School of Geographic Sciences, Hunan Normal University, Changsha 410081, China.
Hunan Key Laboratory of Geospatial Big Data Mining and Application, Hunan Normal University, Changsha 410081, China.
Sensors (Basel). 2022 Apr 12;22(8):2949. doi: 10.3390/s22082949.
Eye movement biometrics can enable continuous verification for highly secure environments such as financial transactions and defense establishments, as well as a more personalized and tailored experience in gaze-based human-computer interactions. However, there are numerous challenges to recognizing people in real environments using eye movements, such as implicity and stimulus independence. In the instance of wayfinding, this research intends to investigate implicit and stimulus-independent eye movement biometrics in real-world situations. We collected 39 subjects' eye movement data from real-world wayfinding experiments and derived five sets of eye movement features (the basic statistical, pupillary response, fixation density, fixation semantic and saccade encoding features). We adopted a random forest and performed biometric recognition for both identification and verification scenarios. The best accuracy we obtained in the identification scenario was 78% (equal error rate, EER = 6.3%) with the 10-fold classification and 64% (EER = 12.1%) with the leave-one-route-out classification. The best accuracy we achieved in the verification scenario was 89% (EER = 9.1%). Additionally, we tested performance across the 5 feature sets and 20 time window sizes. The results showed that the verification accuracy was insensitive to the increase in the time window size. These findings are the first indication of the viability of performing implicit and stimulus-independent biometric recognition in real-world settings using wearable eye tracking.
眼动生物识别技术可以为金融交易和国防机构等高度安全的环境提供连续验证,以及在基于注视的人机交互中提供更个性化和定制化的体验。然而,使用眼动识别真实环境中的人存在许多挑战,例如隐含性和刺激独立性。在寻路的情况下,本研究旨在调查真实环境中隐含和刺激独立的眼动生物识别技术。我们从真实世界的寻路实验中收集了 39 位被试者的眼动数据,并提取了五组眼动特征(基本统计、瞳孔反应、注视密度、注视语义和扫视编码特征)。我们采用随机森林,针对识别和验证场景进行了生物识别识别。在识别场景中,我们获得的最佳准确率为 78%(等错误率,EER=6.3%),10 折分类,64%(EER=12.1%),路线外留一分类。在验证场景中,我们获得的最佳准确率为 89%(EER=9.1%)。此外,我们还测试了 5 个特征集和 20 个时间窗口大小的性能。结果表明,验证准确率对时间窗口大小的增加不敏感。这些发现首次表明,使用可穿戴眼动追踪器在真实环境中进行隐含和刺激独立的生物识别识别是可行的。