Marshall Sandra P
San Diego State University, Department of Psychology & EyeTracking, Inc., San Diego, CA 92120, USA.
Aviat Space Environ Med. 2007 May;78(5 Suppl):B165-75.
This paper describes a new approach for identifying cognitive state by using information obtained only from the eye. Data are collected from cameras mounted on a lightweight headband. A set of eye metrics captures essential eye information from the raw data of pupil size and point-of-gaze. The metrics are easily calculated every second, so that the entire set of metrics can be computed in real time.
Three studies provide empirical evidence to test whether the eye metrics are sufficient to discriminate between two different cognitive states. The first study examines the states of relaxed and engaged in the context of problem solving. The second study looks at the states of focused and distracted attention in the context of driving. The third study inspects the states of alert and fatigued in the context of visual search. Two statistical models are used to classify cognitive state for all three studies: linear discriminant function analysis and non-linear neural network analysis. Data for the models are eye metrics computed at 1-, 4-, and 10-s intervals.
All discriminant function analyses are statistically significant, and classification rates are high. Neural network models have equal or better performance than discriminant function models across all three studies.
The seven eye metrics successfully discriminate between the states in all studies. Models from individual participants as well as the aggregate model over all participants are successful in identifying cognitive states based on task condition. Classification rates compare favorably with similar studies.
本文描述了一种仅通过利用从眼睛获取的信息来识别认知状态的新方法。数据从安装在轻便头带的摄像头收集。一组眼部指标从瞳孔大小和注视点的原始数据中捕捉关键的眼睛信息。这些指标每秒都很容易计算出来,这样整套指标就能实时计算。
三项研究提供了实证证据,以测试眼部指标是否足以区分两种不同的认知状态。第一项研究在解决问题的情境中考察放松和专注的状态。第二项研究在驾驶情境中观察注意力集中和分散的状态。第三项研究在视觉搜索情境中检查警觉和疲劳的状态。两项统计模型用于对所有三项研究的认知状态进行分类:线性判别函数分析和非线性神经网络分析。模型的数据是每隔1秒、4秒和10秒计算出的眼部指标。
所有判别函数分析都具有统计学意义,且分类准确率很高。在所有三项研究中,神经网络模型的表现与判别函数模型相当或更优。
七个眼部指标在所有研究中都成功区分了不同状态。来自个体参与者以及所有参与者的总体模型都成功地基于任务条件识别出认知状态。分类准确率与类似研究相比很可观。