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Spatial statistics and attentional dynamics in scene viewing

机译:场景观看中的空间统计和注意力动态

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In humans and in foveated animals visual acuity is highly concentrated at the center of gaze, so that choosing where to look next is an important example of online, rapid decision-making. Computational neuroscientists have developed biologically-inspired models of visual attention, termed saliency maps, which successfully predict where people fixate on average. Using point process theory for spatial statistics, we show that scanpaths contain, however, important statistical structure, such as spatial clustering on top of distributions of gaze positions. Here, we develop a dynamical model of saccadic selection that accurately predicts the distribution of gaze positions as well as spatial clustering along individual scanpaths. Our model relies on activation dynamics via spatially-limited (foveated) access to saliency information, and, second, a leaky memory process controlling the re-inspection of target regions. This theoretical framework models a form of context-dependent decision-making, linking neural dynamics of attention to behavioral gaze data.
机译:在人类和有爱的动物中,视敏度高度集中在凝视的中心,因此选择下一个看点是在线快速决策的重要示例。计算神经科学家已经开发出生物启发的视觉注意力模型,称为显着性图,可以成功预测人们平均注视的位置。使用点过程理论进行空间统计,我们显示出扫描路径包含重要的统计结构,例如凝视位置分布顶部的空间聚类。在这里,我们开发了一个自动选择的动力学模型,可以准确地预测凝视位置的分布以及沿各个扫描路径的空间聚类。我们的模型依赖于通过对显着性信息进行空间限制(偏爱)访问的激活动力学,其次,是控制目标区域重新检查的泄漏存储过程。这个理论框架模拟了一种形式的上下文相关决策,将注意力的神经动力学与行为注视数据联系起来。

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