Exploiting biometric measurements for prediction of emotional state: A preliminary study for healthcare applications using keystroke analysis

M. Fairhurst, Cheng Li, Meryem Erbilek
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引用次数: 12

Abstract

Biometric measurements are now often routinely adopted as a robust means of determining individual identity. Such an approach is clearly beneficial in a variety of scenarios, including those relating to medical environments. In the medical context, however, the use of biometric data can potentially offer other valuable opportunities for harnessing the power of biometrics which have a more direct bearing on healthcare monitoring and treatment delivery. In this paper we focus on the prediction of “soft” biometric data and, in particular, we describe an approach which aims to predict “higher level” characteristics about an individual, such as those which may broadly be described as emotional or mental state. We show how such a capability can be utilised in healthcare scenarios, and specifically, by presenting some initial analysis of results from newly acquired data in a keystroke-based data collection task, we identify the most crucial issues which must be addressed if our basic predictive technique is to be developed for practical viability.
利用生物测量来预测情绪状态:使用击键分析的医疗保健应用的初步研究
生物特征测量现在经常被常规采用,作为确定个人身份的有力手段。这种方法显然在各种情况下都是有益的,包括那些与医疗环境有关的情况。然而,在医学领域,生物识别数据的使用可能为利用生物识别技术的力量提供其他有价值的机会,这对医疗保健监测和治疗提供有更直接的影响。在本文中,我们专注于“软”生物特征数据的预测,特别是,我们描述了一种旨在预测个体“更高层次”特征的方法,例如那些可能被广泛描述为情绪或精神状态的特征。我们展示了如何在医疗保健场景中使用这种功能,特别是,通过对基于击键的数据收集任务中新获取的数据的结果进行一些初步分析,我们确定了如果要开发基本预测技术以实现实际可行性,必须解决的最关键问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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