School of Biological and Behavioural Sciences, Queen Mary University of London, London, UK.
Univ Lyon, CNRS, INSA Lyon, UCBL, LIRIS, UMR5205, F-69621 Lyon, France.
J Vis. 2023 Sep 1;23(10):10. doi: 10.1167/jov.23.10.10.
Human visual experience usually provides ample opportunity to accumulate knowledge about events unfolding in the environment. In typical scene perception experiments, however, participants view images that are unrelated to each other and, therefore, they cannot accumulate knowledge relevant to the upcoming visual input. Consequently, the influence of such knowledge on how this input is processed remains underexplored. Here, we investigated this influence in the context of gaze control. We used sequences of static film frames arranged in a way that allowed us to compare eye movements to identical frames between two groups: a group that accumulated prior knowledge relevant to the situations depicted in these frames and a group that did not. We used a machine learning approach based on hidden Markov models fitted to individual scanpaths to demonstrate that the gaze patterns from the two groups differed systematically and, thereby, showed that recently accumulated prior knowledge contributes to gaze control. Next, we leveraged the interpretability of hidden Markov models to characterize these differences. Additionally, we report two unexpected and interesting caveats of our approach. Overall, our results highlight the importance of recently acquired prior knowledge for oculomotor control and the potential of hidden Markov models as a tool for investigating it.
人类的视觉体验通常为积累关于环境中展开的事件的知识提供了充足的机会。然而,在典型的场景感知实验中,参与者观看的图像彼此不相关,因此他们无法积累与即将到来的视觉输入相关的知识。因此,这种知识对输入处理方式的影响仍未得到充分探索。在这里,我们在注视控制的背景下研究了这种影响。我们使用以一种方式排列的静态电影帧序列,使我们能够将眼球运动与两组之间的相同帧进行比较:一组积累了与这些帧中描绘的情况相关的先验知识,另一组则没有。我们使用基于隐马尔可夫模型的机器学习方法对个体扫描路径进行拟合,以证明这两组的注视模式存在系统差异,从而表明最近积累的先验知识有助于注视控制。接下来,我们利用隐马尔可夫模型的可解释性来描述这些差异。此外,我们还报告了我们方法的两个意外且有趣的注意事项。总的来说,我们的结果强调了最近获得的先验知识对眼动控制的重要性,以及隐马尔可夫模型作为一种研究工具的潜力。