论文标题

在人机合作中权衡危险识别的选票:推断危险感知阈值和脑电图范围的决策信心

Weighing votes in human-machine collaboration for hazard recognition: Inferring hazard perceptual threshold and decision confidence from electroencephalogram wavelets

论文作者

Zhou, Xiaoshan, Liao, Pin-Chao

论文摘要

目的:人机合作是改善危险检查的有前途的策略。但是,缺乏对人类意见与机器的有效整合以进行最佳群体决策的研究。因此,考虑到脑部计算机界面(BCI)的好处以实现直观的换向,本研究提出了一种新的方法,以预测人类危害反应选择和大脑活动中的决策信心,以获得卓越的信心加权投票策略。方法论:首先,我们开发了一种基于贝叶斯推理的算法,以确定在人脑信号中报告危险的决策阈值。通过在实验室环境中收集的脑电图(EEG)数据进行经验测试,并使用信号检测理论的行为指标进行了交叉验证。随后,基于数值模拟,确定了以壁α波段eeg功率为特征的低,中,中等和高信心水平的决策标准。调查结果:研究的危害识别任务被描述为涉及决策不确定性评估的概率推理的过程。结果表明,脑电图测量在观察危险歧视的人体内部表示方面的可行性。此外,通过对最佳贝叶斯观察者进行基准测试,获得了区分低,中和高信心水平的最佳标准。独创性:这项研究证明了BCI作为电信的有效渠道的潜力,为在协作人机系统研究领域设计未来危害检测技术的设计奠定了基础。

Purpose: Human-machine collaboration is a promising strategy to improve hazard inspection. However, research on the effective integration of opinions from humans with machines for optimal group decision making is lacking. Hence, considering the benefits of a brain-computer interface (BCI) to enable intuitive commutation, this study proposes a novel method to predict human hazard response choices and decision confidence from brain activities for a superior confidence-weighted voting strategy. Methodology: First, we developed a Bayesian inference-based algorithm to ascertain the decision threshold above which a hazard is reported from human brain signals. This method was tested empirically with electroencephalogram (EEG) data collected in a laboratory setting and cross-validated using behavioral indices of the signal detection theory. Subsequently, based on numerical simulations, the decision criteria for low-, medium-, and high-confidence level differentiations characterized by parietal alpha-band EEG power were determined. Findings : The investigated hazard recognition task was described as a process of probabilistic inference involving a decision uncertainty evaluation. The results demonstrated the feasibility of EEG measurements in observing human internal representations of hazard discrimination. Moreover, the optimal criteria to differentiate between low-, medium-, and high-confidence levels were obtained by benchmarking against an optimal Bayesian observer. Originality: This research demonstrates the potential of a BCI as an effective channel for telecommunication, laying the foundation for the design of future hazard detection techniques in the collaborative human-machine systems research field.

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