集成圆柱形电容传感器的智能眼动仪用于慢性疲劳评估

Tianyi Li, Seo-Hyun Park, Changwoo Lee, Shawn Kim, Younghoon Kwon, Hojun Kim, Jae-Hyun Chung
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引用次数: 0

摘要

疲劳对健康、安全和生产力有负面影响,但目前的监测方法往往是主观的、劳动密集型的、不准确的。为了解决这些挑战,本研究提出了一种基于电容传感器的眼动仪(ET),利用圆柱形碳纳米管-纸复合材料(CCPC)传感器进行慢性疲劳(CF)评估。CCPC传感器采用新型湿式断裂和卷纸方法制造,具有优异的接近灵敏度和较小的外形。这些1D传感器可以无缝集成到眼镜架中,用于非接触式监测眨眼频率和闭眼情况。15分钟的测试方案,结合认知任务和噪音暴露,旨在诱导急性疲劳并识别CF。通过分析数字标记物与既定疲劳指标的变化,CF在机器学习模型的帮助下进行评估,以评估准确性、灵敏度和特异性。这种实时、可穿戴的监测平台提供了一种客观、轻松、非接触的疲劳评估方法。随着进一步的测试和优化,它有可能对急性疲劳或疲劳相关疾病(如肌痛性脑脊髓炎/慢性疲劳综合征(ME/CFS))进行用户友好的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Intelligent Eye Tracker Integrated with Cylindrical Capacitive Sensors for Chronic Fatigue Assessment

Intelligent Eye Tracker Integrated with Cylindrical Capacitive Sensors for Chronic Fatigue Assessment

Fatigue negatively impacts health, safety, and productivity, yet current monitoring methods are often subjective, labor-intensive, and inaccurate. To address these challenges, this study presents a capacitive sensor-based eye tracker (ET) leveraging cylindrical carbon nanotube-paper composite (CCPC) sensors for chronic fatigue (CF) assessment. Fabricated by novel wet-fracture and paper-rolling methods, CCPC sensors demonstrate superior proximity sensitivity with a small form factor. These 1D sensors are seamlessly integrated into an eyeglass frame for noncontact monitoring of blink rates and eye closures. Fifteen-minute testing protocol, combining cognitive tasks and noise exposure, is designed to induce acute fatigue and identify CF. By analyzing changes in the digital markers against established fatigue indicators, CF is assessed with the aid of machine learning models for the evaluation of accuracy, sensitivity, and specificity. This real-time, wearable monitoring platform provides an objective, effortless, and noncontact approach to fatigue assessment. With further testing and optimization, it holds the potential for user-friendly evaluation of acute fatigue or fatigue-associated diseases, such as myalgic encephalomyelitis/chronic fatigue syndrome (ME/CFS).

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