In AI We Trust: Investigating the Relationship between Biosignals, Trust and Cognitive Load in VR

Kunal Gupta, Ryo Hajika, Yun Suen Pai, Andreas Duenser, Martin Lochner, M. Billinghurst
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引用次数: 30

Abstract

Human trust is a psycho-physiological state that is difficult to measure, yet is becoming increasingly important for the design of human-computer interactions. This paper explores if human trust can be measured using physiological measures when interacting with a computer interface, and how it correlates with cognitive load. In this work, we present a pilot study in Virtual Reality (VR) that uses a multi-sensory approach of Electroencephalography (EEG), galvanic skin response (GSR), and Heart Rate Variability (HRV) to measure trust with a virtual agent and explore the correlation between trust and cognitive load. The goal of this study is twofold; 1) to determine the relationship between biosignals, or physiological signals with trust and cognitive load, and 2) to introduce a pilot study in VR based on cognitive load level to evaluate trust. Even though we could not report any significant main effect or interaction of cognitive load and trust from the physiological signal, we found that in low cognitive load tasks, EEG alpha band power reflects trustworthiness on the agent. Moreover, cognitive load of the user decreases when the agent is accurate regardless of task’s cognitive load. This could be possible because of small sample size, tasks not stressful enough to induce high cognitive load due to lab study and comfortable environment or timestamp synchronisation error due to fusing data from various physiological sensors with different sample rate.
在AI我们信任:研究生物信号,信任和认知负荷在VR中的关系
人类信任是一种难以测量的心理生理状态,但在人机交互设计中却变得越来越重要。本文探讨了人类信任是否可以在与计算机界面交互时使用生理测量来测量,以及它如何与认知负荷相关。在这项工作中,我们提出了一项虚拟现实(VR)的试点研究,该研究使用脑电图(EEG)、皮肤电反应(GSR)和心率变异性(HRV)的多感官方法来测量虚拟代理的信任,并探索信任与认知负荷之间的相关性。这项研究的目的是双重的;1)确定生物信号或生理信号与信任和认知负荷之间的关系;2)引入基于认知负荷水平的虚拟现实信任评价试点研究。尽管我们无法从生理信号中发现认知负荷和信任之间存在显著的主效应或交互作用,但我们发现在低认知负荷任务中,脑电图α波段功率反映了被试对被试的信任程度。此外,无论任务的认知负荷如何,当代理准确时,用户的认知负荷都会降低。这是可能的,因为样本量小,由于实验室研究和舒适的环境,任务压力不足以引起高认知负荷,或者由于融合来自不同采样率的各种生理传感器的数据而产生时间时间同步误差。
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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