首页> 外文期刊>IEEE Transactions on Cognitive and Developmental Systems >A Comparison of Methods for Mitigating Within-Task Luminance Change for Eyewear-Based Cognitive Load Measurement
【24h】

A Comparison of Methods for Mitigating Within-Task Luminance Change for Eyewear-Based Cognitive Load Measurement

机译:基于眼镜的认知负载测量的任务亮度变化方法的比较

获取原文
获取原文并翻译 | 示例
           

摘要

Eye activity-based within-task cognitive load measurement (CLM) is currently not feasible in everyday situations. One important issue to be addressed to move such CLM beyond controlled laboratory environments is determining practical methods for mitigating the pupillary light reflex (PLR) effect in CLM. In this paper, four approaches to dealing with the PLR effect within a modified verbal digit span task are investigated: ignore the PLR, exclude PLR data, compensate for PLR and use PLR features for measurement. During experimental work, cognitive load and the PLR were induced with a modified verbal digit span task and changes in brightness of a large monitor, respectively. The "exclude PLR," "compensate for PLR," and "use PLR features" methods were found to improve classification performance by up to 18.5% relative to the "ignore PLR" method, which yielded the worst classification accuracy of 58% using an average pupil diameter feature. Features derived from the transient properties of the PLR response associated with cognitive load were found to yield the superior classification accuracy of 70%, which is an improvement compared with previously published approaches which treated the PLR responses as interference. The findings from this paper suggest that the PLR cannot be easily ignored or normalized, and clearly demonstrate the importance of PLR-aware feature extraction for the design of future eyewear-based always-on CLM in conditions that are more realistic than a darkened, controlled laboratory.
机译:基于目前在日常情况下,目前在任务内的任务内的任务内部认知负荷测量(CLM)目前不可行。要解决的一个重要问题,以超越受控实验室环境,正在确定用于减轻CLM中瞳孔光反射(PLR)效应的实用方法。在本文中,调查了在修改的口头数字跨度任务中处理PLR效果的四种方法:忽略PLR,排除PLR数据,请补偿PLR并使用PLR功能进行测量。在实验工作期间,通过修改的言语数字跨度任务诱导认知载荷和PLR分别诱导了大型监视器的亮度变化。发现“排除PLR”,“补偿PLR”和“使用PLR功能”方法,相对于“忽略PLR”方法,将分类性能提高至18.5%,其使用了58%的最差分类准确度平均瞳孔直径特征。发现源自与认知载荷相关的PLR响应的瞬态特性的特征,从而产生70%的卓越分类精度,与先前公布的方法相比,将PLR响应作为干扰的接近相比,这是一种改进。本文的调查结果表明,PLR不能轻易忽视或标准化,并清楚地证明了PLR感知功能提取在比变暗的,控制的条件下的基于眼镜的总是对CLM的设计的重要性。实验室。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号