用眼动追踪预测大学生压力水平

Murugesh Sujan, Pradeesha L. S. Jayasinghe
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引用次数: 0

摘要

压力是一种情绪或身体紧张的感觉,这在大学生中产生了严重的影响。目前还缺乏压力预测技术来检测大学生们时不时的压力水平。本研究利用眼动追踪技术对大学生压力水平进行预测。本研究采用问卷调查和第三方眼动仪应用程序,收集了汝华大学本科生的306组PSS-10数据和30600张眼动追踪数据(图像)。采用PSS-10(感知压力量表-10)和CNN(卷积神经网络)预测大学生的压力水平。压力水平由PSS-10分析确定,并分为三类:高、中、低。在数据预处理阶段,眼动数据与压力等级存在相关性。将眼动追踪图像作为输入,定义眼动追踪分类模型;该模型预测给定的大学生眼动追踪数据的压力水平。结果显示,19.7%的大学生处于非常高水平压力,71.8%的大学生处于中等水平压力,8.5%的大学生处于低水平压力。然而,可以肯定的是,大多数大学生都承受着中等程度的压力。这项研究将有助于更准确地预测大学生的压力水平,并帮助大学生管理他们在学术生活中的压力水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Undergraduates Stress Level Using Eye Tracking
Stress is a feeling of emotional or physical tension, this makes a serious influence among undergraduates. There is a lack of stress prediction techniques that can detect what sort of stress level undergraduates are having from time to time. This research explored the prediction of undergraduate stress levels using eye-tracking. In this study, 306 PSS-10 data sets and 30600 eye-tracking data (Images) were collected from undergraduates at the University of Ruhuna using a questionnaire and a third-party eye-tracker application. PSS-10 (Perceived Stress Scale −10) and CNN (Convolutional Neural Network) was used to predict undergraduate stress levels. Stress levels are determined by the PSS-10 analysis, and divided into three classes: High, Moderate, and Low. Eye tracking data and stress classes are correlated in data pre-processing phase. The eye tracking images takes as input for well define eye tracking classification model; the model predict the stress level of the given undergraduate eye tracking data. According to the results, it was concluded that 19.7% of the undergraduates were in very high level of stress, 71.8% were in moderate level of stress and 8.5% were in low level of stress. However, it is certain that most of the undergraduates suffer from moderate levels of stress. The research will help predict undergraduate stress levels more accurately, and aid undergraduates managing their stress levels in academic life.
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