通过协同脑机接口改进基于视觉感知的决策

R. Poli, C. Cinel, F. Sepulveda, A. Stoica
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引用次数: 22

摘要

在复杂的刺激存在的情况下,在没有足够的时间来完成对场景的视觉分析的情况下,或者当注意力被分散时,观察者只能看到场景特征的一个子集,这可能会导致糟糕的决策。在本文中,我们着眼于整合来自多个非通信观察者的感知的可能性,作为实现更好的联合感知和更好的决策的手段。我们的方法涉及脑机接口(BCI)技术与人类行为反应的结合。为了在受控条件下测试我们的想法,我们要求观察者执行一个简单的视觉匹配任务,包括快速顺序地呈现成对的视觉模式,然后判断一对中的两个模式是相同的还是不同的。视觉刺激呈现的时间不够,观察者无法确定自己的决定。任务的难度还取决于两种模式之间匹配特征的数量。数字越高,任务越困难。我们记录了观察者的反应时间,以及预测错误决策的神经特征,因此,间接表明了观察者做出决策的信心。然后,我们建立了一个复合神经行为特征,将这些行为和神经测量最佳地结合在一起。对于群体决策,我们测试了多数决定原则和三个进一步的决策规则的使用,这些规则基于响应时间和我们的神经和神经行为特征来权衡每个观察者的决定。结果表明,与个体表现相比,行为反应和神经特征的整合可以显著提高准确率。此外,在每个大小的组中,基于这些特征的决策规则优于多数规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving decision-making based on visual perception via a collaborative brain-computer interface
In the presence of complex stimuli, in the absence of sufficient time to complete the visual parsing of a scene, or when attention is divided, an observer can only take in a subset of the features of a scene, potentially leading to poor decisions. In this paper we look at the possibility of integrating the percepts from multiple non-communicating observers as a means of achieving better joint perception and better decision making. Our approach involves the combination of brain-computer interface (BCI) technology with human behavioural responses. To test our ideas in controlled conditions, we asked observers to perform a simple visual matching task involving the rapid sequential presentation of pairs of visual patterns and the subsequent decision as whether the two patterns in a pair were the same or different. Visual stimuli were presented for insufficient time for the observers to be certain of the decision. The degree of difficulty of the task also depended on the number of matching features between the two patterns. The higher the number, the more difficult the task. We recorded the response times of observers as well as a neural feature which predicts incorrect decisions and, thus, indirectly indicates the confidence of the decisions made by the observers. We then built a composite neuro-behavioural feature which optimally combines these behavioural and neural measures. For group decisions, we tested the use of a majority rule and three further decision rules which weigh the decisions of each observer based on response times and our neural and neuro-behavioural features. Results indicate that the integration of behavioural responses and neural features can significantly improve accuracy when compared with individual performance. Also, within groups of each size, decision rules based on such features outperform the majority rnle.
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