Measuring attentional selection of object categories using hierarchical frequency tagging.

IF 2 4区 心理学 Q2 OPHTHALMOLOGY Journal of Vision Pub Date : 2024-07-02 DOI:10.1167/jov.24.7.8
Florian Gagsch, Christian Valuch, Thorsten Albrecht
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Abstract

In the present study, we used Hierarchical Frequency Tagging (Gordon et al., 2017) to investigate in electroencephalography how different levels of the neural processing hierarchy interact with category-selective attention during visual object recognition. We constructed stimulus sequences of cyclic wavelet scrambled face and house stimuli at two different frequencies (f1 = 0.8 Hz and f2 = 1 Hz). For each trial, two stimulus sequences of different frequencies were superimposed and additionally augmented by a sinusoidal contrast modulation with f3 = 12.5 Hz. This allowed us to simultaneously assess higher level processing using semantic wavelet-induced frequency-tagging (SWIFT) and processing in earlier visual levels using steady-state visually evoked potentials (SSVEPs), along with their intermodulation (IM) components. To investigate the category specificity of the SWIFT signal, we manipulated the category congruence between target and distractor by superimposing two sequences containing stimuli from the same or different object categories. Participants attended to one stimulus (target) and ignored the other (distractor). Our results showed successful tagging of different levels of the cortical hierarchy. Using linear mixed-effects modeling, we detected different attentional modulation effects on lower versus higher processing levels. SWIFT and IM components were substantially increased for target versus distractor stimuli, reflecting attentional selection of the target stimuli. In addition, distractor stimuli from the same category as targets elicited stronger SWIFT signals than distractor stimuli from a different category indicating category-selective attention. In contrast, for IM components, this category-selective attention effect was largely absent, indicating that IM components probably reflect more stimulus-specific processing.

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利用分层频率标记法测量物体类别的注意选择。
在本研究中,我们使用了分层频率标记(Hierarchical Frequency Tagging)技术(Gordon 等人,2017 年),通过脑电图研究在视觉对象识别过程中,神经处理层级的不同层次如何与类别选择性注意相互作用。我们构建了两种不同频率(f1 = 0.8 Hz 和 f2 = 1 Hz)的循环小波扰乱人脸和房屋刺激序列。在每次试验中,两个不同频率的刺激序列被叠加在一起,并通过 f3 = 12.5 Hz 的正弦对比度调制进行增强。这样,我们就能利用语义小波诱导频率标记(SWIFT)同时评估较高层次的处理过程,并利用稳态视觉诱发电位(SSVEPs)及其互调(IM)成分同时评估早期视觉层次的处理过程。为了研究 SWIFT 信号的类别特异性,我们通过叠加两个包含相同或不同物体类别刺激的序列,来操纵目标和干扰物之间的类别一致性。被试只注意一个刺激物(目标物),而忽略另一个刺激物(干扰物)。我们的研究结果表明,我们成功地标记了大脑皮层的不同层次。通过线性混合效应建模,我们检测到低层次和高层次的注意调节效果不同。目标刺激与分心刺激相比,SWIFT 和 IM 成分显著增加,这反映了对目标刺激的注意选择。此外,与目标相同类别的分心刺激比不同类别的分心刺激引起的 SWIFT 信号更强,这表明了对类别的选择性注意。相比之下,对于 IM 成分,这种类别选择注意效应基本不存在,这表明 IM 成分可能反映了更多的刺激特异性加工。
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来源期刊
Journal of Vision
Journal of Vision 医学-眼科学
CiteScore
2.90
自引率
5.60%
发文量
218
审稿时长
3-6 weeks
期刊介绍: Exploring all aspects of biological visual function, including spatial vision, perception, low vision, color vision and more, spanning the fields of neuroscience, psychology and psychophysics.
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