Lu Alan Z, Upadhyayula Aditya, Henderson John M
Center for Mind and Brain, University of California, Davis.
Department of Psychology, University of California, Davis.
Vis cogn. 2025 Feb;33(2):89-104. doi: 10.1080/13506285.2025.2507946. Epub 2025 May 25.
To detect changes in our visual environments, the visual system compares pre-and post-change representations maintained in active working memory. Previous research has suggested that change detection is primarily informed by high-level semantics in naturalistic scenes. Here, across two experiments, we used meaning maps - a data driven method to measure the visual semantic information in naturalistic scenes - to investigate whether semantic features predicted visual change detection in a flicker paradigm. Experiment 1 showed that changes in highly meaningful regions were more easily detected than changes in non-meaningful regions despite controlling for low-level visual saliency. Experiment 2 found that the meaning-driven advantage was significantly reduced by scene inversion, further supporting the role of semantics in change detection. Together, these results demonstrate that the visual system relies on semantic features during change detection.
为了检测我们视觉环境中的变化,视觉系统会比较主动工作记忆中保持的变化前后的表征。先前的研究表明,变化检测主要由自然场景中的高级语义信息决定。在这里,通过两个实验,我们使用了意义地图——一种数据驱动的方法来测量自然场景中的视觉语义信息——来研究语义特征是否能预测闪烁范式中的视觉变化检测。实验1表明,尽管控制了低级视觉显著性,但高意义区域的变化比无意义区域的变化更容易被检测到。实验2发现,场景反转显著降低了意义驱动的优势,进一步支持了语义在变化检测中的作用。总之,这些结果表明视觉系统在变化检测过程中依赖于语义特征。