Inattention and Uncertainty in the Predictive Brain

T. Kujala, O. Lappi
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引用次数: 5

Abstract

Negative effects of inattention on task performance can be seen in many contexts of society and human behavior, such as traffic, work, and sports. In traffic, inattention is one of the most frequently cited causal factors in accidents. In order to identify inattention and mitigate its negative effects, there is a need for quantifying attentional demands of dynamic tasks, with a credible basis in cognitive modeling and neuroscience. Recent developments in cognitive science have led to theories of cognition suggesting that brains are an advanced prediction engine. The function of this prediction engine is to support perception and action by continuously matching incoming sensory input with top-down predictions of the input, generated by hierarchical models of the statistical regularities and causal relationships in the world. Based on the capacity of this predictive processing framework to explain various mental phenomena and neural data, we suggest it also provides a plausible theoretical and neural basis for modeling attentional demand and attentional capacity “in the wild” in terms of uncertainty and prediction error. We outline a predictive processing approach to the study of attentional demand and inattention in driving, based on neurologically-inspired theories of uncertainty processing and experimental research combining brain imaging, visual occlusion and computational modeling. A proper understanding of uncertainty processing would enable comparison of driver's uncertainty to a normative level of appropriate uncertainty, and thereby improve definition and detection of inattentive driving. This is the necessary first step toward applications such as attention monitoring systems for conventional and semi-automated driving.
预测性大脑中的注意力不集中和不确定性
注意力不集中对任务表现的负面影响可以在社会和人类行为的许多环境中看到,比如交通、工作和运动。在交通事故中,注意力不集中是最常被提及的导致事故的原因之一。为了识别注意力不集中并减轻其负面影响,需要在认知建模和神经科学的可靠基础上对动态任务的注意力需求进行量化。认知科学的最新发展导致认知理论表明,大脑是一个先进的预测引擎。这个预测引擎的功能是通过不断匹配传入的感官输入和自上而下的输入预测来支持感知和行动,这些预测是由世界上的统计规律和因果关系的分层模型生成的。基于该预测处理框架解释各种心理现象和神经数据的能力,我们认为它也为在不确定性和预测误差方面建立“野外”注意需求和注意容量模型提供了合理的理论和神经基础。基于神经学启发的不确定性处理理论和脑成像、视觉遮挡和计算建模相结合的实验研究,我们概述了一种预测处理方法来研究驾驶中的注意需求和注意力不集中。对不确定性处理的正确理解将使驾驶员的不确定性与规范水平的适当不确定性进行比较,从而提高对不注意驾驶的定义和检测。这是向传统和半自动驾驶的注意力监控系统等应用迈出的必要的第一步。
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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