visual tasks, feature extraction and feature recognition methods are proposed to improve the performance of eye movement biometric system. However, the correct identification an...

Full description

Bibliographic Details
Main Authors: Chunyong Li, Jiguo Xue, Cheng Quan, Jingwei Yue, Chenggang Zhang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5884501?pdf=render
id doaj-85a818074638405d95ca8ea57bb66f87
record_format Article
spelling doaj-85a818074638405d95ca8ea57bb66f872020-11-25T00:13:20ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01134e019447510.1371/journal.pone.0194475Biometric recognition via texture features of eye movement trajectories in a visual searching task.Chunyong LiJiguo XueCheng QuanJingwei YueChenggang ZhangBiometric recognition technology based on eye-movement dynamics has been in development for more than ten years. Different visual tasks, feature extraction and feature recognition methods are proposed to improve the performance of eye movement biometric system. However, the correct identification and verification rates, especially in long-term experiments, as well as the effects of visual tasks and eye trackers' temporal and spatial resolution are still the foremost considerations in eye movement biometrics. With a focus on these issues, we proposed a new visual searching task for eye movement data collection and a new class of eye movement features for biometric recognition. In order to demonstrate the improvement of this visual searching task being used in eye movement biometrics, three other eye movement feature extraction methods were also tested on our eye movement datasets. Compared with the original results, all three methods yielded better results as expected. In addition, the biometric performance of these four feature extraction methods was also compared using the equal error rate (EER) and Rank-1 identification rate (Rank-1 IR), and the texture features introduced in this paper were ultimately shown to offer some advantages with regard to long-term stability and robustness over time and spatial precision. Finally, the results of different combinations of these methods with a score-level fusion method indicated that multi-biometric methods perform better in most cases.http://europepmc.org/articles/PMC5884501?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Chunyong Li
Jiguo Xue
Cheng Quan
Jingwei Yue
Chenggang Zhang
spellingShingle Chunyong Li
Jiguo Xue
Cheng Quan
Jingwei Yue
Chenggang Zhang
Biometric recognition via texture features of eye movement trajectories in a visual searching task.
PLoS ONE
author_facet Chunyong Li
Jiguo Xue
Cheng Quan
Jingwei Yue
Chenggang Zhang
author_sort Chunyong Li
title Biometric recognition via texture features of eye movement trajectories in a visual searching task.
title_short Biometric recognition via texture features of eye movement trajectories in a visual searching task.
title_full Biometric recognition via texture features of eye movement trajectories in a visual searching task.
title_fullStr Biometric recognition via texture features of eye movement trajectories in a visual searching task.
title_full_unstemmed Biometric recognition via texture features of eye movement trajectories in a visual searching task.
title_sort biometric recognition via texture features of eye movement trajectories in a visual searching task.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description Biometric recognition technology based on eye-movement dynamics has been in development for more than ten years. Different visual tasks, feature extraction and feature recognition methods are proposed to improve the performance of eye movement biometric system. However, the correct identification and verification rates, especially in long-term experiments, as well as the effects of visual tasks and eye trackers' temporal and spatial resolution are still the foremost considerations in eye movement biometrics. With a focus on these issues, we proposed a new visual searching task for eye movement data collection and a new class of eye movement features for biometric recognition. In order to demonstrate the improvement of this visual searching task being used in eye movement biometrics, three other eye movement feature extraction methods were also tested on our eye movement datasets. Compared with the original results, all three methods yielded better results as expected. In addition, the biometric performance of these four feature extraction methods was also compared using the equal error rate (EER) and Rank-1 identification rate (Rank-1 IR), and the texture features introduced in this paper were ultimately shown to offer some advantages with regard to long-term stability and robustness over time and spatial precision. Finally, the results of different combinations of these methods with a score-level fusion method indicated that multi-biometric methods perform better in most cases.
url http://europepmc.org/articles/PMC5884501?pdf=render
work_keys_str_mv AT chunyongli biometricrecognitionviatexturefeaturesofeyemovementtrajectoriesinavisualsearchingtask
AT jiguoxue biometricrecognitionviatexturefeaturesofeyemovementtrajectoriesinavisualsearchingtask
AT chengquan biometricrecognitionviatexturefeaturesofeyemovementtrajectoriesinavisualsearchingtask
AT jingweiyue biometricrecognitionviatexturefeaturesofeyemovementtrajectoriesinavisualsearchingtask
AT chenggangzhang biometricrecognitionviatexturefeaturesofeyemovementtrajectoriesinavisualsearchingtask
_version_ 1725394870353264640