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.
翻译:人类机器合作是改进危险检查的一个很有希望的战略。然而,关于有效整合人类意见和最佳群体决策机器的研究缺乏。因此,考虑到大脑-计算机界面的好处,以便进行直觉减刑,本研究报告提出了一种新的方法,用于预测人类危害反应选择和大脑活动对决定的信心,以便采取更优信任加权投票战略。方法:首先,我们开发了一种基于巴耶斯推断的算法,以确定决定阈值,根据人脑信号信号信号信号信号检测信号,在实验室环境中收集电子脑图(EEEEG)数据,并使用行为指数进行交叉验证。随后,根据数字模拟,确定了低、中、高信任水平的判断标准,以帕里塔阿尔法-带EEEG力量为特征。结果:调查的危险识别任务被描述为一种概率性推论过程,其中涉及对决定不确定性的评估。该方法的结果表明,EEEG测量在观察人类内部危险风险检测方面的可行性很低,并且使用信号检测理论进行交叉校验。随后,根据数字模拟,确定了低、中、中度研究基础对风险检测的可能性进行了初步评估。