快速序列视觉呈现范式中视觉知觉的神经关联

Yonghong Huang, K. Hild, M. Pavel, S. Mathan, Deniz Erdoğmuş
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引用次数: 2

摘要

与视觉感知过程相关的人脑信号已被用于图像识别。本文通过分析人类使用快速连续视觉呈现(RSVP)图像显示范式观看真实图像时产生的神经关联,对人类视觉感知的神经关联进行了一些深入的研究。我们提出了一个图像信息提取模型,并利用事件相关电位(ERP)特征研究了大脑诱发反应与人类检测目标的难度水平之间的关系,作为视觉刺激复杂性和任务难度的函数。我们开发了一个计算模型来量化受试者的表现和现实刺激的难度。研究结果表明:(1)难度越大的实验产生的ERP模式越不突出,从而降低了基于机器的ERP检测的性能;(2)在相同的行为表现水平下,从两个简单试验中提取的一对ERP的相似性大于从两个困难试验中提取的一对ERP的相似性;(3)刺激和任务难度均与神经活动相关。我们的研究结果表明,对于涉及视觉信息处理的动态任务,随着任务和/或刺激难度的增加,大脑可能会分配额外的认知资源,如注意力,给给定的视觉刺激。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural correlates of visual perception in rapid serial visual presentation paradigms
Human brain signals associated with visual perceptual processes have been used for image recognition. This paper presents several insights on the neural correlates of human visual perception by analyzing the neural correlates that result when humans view realistic images using a rapid serial visual presentation (RSVP) image display paradigm. We propose an image information extraction model and examine the relationship between the brain evoked response - using event related potential (ERP) characteristics - and the level of difficulty for humans to detect targets as a function of both visual stimulus complexity and task difficulty. We develop a computational model to quantify subject performance and the difficulty of realistic stimuli. Our results show that: (1) more difficult trials produce less prominent ERP patterns, thus reducing the performance of machine-based ERP detection; (2) on average for the same behavioral performance level, a pair of ERP's extracted from two easy trials are more similar than a pair of ERP's from two hard trials; and (3) both stimulus and task difficulty are correlated with neural activity. Our findings indicate that, for dynamic tasks involved in visual information processing, the brain may allocate additional cognitive resources, such as attention, to a given visual stimulus, as the task and/or stimulus difficulty increases.
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